Nowadays, it is well-understood that the burning of fossil fuels in electric power station has
a significant influence on the global climate due to greenhouse gases. In many countries,
the use of cost-effective and reliable low-carbon electricity energy sources is becoming an
important energy policy. Among different kinds of clean energy resources- such as solar
power, hydro-power, ocean wave power and so on, wind power is the fastest-growing form
of renewable energy at the present time.
Moreover, adjustable speed generator wind turbines (ASGWT) has key advantages over
the fixed-speed generator wind turbines (FSGWT) in terms of less mechanical stress, improved
power quality, high system efficiency, and reduced acoustic noise. One important
class of ASGWT is the doubly-fed induction generator (DFIG), which has gained a significant
attention of the electric power industry due to their advantages over the other class
of ASGWT, i.e. fully rated converter-based wind turbines. Because of increased integration
of DFIG-based wind farms into electric power grids, it is necessary to transmit the
generated power from wind farms to the existing grids via transmission networks without
congestion.
Series capacitive compensation of DFIG-based wind farm is an economical way to increase
the power transfer capability of the transmission line connecting wind farm to the
grid. For example, a study performed by ABB reveals that increasing the power transfer
capability of an existing transmission line from 1300 MW to 2000 MW using series
compensation is 90% less than the cost of building a new transmission line.
However, a factor hindering the extensive use of series capacitive compensation is the
potential risk of sub- synchronous resonance (SSR). The SSR is a condition where the wind farm exchanges energy with the electric network, to which it is connected, at one or more
natural frequencies of the electric or mechanical part of the combined system, comprising
the wind farm and the network, and the frequency of the exchanged energy is below the
fundamental frequency of the system. This phenomenon may cause severe damage in the
wind farm, if not prevented.
Therefore, this dissertation deals with the SSR phenomena in a capacitive series compensated
wind farm. A DFIG-based wind farm, which is connected to a series compensated
transmission line, is considered as a case study. The small-signal stability analysis of the
system is presented, and the eigenvalues of the system are obtained. Using both modal
analysis and time-domain simulation, it is shown that the system is potentially unstable
due to the SSR mode.
Then, three different possibilities for the addition of SSR damping controller (SSRDC)
are investigated. The SSRDC can be added to (1) gate-controlled series capacitor (GCSC),
(2) thyristor-controlled series capacitor (TCSC), or (3) DFIG rotor-side converter (RSC)
and grid-side converter (GSC) controllers. The first and second c
Webinar - Which technologies & digital tools do we need to implement an energ...Cluster TWEED
3nd training session of 6 online training sessions for energy communities: Energy community projects in Belgium and the EU. This 6 pack series is organised by TWEED and Flux50, energy clusters in Belgium.
Webinaire : Comment optimiser la performance, la maintenance et la durée de v...Cluster TWEED
Webinaire du 18 mars 2021, co-organisé par le cluster TWEED et BEMAS (Belgian Maintenance Association). Les entreprises i-Care, Performance for Asset, Micromega, WaPT, ainsi que le groupe Schaeffler ont partagé leur expertise en matière de performance, maintenance et prolongation de durée de vie des éoliennes.
Webinaire : Innovation et infrastructure - Moteurs de la transition energetiq...Cluster TWEED
Découvrez les opportunités liées aux innovations technologiques et nouvelles infrastructures durables initiées par la transition énergétique, par le biais des présentations du directeur du Innovation & Technology Center de l'Agence internationale pour les énergies renouvelables, et du coordinateur du programme Sustainable Cities and Settlements de la division Energy Systems and Infrastructure de l'UNIDO.
NanoGrids for Home Application in a Power Cloud Framework Alessandro Burgio
Thanks to recent innovations driven by European Union and national policies, lately it has been possible to see the realization of effective renewable energy technologies, for both large and small-scale use, alongside considerable cost reductions for customers. As a result, businesses and households can increasingly produce and consume, some or all, their own electricity, either instantaneously or in a deferred manner through decentralized storage, behind the connection point with the grid (i.e. the meter). In such a way, it is possible to maximize self-consumption in order to increase their efficiency of energy use and reduce their exposure to electricity prices. In the paper, the use of the so-called Nanogrid for Home Application is proposed to achieve the result of the self-consumption maximization. Moreover, a framework of exchanging energy among Prosumers (Power Cloud) is illustrated to promote the use of Nanogrids for Home Applications.
H2 & Emerging Technologies for sustainable energy - 20 mai 2020Cluster TWEED
Webinaire, organisé le 20 mai 2020, lié aux nouvelles technologies émergentes du secteur énergétique, dont l'hydrogène.
Programme et orateurs :
- Emerging technologies for sustainable energy - Engie Research, Jan Mertens (MSc, PhD), Chief Science Officer (En)
- Hydrogène, le chaînon manquant - HydrogenAdvisors, Raphaël Schoentgen, ancien President de Hydrogen Europe et du FCHJU (Fr)
La vidéo de cet événement est également disponible sur la chaîne Youtube du cluster TWEED.
This document discusses energy storage for energy consumers. It discusses:
1) The balancing act of energy storage as renewable energy sources and distributed generation increase.
2) Applications of energy storage at various levels from bulk to community to consumer.
3) How energy storage enables growing needs for flexibility as demand and supply become more variable.
4) Practical examples that show the value of energy storage for renewables integration, system operations, transmission and distribution, and end use.
Noca Clean Energy has developed a Magnetic Transducer Generator (MTG) that provides a clean, cost-effective alternative energy source. The MTG generates electricity with zero emissions through advanced magnetic innovations. It is a scalable technology applicable for small or large power needs on or off existing energy grids. Noca Clean Energy offers maintenance programs to ensure efficient power generation from MTG units.
H2Hub Wallonia : From innovation to market - 03 juin 2021Cluster TWEED
Webinaire organisé par le cluster TWEED dans le cadre du H2Hub Wallonia, et dédié à l'innovation & l'Hydrogène, ou comment booster la recherche en Wallonie. Un état des lieux fut présenté sur les prochaines initiatives européennes, en présence du Directeur du FCHJU (Fuel Cells and Hydrogen Joint Undertaking), et de InnoEnergy, à la base de la création du nouveau EU Green H2 Accelerator. Un Zoom sur certains projets H2 wallons fut également abordé au cours de cette séance via une présentation de Cenaero.
Webinar - Which technologies & digital tools do we need to implement an energ...Cluster TWEED
3nd training session of 6 online training sessions for energy communities: Energy community projects in Belgium and the EU. This 6 pack series is organised by TWEED and Flux50, energy clusters in Belgium.
Webinaire : Comment optimiser la performance, la maintenance et la durée de v...Cluster TWEED
Webinaire du 18 mars 2021, co-organisé par le cluster TWEED et BEMAS (Belgian Maintenance Association). Les entreprises i-Care, Performance for Asset, Micromega, WaPT, ainsi que le groupe Schaeffler ont partagé leur expertise en matière de performance, maintenance et prolongation de durée de vie des éoliennes.
Webinaire : Innovation et infrastructure - Moteurs de la transition energetiq...Cluster TWEED
Découvrez les opportunités liées aux innovations technologiques et nouvelles infrastructures durables initiées par la transition énergétique, par le biais des présentations du directeur du Innovation & Technology Center de l'Agence internationale pour les énergies renouvelables, et du coordinateur du programme Sustainable Cities and Settlements de la division Energy Systems and Infrastructure de l'UNIDO.
NanoGrids for Home Application in a Power Cloud Framework Alessandro Burgio
Thanks to recent innovations driven by European Union and national policies, lately it has been possible to see the realization of effective renewable energy technologies, for both large and small-scale use, alongside considerable cost reductions for customers. As a result, businesses and households can increasingly produce and consume, some or all, their own electricity, either instantaneously or in a deferred manner through decentralized storage, behind the connection point with the grid (i.e. the meter). In such a way, it is possible to maximize self-consumption in order to increase their efficiency of energy use and reduce their exposure to electricity prices. In the paper, the use of the so-called Nanogrid for Home Application is proposed to achieve the result of the self-consumption maximization. Moreover, a framework of exchanging energy among Prosumers (Power Cloud) is illustrated to promote the use of Nanogrids for Home Applications.
H2 & Emerging Technologies for sustainable energy - 20 mai 2020Cluster TWEED
Webinaire, organisé le 20 mai 2020, lié aux nouvelles technologies émergentes du secteur énergétique, dont l'hydrogène.
Programme et orateurs :
- Emerging technologies for sustainable energy - Engie Research, Jan Mertens (MSc, PhD), Chief Science Officer (En)
- Hydrogène, le chaînon manquant - HydrogenAdvisors, Raphaël Schoentgen, ancien President de Hydrogen Europe et du FCHJU (Fr)
La vidéo de cet événement est également disponible sur la chaîne Youtube du cluster TWEED.
This document discusses energy storage for energy consumers. It discusses:
1) The balancing act of energy storage as renewable energy sources and distributed generation increase.
2) Applications of energy storage at various levels from bulk to community to consumer.
3) How energy storage enables growing needs for flexibility as demand and supply become more variable.
4) Practical examples that show the value of energy storage for renewables integration, system operations, transmission and distribution, and end use.
Noca Clean Energy has developed a Magnetic Transducer Generator (MTG) that provides a clean, cost-effective alternative energy source. The MTG generates electricity with zero emissions through advanced magnetic innovations. It is a scalable technology applicable for small or large power needs on or off existing energy grids. Noca Clean Energy offers maintenance programs to ensure efficient power generation from MTG units.
H2Hub Wallonia : From innovation to market - 03 juin 2021Cluster TWEED
Webinaire organisé par le cluster TWEED dans le cadre du H2Hub Wallonia, et dédié à l'innovation & l'Hydrogène, ou comment booster la recherche en Wallonie. Un état des lieux fut présenté sur les prochaines initiatives européennes, en présence du Directeur du FCHJU (Fuel Cells and Hydrogen Joint Undertaking), et de InnoEnergy, à la base de la création du nouveau EU Green H2 Accelerator. Un Zoom sur certains projets H2 wallons fut également abordé au cours de cette séance via une présentation de Cenaero.
European Utility Week (2/2) | Paris - 12 au 14 novembre 2019Cluster TWEED
Les clusters TWEED et Flux50 ont emmené 13 entreprises belges (wallonnes, bruxelloises et flamandes), réunies sous les couleurs belges, au salon mondial European Utility Week mi-novembre!
Orateurs : Comsof, FifthPlay, GreenWatch, Gorilla, Niko, Option, Powerdale, WeSmart.
Piedmont Lithium Limited (Nasdaq: PLL) holds a 100% interest in the Piedmont Lithium Project (“Project”) located within the world-class Carolina Tin-Spodumene Belt (“TSB”) and along trend to the Hallman Beam and Kings Mountain mines, historically providing most of the western world’s lithium between the 1950s and the 1980s. The TSB has been described as one of the largest lithium provinces in the world and is located approximately 25 miles west of Charlotte, North Carolina. It is a premier location for development of an integrated lithium business based on its favorable geology, proven metallurgy and easy access to infrastructure, power, R&D centers for lithium and battery storage, major high-tech population centers and downstream lithium processing facilities. Compared to Australian- and Canadian-based projects, North Carolina offers a significantly lower-cost operating environment (labor, power/gas/diesel, transport), which is further boosted by the absence of government royalties and a low tax rate environment. Lithium is on the US Government’s Critical Minerals list, giving the project significant strategic value as being the only conventional US lithium development project.
Dhaka | Aug-15 | Village level energy access in Bangladesh: Solar Home System...Smart Villages
Farzana Rahman, Unit Head (Investment), Renewable Energy
Md. Mahfuzur Rahman, Assistant Manager, Renewable Energy
As part of the series of regional engagements in South Asia, Smart Villages is organising a workshop on off-grid rural energy provision in Bangladesh. The country has the fastest growing programme in the world with an estimated 70,000 solar home systems (SHS) installed per day. More than 3 million SHS have been installed in off-grid rural areas in the country bringing electricity to an estimated 13 million people.
The aim of the workshop is to gain insights from the experience of a wide variety of stakeholders in Bangladesh who are involved in rural off-grid energy provision in the country. This workshop will offer a number of potential lessons to other countries within the region. The workshop provides an opportunity to gain a deeper understanding of the opportunities presented by expansion of solar home systems (SHS) and mini-grids to off-grid rural communities and the challenges faced in this expansion. During this workshop we will also investigate the potential impact of energy access on rural livelihoods in the country.
The workshop is being jointly organised by Smart Villages and Practical Action.
Dhaka | Aug-15 | Solar mini-grids in Bangladesh – Opportunities & ChallengesSmart Villages
Asma Huque, Managing Director, Prokaushali Sangsad Ltd.
As part of the series of regional engagements in South Asia, Smart Villages is organising a workshop on off-grid rural energy provision in Bangladesh. The country has the fastest growing programme in the world with an estimated 70,000 solar home systems (SHS) installed per day. More than 3 million SHS have been installed in off-grid rural areas in the country bringing electricity to an estimated 13 million people.
The aim of the workshop is to gain insights from the experience of a wide variety of stakeholders in Bangladesh who are involved in rural off-grid energy provision in the country. This workshop will offer a number of potential lessons to other countries within the region. The workshop provides an opportunity to gain a deeper understanding of the opportunities presented by expansion of solar home systems (SHS) and mini-grids to off-grid rural communities and the challenges faced in this expansion. During this workshop we will also investigate the potential impact of energy access on rural livelihoods in the country.
The workshop is being jointly organised by Smart Villages and Practical Action.
4 cired2013 distributed energy resourcesDutch Power
This document summarizes Session 4 of the CIRED Congress 2013 on distributed energy resources and energy efficiency. It describes the four blocks of papers presented in the session, covering topics like DG/DER planning and integration, operation and control, customer-side developments, and DG/DER technologies. For each block, it provides brief summaries of some of the selected papers to be presented, including their relevance, writing quality, importance, and whether they are worth reading.
The document discusses a 858kWp solar carport system installed at Garden City Mall in Nairobi, Kenya. The system includes 3,364 solar panels and provides shade for 454 parking spaces. It generates approximately 1,450 MWh of clean solar electricity annually and cuts carbon emissions by around 750 tonnes per year. The dual-mode system provides solar power during the day and switches to generators during outages to provide reliable power. Garden City Mall is the first mixed-use development in East Africa to receive LEED green building certification.
A Review of Solar PV Benefit and Cost StudiesJohn Farrell
A marvelous presentation on the many complicated factors involved in calculating the value of solar to an electric utility. Presented on 9/20/13 by Lena Hansen and Virginia Lacy of the Rocky Mountain Institute to a Value of Solar Workshop hosted by the Division of Energy Resources of the Minnesota Department of Commerce. Part 1 of the stakeholder process for establishing the state's value of solar methodology for utilities.
Universities as “Smart Cities” in a Globally Connected World - How Will They ...Larry Smarr
09.08.20
Invited Talk
Monash University ITS Strategic Planning Session
RE-INVENT to RE-POSITION – TRANSFORMED BY ICT
Title: Universities as “Smart Cities” in a Globally Connected World - How Will They be Transformed?
Melbourne, Australia
The meeco Group was consolidated and its main focus oriented to the energy sector in
2000. The meeco Group has its world headquarters in Zug, Switzerland. Currently the
group has over 50 employees working across 4 continents.
The document discusses plans to increase renewable energy development in Bangladesh to empower rural populations and create green jobs. It aims to install 7.5 million solar home systems by 2020 to provide electricity to half of Bangladesh's population. Other goals include replacing diesel pumps with solar pumps, powering education and health facilities with renewables, and creating 100,000 green jobs, especially for women. It outlines challenges like maintaining systems and training technicians, and solutions like developing grassroots entrepreneurs to provide maintenance services.
CCU et les nouvelles molecules de la transition energetique | 2 fevrier 2021Cluster TWEED
Webinaire organisé par le pôle Greenwin et le cluster TWEED, lié aux nouvelles technologies émergentes du secteur énergétique, aux derniers développements au niveau du captage, du stockage et de la valorisation du CO2 (CCUS), ainsi qu'au rôle des nouvelles molécules de la transition énergétique.
* Emerging Sustainable Technologies - Elodie Lecadre, Engie Research, Lead Scientific Advisor
* CCU & Molecules - Jan Mertens, Engie Research, Chief Science Officer (En)
* Rationals behind CCUS and Direct Air Capture - Grégoire Leonard, Associate Professor, Department of Chemical Engineering, University of Liège
* CCU & heavy process industries - Jean-Yves Tilquin, Carmeuse, Group R&D Director & Vice-President CO2 Value Europe
TimberRock Energy Solutions develops microgrid solutions called Pico-Grids and Multi-Grids that provide energy security, efficiency and reliability while also participating in energy and ancillary services markets. Pico-Grids are autonomous microgrids managed by TimberRock's software to be aggregated into larger Multi-Grids capable of rapidly responding to grid needs. These Multi-Grids generate stronger returns than traditional PPAs by providing additional revenue from ancillary grid services. TimberRock has experience developing and operating commercially financed Pico-Grids and provides hardware and software solutions to empower a smarter electrical grid.
This document provides capital workpapers for SDG&E's Smart Grid Portfolio project. The project aims to implement smart grid technologies across SDG&E's electric system to maintain reliability and accommodate increased renewable energy and electric vehicles. Key components of the project include energy storage, dynamic line ratings, and expanding SCADA capabilities. The workpapers provide cost forecasts and justification for the smart grid technologies included in the portfolio.
This document discusses the evolution of smart grids in Italy. It notes that Italy is well positioned for smart grid development due to its installation of 32 million smart meters. Smart grids will help Italy manage challenges like increasing renewable energy and reducing emissions. The electricity system is undergoing major innovation with distributed energy generation, consumers becoming "prosumers" who produce and consume energy, and new technologies like electric vehicles impacting energy demand and distribution networks. This innovation represents a shift towards a new "smart power system" with more distributed electricity generation and less reliance on primary energy sources.
Schneider Electric is a global specialist in energy management with over 100,000 employees in over 100 countries. In 2011, Schneider Electric had €27 billion in sales, with 44% of sales in Western Europe, 28% in North America, and 27% in Asia Pacific. The company has a diversified customer base including utilities, industrial processes, data centers, non-residential and residential buildings. Schneider Electric has a long history dating back to 1836 and has grown through strategic acquisitions to become a global leader in energy management.
Learn about CTC Global and ACCC ConductorDave Bryant
CTC Global has developed an innovative Aluminum Conductor Composite Core (ACCC) cable to improve the efficiency, capacity, reliability and resilience of power grids. The ACCC cable uses a lightweight carbon fiber core that reduces line losses by 25-40% and allows 28% more conductive aluminum. This improves energy access globally while lowering costs and reducing CO2 emissions. CTC Global's ACCC cable has also proven more durable in extreme weather, helping to improve grid resilience.
This document summarizes a large solar carport system installed at Garden City Mall in Nairobi, Kenya. The 858kWp solar carport system, completed in 2015, is Africa's largest and generates 1250 MWh of electricity annually. It provides shade for 454 parking spaces and will save over 6,250 tonnes of CO2 emissions over its lifetime. The system uses an innovative dual-mode technology to provide solar power during the day and switch to backup generators when solar is insufficient or the grid is down.
2nd International Conference E/E Systems for Wind TurbinesTorben Haagh
The 2nd International Conference on E/E Systems for Wind Turbines will take place from May 21-23, 2012 in Bremen, Germany. The conference will focus on the latest developments in pitch systems, advanced control systems, grid compliance requirements, and innovative generator and converter technologies for next generation wind turbines. Industry leaders from utilities, manufacturers, and suppliers will present case studies and discuss reducing the cost of energy through increased availability, serviceability, and energy production from wind power.
This document contains the resume of Sidharth Goyal, including his educational qualifications and professional experience. He has a PGDM in Marketing from IMT Ghaziabad and a Bachelor of Engineering degree. His professional experience includes working as a Design Engineer at Pacific Security Solutions and an internship at Dollar Industries studying their supply chain. He has undertaken projects on entry strategy for Mahindra Tractors and marketing operations of ICICI Bank. His areas of interest include sales, marketing, supply chain management and digital marketing.
- Studied the wireless transmission of power using the principle of electromagnetic induction.
- The transmission of power is done with the help of Tesla coil.
1. The document describes an energy recovery system for a vehicle comprising an electrical generator within a rotatable housing, and a wind turbine with rotatable blades coupled to the generator to convert rotational energy into electrical energy.
2. The system may include additional generators, batteries to store the electrical energy, and an airflow chamber mountable to the vehicle exterior to house the wind turbine.
3. The housing rotates around a vertical axis while the wind turbine's blades rotate around a horizontal axis, and a gear system couples the blades' rotation to the generator(s) to produce electricity from wind power.
European Utility Week (2/2) | Paris - 12 au 14 novembre 2019Cluster TWEED
Les clusters TWEED et Flux50 ont emmené 13 entreprises belges (wallonnes, bruxelloises et flamandes), réunies sous les couleurs belges, au salon mondial European Utility Week mi-novembre!
Orateurs : Comsof, FifthPlay, GreenWatch, Gorilla, Niko, Option, Powerdale, WeSmart.
Piedmont Lithium Limited (Nasdaq: PLL) holds a 100% interest in the Piedmont Lithium Project (“Project”) located within the world-class Carolina Tin-Spodumene Belt (“TSB”) and along trend to the Hallman Beam and Kings Mountain mines, historically providing most of the western world’s lithium between the 1950s and the 1980s. The TSB has been described as one of the largest lithium provinces in the world and is located approximately 25 miles west of Charlotte, North Carolina. It is a premier location for development of an integrated lithium business based on its favorable geology, proven metallurgy and easy access to infrastructure, power, R&D centers for lithium and battery storage, major high-tech population centers and downstream lithium processing facilities. Compared to Australian- and Canadian-based projects, North Carolina offers a significantly lower-cost operating environment (labor, power/gas/diesel, transport), which is further boosted by the absence of government royalties and a low tax rate environment. Lithium is on the US Government’s Critical Minerals list, giving the project significant strategic value as being the only conventional US lithium development project.
Dhaka | Aug-15 | Village level energy access in Bangladesh: Solar Home System...Smart Villages
Farzana Rahman, Unit Head (Investment), Renewable Energy
Md. Mahfuzur Rahman, Assistant Manager, Renewable Energy
As part of the series of regional engagements in South Asia, Smart Villages is organising a workshop on off-grid rural energy provision in Bangladesh. The country has the fastest growing programme in the world with an estimated 70,000 solar home systems (SHS) installed per day. More than 3 million SHS have been installed in off-grid rural areas in the country bringing electricity to an estimated 13 million people.
The aim of the workshop is to gain insights from the experience of a wide variety of stakeholders in Bangladesh who are involved in rural off-grid energy provision in the country. This workshop will offer a number of potential lessons to other countries within the region. The workshop provides an opportunity to gain a deeper understanding of the opportunities presented by expansion of solar home systems (SHS) and mini-grids to off-grid rural communities and the challenges faced in this expansion. During this workshop we will also investigate the potential impact of energy access on rural livelihoods in the country.
The workshop is being jointly organised by Smart Villages and Practical Action.
Dhaka | Aug-15 | Solar mini-grids in Bangladesh – Opportunities & ChallengesSmart Villages
Asma Huque, Managing Director, Prokaushali Sangsad Ltd.
As part of the series of regional engagements in South Asia, Smart Villages is organising a workshop on off-grid rural energy provision in Bangladesh. The country has the fastest growing programme in the world with an estimated 70,000 solar home systems (SHS) installed per day. More than 3 million SHS have been installed in off-grid rural areas in the country bringing electricity to an estimated 13 million people.
The aim of the workshop is to gain insights from the experience of a wide variety of stakeholders in Bangladesh who are involved in rural off-grid energy provision in the country. This workshop will offer a number of potential lessons to other countries within the region. The workshop provides an opportunity to gain a deeper understanding of the opportunities presented by expansion of solar home systems (SHS) and mini-grids to off-grid rural communities and the challenges faced in this expansion. During this workshop we will also investigate the potential impact of energy access on rural livelihoods in the country.
The workshop is being jointly organised by Smart Villages and Practical Action.
4 cired2013 distributed energy resourcesDutch Power
This document summarizes Session 4 of the CIRED Congress 2013 on distributed energy resources and energy efficiency. It describes the four blocks of papers presented in the session, covering topics like DG/DER planning and integration, operation and control, customer-side developments, and DG/DER technologies. For each block, it provides brief summaries of some of the selected papers to be presented, including their relevance, writing quality, importance, and whether they are worth reading.
The document discusses a 858kWp solar carport system installed at Garden City Mall in Nairobi, Kenya. The system includes 3,364 solar panels and provides shade for 454 parking spaces. It generates approximately 1,450 MWh of clean solar electricity annually and cuts carbon emissions by around 750 tonnes per year. The dual-mode system provides solar power during the day and switches to generators during outages to provide reliable power. Garden City Mall is the first mixed-use development in East Africa to receive LEED green building certification.
A Review of Solar PV Benefit and Cost StudiesJohn Farrell
A marvelous presentation on the many complicated factors involved in calculating the value of solar to an electric utility. Presented on 9/20/13 by Lena Hansen and Virginia Lacy of the Rocky Mountain Institute to a Value of Solar Workshop hosted by the Division of Energy Resources of the Minnesota Department of Commerce. Part 1 of the stakeholder process for establishing the state's value of solar methodology for utilities.
Universities as “Smart Cities” in a Globally Connected World - How Will They ...Larry Smarr
09.08.20
Invited Talk
Monash University ITS Strategic Planning Session
RE-INVENT to RE-POSITION – TRANSFORMED BY ICT
Title: Universities as “Smart Cities” in a Globally Connected World - How Will They be Transformed?
Melbourne, Australia
The meeco Group was consolidated and its main focus oriented to the energy sector in
2000. The meeco Group has its world headquarters in Zug, Switzerland. Currently the
group has over 50 employees working across 4 continents.
The document discusses plans to increase renewable energy development in Bangladesh to empower rural populations and create green jobs. It aims to install 7.5 million solar home systems by 2020 to provide electricity to half of Bangladesh's population. Other goals include replacing diesel pumps with solar pumps, powering education and health facilities with renewables, and creating 100,000 green jobs, especially for women. It outlines challenges like maintaining systems and training technicians, and solutions like developing grassroots entrepreneurs to provide maintenance services.
CCU et les nouvelles molecules de la transition energetique | 2 fevrier 2021Cluster TWEED
Webinaire organisé par le pôle Greenwin et le cluster TWEED, lié aux nouvelles technologies émergentes du secteur énergétique, aux derniers développements au niveau du captage, du stockage et de la valorisation du CO2 (CCUS), ainsi qu'au rôle des nouvelles molécules de la transition énergétique.
* Emerging Sustainable Technologies - Elodie Lecadre, Engie Research, Lead Scientific Advisor
* CCU & Molecules - Jan Mertens, Engie Research, Chief Science Officer (En)
* Rationals behind CCUS and Direct Air Capture - Grégoire Leonard, Associate Professor, Department of Chemical Engineering, University of Liège
* CCU & heavy process industries - Jean-Yves Tilquin, Carmeuse, Group R&D Director & Vice-President CO2 Value Europe
TimberRock Energy Solutions develops microgrid solutions called Pico-Grids and Multi-Grids that provide energy security, efficiency and reliability while also participating in energy and ancillary services markets. Pico-Grids are autonomous microgrids managed by TimberRock's software to be aggregated into larger Multi-Grids capable of rapidly responding to grid needs. These Multi-Grids generate stronger returns than traditional PPAs by providing additional revenue from ancillary grid services. TimberRock has experience developing and operating commercially financed Pico-Grids and provides hardware and software solutions to empower a smarter electrical grid.
This document provides capital workpapers for SDG&E's Smart Grid Portfolio project. The project aims to implement smart grid technologies across SDG&E's electric system to maintain reliability and accommodate increased renewable energy and electric vehicles. Key components of the project include energy storage, dynamic line ratings, and expanding SCADA capabilities. The workpapers provide cost forecasts and justification for the smart grid technologies included in the portfolio.
This document discusses the evolution of smart grids in Italy. It notes that Italy is well positioned for smart grid development due to its installation of 32 million smart meters. Smart grids will help Italy manage challenges like increasing renewable energy and reducing emissions. The electricity system is undergoing major innovation with distributed energy generation, consumers becoming "prosumers" who produce and consume energy, and new technologies like electric vehicles impacting energy demand and distribution networks. This innovation represents a shift towards a new "smart power system" with more distributed electricity generation and less reliance on primary energy sources.
Schneider Electric is a global specialist in energy management with over 100,000 employees in over 100 countries. In 2011, Schneider Electric had €27 billion in sales, with 44% of sales in Western Europe, 28% in North America, and 27% in Asia Pacific. The company has a diversified customer base including utilities, industrial processes, data centers, non-residential and residential buildings. Schneider Electric has a long history dating back to 1836 and has grown through strategic acquisitions to become a global leader in energy management.
Learn about CTC Global and ACCC ConductorDave Bryant
CTC Global has developed an innovative Aluminum Conductor Composite Core (ACCC) cable to improve the efficiency, capacity, reliability and resilience of power grids. The ACCC cable uses a lightweight carbon fiber core that reduces line losses by 25-40% and allows 28% more conductive aluminum. This improves energy access globally while lowering costs and reducing CO2 emissions. CTC Global's ACCC cable has also proven more durable in extreme weather, helping to improve grid resilience.
This document summarizes a large solar carport system installed at Garden City Mall in Nairobi, Kenya. The 858kWp solar carport system, completed in 2015, is Africa's largest and generates 1250 MWh of electricity annually. It provides shade for 454 parking spaces and will save over 6,250 tonnes of CO2 emissions over its lifetime. The system uses an innovative dual-mode technology to provide solar power during the day and switch to backup generators when solar is insufficient or the grid is down.
2nd International Conference E/E Systems for Wind TurbinesTorben Haagh
The 2nd International Conference on E/E Systems for Wind Turbines will take place from May 21-23, 2012 in Bremen, Germany. The conference will focus on the latest developments in pitch systems, advanced control systems, grid compliance requirements, and innovative generator and converter technologies for next generation wind turbines. Industry leaders from utilities, manufacturers, and suppliers will present case studies and discuss reducing the cost of energy through increased availability, serviceability, and energy production from wind power.
This document contains the resume of Sidharth Goyal, including his educational qualifications and professional experience. He has a PGDM in Marketing from IMT Ghaziabad and a Bachelor of Engineering degree. His professional experience includes working as a Design Engineer at Pacific Security Solutions and an internship at Dollar Industries studying their supply chain. He has undertaken projects on entry strategy for Mahindra Tractors and marketing operations of ICICI Bank. His areas of interest include sales, marketing, supply chain management and digital marketing.
- Studied the wireless transmission of power using the principle of electromagnetic induction.
- The transmission of power is done with the help of Tesla coil.
1. The document describes an energy recovery system for a vehicle comprising an electrical generator within a rotatable housing, and a wind turbine with rotatable blades coupled to the generator to convert rotational energy into electrical energy.
2. The system may include additional generators, batteries to store the electrical energy, and an airflow chamber mountable to the vehicle exterior to house the wind turbine.
3. The housing rotates around a vertical axis while the wind turbine's blades rotate around a horizontal axis, and a gear system couples the blades' rotation to the generator(s) to produce electricity from wind power.
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TRANSIENT STABILITY ENHANCEMENT OF WIND FARMS USING POWER ELECTRONICS AND FACTS CONTROLLERS
1. TRANSIENT STABILITY ENHANCEMENT OF WIND FARMS USING POWER
ELECTRONICS AND FACTS CONTROLLERS
by
Hossein Ali Mohammadpour
Bachelor of Science
Iran University of Science and Technology 2006
Master of Science
Iran University of Science and Technology 2009
Submitted in Partial Fulfillment of the Requirements
for the Degree of Doctor of Philosophy in
Electrical Engineering
College of Engineering and Computing
University of South Carolina
2014
Accepted by:
Enrico Santi, Major Professor
Roger Dougal, Committee Member
Charles Brice, Committee Member
Edward P. Gatzke, Committee Member
Lacy Ford, Vice Provost and Dean of Graduate Studies
2. c Copyright by Hossein Ali Mohammadpour, 2014
All Rights Reserved.
ii
4. ACKNOWLEDGMENTS
I would like to thank all of those who took time to help me. A special thanks goes to my
advisor Dr. Enrico Santi who guided me along in my studies and research, supported me to
attend a number of conferences and presentations, and helped me in the arduous process of
completing this dissertation document. He has set an example of excellence as a researcher,
mentor, instructor, and role model.
I also would like to thank Dr. Yong-June Shin who gave me the opportunity to study at
the University of South Carolina and taught me how to research and present my research
effectively. I would additionally like to thank Drs. Enrico Santi, Roger A. Dougal, Charles
Brice, and Edward P. Gatzke for participating in my dissertation committee and mentoring
me in the formative stages of my dissertation.
I would like to thank the members of the Power Electronics and Power IT groups
in Department of Electrical Engineering at the University of South Carolina, including
Amin Ghaderi, Soheila Eskandari, Qiu Deng, Cuong Nguyen, Paul Young, Ryan Lukens,
Jonathan Siegres, Kang Peng, Ozan Gulbudak, Vinya Sri Pencnala, Silvia Arrua, and Drs.
Philip Stone, Patrick Mitchell, Mohammed Hassan, Moinul Islam, and David Coats. Last,
but not least, I would like to thank all of my family members and my friends in Columbia,
who are like a family to me, especially Amin Ghaderi and Nima Mohammadi.
The projects that make up this dissertation document have been supported by the Na-
tional Science Foundation Industry / University Cooperative Research Center on GRid-
connected Advanced Power Electronics Systems (GRAPES).
iv
5. ABSTRACT
Nowadays, it is well-understood that the burning of fossil fuels in electric power station has
a significant influence on the global climate due to greenhouse gases. In many countries,
the use of cost-effective and reliable low-carbon electricity energy sources is becoming an
important energy policy. Among different kinds of clean energy resources- such as solar
power, hydro-power, ocean wave power and so on, wind power is the fastest-growing form
of renewable energy at the present time.
Moreover, adjustable speed generator wind turbines (ASGWT) has key advantages over
the fixed-speed generator wind turbines (FSGWT) in terms of less mechanical stress, im-
proved power quality, high system efficiency, and reduced acoustic noise. One important
class of ASGWT is the doubly-fed induction generator (DFIG), which has gained a signif-
icant attention of the electric power industry due to their advantages over the other class
of ASGWT, i.e. fully rated converter-based wind turbines. Because of increased integra-
tion of DFIG-based wind farms into electric power grids, it is necessary to transmit the
generated power from wind farms to the existing grids via transmission networks without
congestion.
Series capacitive compensation of DFIG-based wind farm is an economical way to in-
crease the power transfer capability of the transmission line connecting wind farm to the
grid. For example, a study performed by ABB reveals that increasing the power trans-
fer capability of an existing transmission line from 1300 MW to 2000 MW using series
compensation is 90% less than the cost of building a new transmission line.
However, a factor hindering the extensive use of series capacitive compensation is the
potential risk of sub- synchronous resonance (SSR). The SSR is a condition where the wind
v
6. farm exchanges energy with the electric network, to which it is connected, at one or more
natural frequencies of the electric or mechanical part of the combined system, comprising
the wind farm and the network, and the frequency of the exchanged energy is below the
fundamental frequency of the system. This phenomenon may cause severe damage in the
wind farm, if not prevented.
Therefore, this dissertation deals with the SSR phenomena in a capacitive series com-
pensated wind farm. A DFIG-based wind farm, which is connected to a series compensated
transmission line, is considered as a case study. The small-signal stability analysis of the
system is presented, and the eigenvalues of the system are obtained. Using both modal
analysis and time-domain simulation, it is shown that the system is potentially unstable
due to the SSR mode.
Then, three different possibilities for the addition of SSR damping controller (SSRDC)
are investigated. The SSRDC can be added to (1) gate-controlled series capacitor (GCSC),
(2) thyristor-controlled series capacitor (TCSC), or (3) DFIG rotor-side converter (RSC)
and grid-side converter (GSC) controllers. The first and second cases are related to the
series flexible AC transmission systems (FACTS) family, and the third case uses the DFIG
back-to-back converters to damp the SSR. The SSRDC is designed using residue-based
analysis and root locus diagrams. Using residue-based analysis, the optimal input control
signal (ICS) to the SSRDC is identified that can damp the SSR mode without destabilizing
other modes, and using root-locus analysis, the required gain for the SSRDC is determined.
Moreover, two methods are discussed in order to estimate the optimum input signal to the
SSRDC, without measuring it directly. In this dissertation, MATLAB/Simulink is used as
a tool for modeling and design of the SSRDC, and PSCAD/EMTDC is used to perform
time-domain simulation in order to verify the design process.
vi
10. LIST OF TABLES
Table 3.1 The system modes and participation factors at 75% series compensa-
tion and 7 m/s wind speed (Part I) . . . . . . . . . . . . . . . . . . . . . 32
Table 3.2 The system modes and participation factors at 75% series compensa-
tion and 7 m/s wind speed (Part II). . . . . . . . . . . . . . . . . . . . . 33
Table 3.3 λ5,6 at different wind speeds and compensation levels. . . . . . . . . . . 35
Table 3.4 The SSR and SupSR modes of the system at different wind speeds
Vω and compensation levels K. . . . . . . . . . . . . . . . . . . . . . . . 36
Table 3.5 Rotor resistance under SSR and SupSR frequencies when the wind
speed is kept constant at Vω = 7 m/s (45 Hz) and the compensation
level changes. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 37
Table 3.6 Rotor resistance under SSR and SupSR frequencies when compen-
sation level is kept constant at K = 65% (fn = 42.12 Hz) and wind
speed changes. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 38
Table 5.1 Comparing the SSR mode of the system with FSC and TCSC when
Vω = 7 m/s and compensation level changes. . . . . . . . . . . . . . . . 71
Table 5.2 Comparing the SupSR mode of the system with FSC and TCSC when
Vω = 7 m/s and compensation level changes. . . . . . . . . . . . . . . . 71
Table 6.1 Residue of the SSR and SupSR, electro-mechanical, and shaft modes
at Vω = 7 m/s and K = 55%: ωr as ICS. . . . . . . . . . . . . . . . . . . 95
Table 6.2 Residue of the SSR and SupSR, electro-mechanical, and shaft modes
at Vω = 7 m/s and K = 55%: PL as ICS. . . . . . . . . . . . . . . . . . . 96
Table 6.3 Residue of the SSR and SupSR, electro-mechanical, and shaft modes
at Vω = 7 m/s and K = 55%: VC as ICS . . . . . . . . . . . . . . . . . . 97
x
11. Table 7.1 SSR modes of the system at different wind speeds Vω and compensa-
tion levels K. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 99
Table 7.2 Values of the SSRDC gain, KSSR, for different wind speeds and series
compensation levels. . . . . . . . . . . . . . . . . . . . . . . . . . . . . 102
Table A.1 Parameters of the single 2 MW and 100 MW aggregated DFIG. Val-
ues are in (p.u.), unless it is mentioned. . . . . . . . . . . . . . . . . . . 120
Table A.2 Parameters of the network and shaft system. Values are in (p.u.). . . . . . 120
xi
12. LIST OF FIGURES
Figure 2.1 One line diagram of the studied power system. RL = transmission
line resistance, XL = transmission line reactance, XT = transformer
reactance, Xsys = system impedance, XC = fixed series capacitor, Xtg
= transformer reactance in grid side converter (GSC), Vs = genera-
tor’s terminal voltage, iL = line current, ig = GSC current, is = stator
current, ir = rotor current [64]. . . . . . . . . . . . . . . . . . . . . . . 10
Figure 2.2 Block diagram of the state-space representation. . . . . . . . . . . . . . 11
Figure 2.3 Synchronously rotating qd frame with respect to the stator abc-frame. . 12
Figure 2.4 Wind power ¯Pm (p.u.), wind turbine shaft speed ¯ωm (p.u.), and wind
speed Vω (m/s) relationship. . . . . . . . . . . . . . . . . . . . . . . . 15
Figure 2.5 A. RSC controllers. B. GSC controllers. . . . . . . . . . . . . . . . . . 15
Figure 2.6 GSC regulators in Simulink. . . . . . . . . . . . . . . . . . . . . . . . . 16
Figure 2.7 Back-to-back converter between the DFIG and grid. . . . . . . . . . . . 16
Figure 2.8 DC-link model in Matlab/Simulink. . . . . . . . . . . . . . . . . . . . . 17
Figure 2.9 DFIG model in Matlab/Simulink. . . . . . . . . . . . . . . . . . . . . . 19
Figure 2.10 The shaft system model in Matlab/Simulink. . . . . . . . . . . . . . . . 21
Figure 2.11 Transmission line model in Matlab/Simulink. . . . . . . . . . . . . . . 23
Figure 2.12 RSC and GSC controllers, DC-link, and algebraic equations in Mat-
lab/Simulink. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 24
Figure 3.1 (A) A simple lossless series compensated two-machine system. (B)
Variation of transmission real power of line and injected reactive
power by series capacitor versus angle δ, for different values of
compensation levels. . . . . . . . . . . . . . . . . . . . . . . . . . . . . 28
xii
13. Figure 3.2 Equivalent circuit of the system under sub-synchronous and super-
synchronous frequencies. . . . . . . . . . . . . . . . . . . . . . . . . . 30
Figure 3.3 Terminal voltage when Vω = 7 m/s and (a) K = 55% (b) K = 60%
(c) K = 65% . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 38
Figure 3.4 Terminal voltage when Vω = 8 m/s and (a) K = 55% (b) K = 60%
(c) K = 65% . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 39
Figure 3.5 Terminal voltage when Vω = 9 m/s and (a) K = 55% (b) K = 60%
(c) K = 65% . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 39
Figure 3.6 Structure of a typical drive-train model. Ti,i+1 = The torque applied
to the ith mass from (i+1)th mass, Ti = external torque applied to ith
mass, δi = torsional angle of the ith mass, Hi inertia constant of the
ith mass, Di = damping coefficient of the ith mass, Ki,i−1 = stiffness
coefficient between ith and (i−1)th masses. . . . . . . . . . . . . . . . 40
Figure 3.7 SSR and torsional modes versus the stiffness coefficient, Kt,g, when
Vω = 9 m/s and K = 55% : (a) Imaginary part (Hz) (b) Real part. . . . . 43
Figure 3.8 SSR and torsional modes versus series compensation level, K, when
Vω = 9 m/s: (a) Imaginary part (Hz) (b) Real part. . . . . . . . . . . . . 44
Figure 3.9 The SSTI when Vω = 9 m/s and compensation level changes at
different times: (a) Ttg (p.u.) (b) ωt (p.u.) (c) Te (p.u.) (d) Vs (p.u.). . . 45
Figure 3.10 The mechanism of the SSCI in WTGS. . . . . . . . . . . . . . . . . . . 46
Figure 3.11 Single line diagram of a part of ERCOT grid, where a 200 MW
DFIG wind farm is connected to the Bus 2 [37],[40]. . . . . . . . . . . . 47
Figure 3.12 Single line diagram of the 54 mile 345 KV Wilmarth (WLM)- Lake-
field Generating station (LFD) transmission line connected to the
wind farm [57], [94]. . . . . . . . . . . . . . . . . . . . . . . . . . . . 48
Figure 4.1 Single line configuration of the GCSC. vcg = voltage across the
GCSC, iL = transmission line’s current, icg = GCSC capacitor cur-
rent, Xcg = fixed capacitance of the GCSC. . . . . . . . . . . . . . . . . 52
Figure 4.2 Line current iL(t), capacitor voltage vcg(t), and switching function
of the GCSC. β = GCSC’s turn-off angle γ = the angle of the advance
(π/2−β), δ = hold off angle (π−2β = 2γ) . . . . . . . . . . . . . . . . 53
xiii
14. Figure 4.3 Block diagram of the GCSC controller. . . . . . . . . . . . . . . . . . . 54
Figure 4.4 Block diagram of the GCSC power scheduling controller (PSC). . . . . 55
Figure 4.5 Real part of Mode 1 and 2 when wind speed is (a) 7 m/s (b) 9 m/s
with GCSC and fixed capacitor in line. . . . . . . . . . . . . . . . . . . 56
Figure 4.6 Residues of the SSR mode with ¯ωr as ICS. . . . . . . . . . . . . . . . . 58
Figure 4.7 Residues of the SSR mode with IL as ICS. . . . . . . . . . . . . . . . . 58
Figure 4.8 Residues of the SSR mode with Vcg as ICS. . . . . . . . . . . . . . . . . 59
Figure 4.9 Root locus diagram of the SSR mode with IL as ICS. The + sign
indicates the locations of the roots corresponding to the indicated
gain, Kgc. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 60
Figure 4.10 Root locus diagram of the SSR mode with Vcg as ICS. The + sign
indicates the locations of the roots corresponding to the indicated
gain, Kgc. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 60
Figure 4.11 Comparing dynamic response of the electric torque without SSRDC
and with SSRDC (IL and Vcg as ICS) (a) simulation time from t = 0
s to t = 4 s (b) simulation time from t = 0.9 s to t = 1.9 s. . . . . . . . . 61
Figure 4.12 Comparing dynamic response of the terminal voltage without SS-
RDC and with (IL and Vcg as ICS) (a) simulation time from t = 0 s
to t = 20 s (b) simulation time from t = 0.9 s to t = 1.9 s. . . . . . . . . 62
Figure 4.13 Comparing dynamic response of the DC link voltage without SS-
RDC and with SSRDC (IL and Vcg as ICS) (a) simulation time from
t = 0 s to t = 20 s (b) simulation time from t = 0.9 s to t = 1.9 s . . . . 63
Figure 4.14 Power factor of the DFIG wind farm (a) simulation time from t = 1
s to t = 2 s (b) simulation time from t = 1 s to t = 25 s . . . . . . . . . 64
Figure 5.1 Typical single line configuration of a TCSC. . . . . . . . . . . . . . . . 66
Figure 5.2 TCSC capacitor voltage (vCT (t)), line current (iL(t)), capacitor and
inductor currents ( iCT (t) and iLT (t)), and TCSC switching pulses
(T1 and T2). . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 66
Figure 5.3 TCSC reactance versus firing angle. . . . . . . . . . . . . . . . . . . . 67
xiv
15. Figure 5.4 Single line diagram of the transmission line and TCSC model. . . . . . 67
Figure 5.5 Transmission line and the TCSC model in q-axis. . . . . . . . . . . . . 68
Figure 5.6 Transmission line and the TCSC model in d-axis. . . . . . . . . . . . . 68
Figure 5.7 Block diagram of TCSC control. . . . . . . . . . . . . . . . . . . . . . 70
Figure 5.8 Bode plot of the TCSC reactance when XTCSC = = 2.2·XCT. . . . . . . 70
Figure 5.9 Dynamic response of the system with FSC and TCSC: (a) electric
torque (b) terminal voltage (c) DC-link voltage. . . . . . . . . . . . . . 72
Figure 6.1 RSC controllers . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 75
Figure 6.2 GSC controllers . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 75
Figure 6.3 SSR damping controller block diagram. . . . . . . . . . . . . . . . . . 76
Figure 6.4 Root locus diagram with ωr as ICS with SSRDC implemented in
GSC controller at point AGSC . . . . . . . . . . . . . . . . . . . . . . . 78
Figure 6.5 Root locus diagram with ωr as ICS with SSRDC implemented in
RSC controller at point FRSC. . . . . . . . . . . . . . . . . . . . . . . . 78
Figure 6.6 Root locus diagram with PL as ICS with SSRDC implemented in
RSC controller at point DRSC. . . . . . . . . . . . . . . . . . . . . . . . 79
Figure 6.7 Root locus diagram with PL as ICS with SSRDC implemented in
GSC controller at point DGSC. . . . . . . . . . . . . . . . . . . . . . . . 80
Figure 6.8 Root locus diagram with VC as ICS with SSRDC implemented in
RSC controller at point ERSC. . . . . . . . . . . . . . . . . . . . . . . . 82
Figure 6.9 Root locus diagram with VC as ICS with SSRDC implemented in
GSC controller at point AGSC . . . . . . . . . . . . . . . . . . . . . . . 82
Figure 6.10 Root locus diagram with VC as ICS with SSRDC implemented in
GSC controller at point BGSC. . . . . . . . . . . . . . . . . . . . . . . . 83
Figure 6.11 Root locus diagram with VC as ICS with SSRDC implemented in
GSC controller at point CGSC. . . . . . . . . . . . . . . . . . . . . . . . 83
xv
16. Figure 6.12 Root locus diagram with VC as ICS with SSRDC implemented in
GSC controller at point DGSC. . . . . . . . . . . . . . . . . . . . . . . . 84
Figure 6.13 Root locus diagram with VC as ICS with SSRDC implemented in
GSC controller at point EGSC. . . . . . . . . . . . . . . . . . . . . . . . 84
Figure 6.14 Root locus diagram with VC as ICS with SSRDC implemented in
GSC controller at point FGSC. . . . . . . . . . . . . . . . . . . . . . . . 85
Figure 6.15 Dynamic response of the transmission line real power PL when the
SSRDC is implemented at RSC . . . . . . . . . . . . . . . . . . . . . . 86
Figure 6.16 Dynamic response of the transmission line real power PL when the
SSRDC is implemented at GSC . . . . . . . . . . . . . . . . . . . . . . 87
Figure 6.17 Dynamic response of the DC link voltage when SSRDC is imple-
mented AGSC, BGSC, and CGSC. (a). Simulation time from t = 0.5 s
to t = 40 s. (b). Simulation time from t = 0.45 s to t = 1.5 s. . . . . . . 88
Figure 6.18 Dynamic response of the DC link voltage when SSRDC is imple-
mented at DGSC, EGSC, and FGSC. (a). Simulation time from t = 0.5
s to t = 40 s. (b). Simulation time from t = 0.45 s to t = 1.5 s. . . . . . 89
Figure 6.19 Dynamic response comparison when SSRDC is implemented at AGSC
and DGSC. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 89
Figure 6.20 Derivation of voltage across the series capacitor using qd-axis line
currents (Method A). . . . . . . . . . . . . . . . . . . . . . . . . . . . 90
Figure 6.21 Derivation of voltage across the series capacitor using instantaneous
line current (Method B). . . . . . . . . . . . . . . . . . . . . . . . . . . 91
Figure 6.22 Transmission line real power PL obtained with: direct measurement
of VC, method A, and method B. . . . . . . . . . . . . . . . . . . . . . 92
Figure 7.1 Generic block diagram of a gain-scheduled adaptive control. . . . . . . 99
Figure 7.2 Electric torque at Vω = 7 m/s and: (a) K = 55% (b) K = 60% (a) K
= 65%. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 100
Figure 7.3 Electric torque at Vω = 8 m/s and: (a) K = 55% (b) K = 60% (a) K
= 65%. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 100
xvi
17. Figure 7.4 Electric torque at Vω = 9 m/s and: (a) K = 55% (b) K = 60% (a) K
= 65%. K is series compensation level. . . . . . . . . . . . . . . . . . 101
Figure 7.5 Dynamic response of the system to series compensation change from
50% to 60% at constant wind speed, 7 m/s, when SSRDC is imple-
mented at DGSC. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 101
Figure 7.6 Dynamic response of the system with adaptive gain-scheduling SS-
RDC for Vω = 7 m/s and different compensation levels. . . . . . . . . . 103
Figure 7.7 B. Dynamic response of the system with adaptive-gain-scheduling
SSRDC for Vω = 8 m/s and different compensation levels. . . . . . . . 104
xvii
18. CHAPTER 1
INTRODUCTION
1.1 OVERVIEW AND LITERATURE REVIEW
Due to to the recent rapid penetration of wind power into the power systems [1] - [9],
some countries in central Europe, e.g. Germany, have run out of suitable sites for onshore
wind power projects, due to the high population density in these countries. Moreover, it
has been found that the offshore wind power resources are much larger than onshore wind
power sources [3]. Therefore, offshore wind farms have a great potential as large-scale
sustainable electric energy resources [10], [11]. Recently, doubly-fed induction generator
(DFIG) has gained significant attention of the electric power industry in offshore wind
farms and renewable energy sources [1], [11] - [15].
However, in offshore wind farms, the distance between the wind turbines and the shore
is much longer [15], [16] than that in onshore wind farms. Therefore, unlike the onshore
wind farms - where the voltage level of the wind farm is usually the same as the voltage
level of the distribution system - higher voltage levels with reliable and efficient transmis-
sion lines are required for the offshore wind farms to minimize the power losses [3], [10].
Currently, there are numerous large offshore wind farms operating throughout the world
[3], [10], [17]. Future projects in offshore wind farms will be larger in size and further away
from the shore [3]. This requires defining new concepts for the transmission system, in-
cluding transmission lines from the offshore wind farm to the shore and network integration
to the onshore power system. The transmission system options to transmit the wind power
to the shore are high-voltage AC (HVAC) [3] or high-voltage DC (HVDC) [18] - [21]. The
1
19. comparison of these two options has already been studied in literature [22]. The HVAC
solutions are viable for distances up to 250 km, and with series compensation, they may be
viable for distances longer than 250 km. [3].
In the deregulated power market, it is necessary to increase the power transfer capability
of existing transmission lines at the lowest cost [23]. Series compensation is considered
to be a more economical solution to increase the power transfer capability of an existing
transmission line compared to construction of new transmission lines [24] - [26] . Studies
shows that in order to increase the transmittable power of an existing transmission line, the
total cost of providing a capacitive series compensation to the transmission line is much
less than the cost to build a new transmission line. As an example, a study performed
by ABB reveals that increasing the power transfer capability of an existing transmission
line from 1300 MW to 2000 MW using series compensation is 90% less than the cost of
building a new transmission line [23].
However, a factor hindering the extensive use of series capacitive compensation is the
potential risk of sub- synchronous resonance (SSR) [26] - [33], which may cause severe
damage in the wind farm, if not prevented. The SSR in wind turbine generator systems
is a condition where the wind farm exchanges energy with the electric network, to which
it is connected, at one or more natural frequencies of the electric and mechanical part of
the combined system, comprising the wind farm and the network. The frequency of the
exchanged energy is below the fundamental frequency of the system. Three different types
of SSR in DFIG wind farms have been identified in the literature [34] - [40]:
• Induction Generator Effect (SSIGE)
• Torsional Interactions (SSTI)
• Control Interactions (SSCI)
In case of the SSIGE, the magnitude of the equivalent rotor resistance at the sub-synchronous
frequency can be negative, and if this negative resistance exceeds the sum of the resis-
2
20. tances of the armature and of the network, there will be an overall negative damping at the
sub-synchronous frequency, and consequently the sub-synchronous current would increase
with time [31], [34]. In SSTI, if the complement of the torsional natural frequency of the
drive-train shaft system of the DFIG wind turbine happens to be close to the electric nat-
ural frequency of the electric network, the sub-synchronous torque components generated
by the sub-synchronous induced armature voltage can be sustained [31], [34]. The nature
of the SSCI is different from SSIGE and SSTI, since in this type of SSR, the DFIG wind
turbine controllers play the main role in creating the SSCI; indeed, the SSCI may occur as
a results of interaction between the series compensated electrical network and the DFIG
wind turbine controllers [37] - [42].
Although the SSR analysis and damping in traditional power systems are well-known
and have been extensively studied in the literature [26] - [29], [43] this problem in series-
compensated wind farms requires more study and analysis. In particular, after the SSR
event that occurred in the Electric Reliability Council of Texas (ERCOT) in 2009 [37] -
[41], the wind power industry have become more interested in the SSR studies. In the
ERCOT SSR event, a faulted line and subsequent outage in the network caused the radially
connection of a large DFIG wind farm to the series compensation network, resulting in a
fast generation of sub-synchronous frequency oscillation leaving some damages to both the
series capacitor and the wind turbine [37] - [41].
Series FACTS devices have been studied in literature for SSR damping in fixed-speed
wind turbine generator systems [44] - [47]. In [44] - [46], the authors have investigated the
capability of the thyristor-controlled sereis capacitor (TCSC) in SSR damping in FSWTGS.
In [47], the static synchronous series compensator (SSSC) has been used in a series com-
pensated self-excited induction generator based wind farm for mitigating SSR and damping
power system oscillations.
Moreover, the application of shunt FACTS devices in SSR damping has been studied in
literature [46], [48] - [55]. In [48] - [52], a static synchronous compensator (STATCOM) is
3
21. presented to damp the SSR in a series compensated induction-generator (IG)-based wind
farm. In [46], [53], [54], a static var compensator (SVC) has been employed in FSWTGS to
mitigate the SSR. Moreover, reference [55] studies the SSR damping using co-ordination
of super conducting magnetic energy storage (SMES) and STATCOM.
Some methods that have been employed in literature for SSRD controller design can be
summarized as follows: Karaagac et al. [56] present a method for SSR damping in series
compensated wind farm by introducing an auxiliary SSR damping controller (SSRDC) in
the reactive power control loop of the DFIG controller and in the reactive power control
loop of the high voltage DC (HVDC) onshore modular multi-level converter of offshore
wind farms. In [56], both transmission line current and transmission line real power are
used as input control signals (ICS) to the SSRDC block, and the SSRDC block is com-
prised of a multi-stage lead-lag compensator. Trial-and-error method using time-domain
simulation is used to tune the multi-stage lead-lag compensator. Leon et al. [57] present
a damping control method to mitigate sub-synchronous interactions (SSI) in DFIG wind
farms. In that paper, the SSRDC is designed using a multi-input multi-output state-space
method, and the ICSs to the SSRDC block are d-q axis currents of the DFIG stator and
rotor windings.
Golshannavaz et al. [58] propose application of unified power flow controller (UPFC)
for SSR damping in self-excited induction generator (SEIG) based wind farms. In that
paper, two auxiliary SSRDCs are added to the UPFC controllers, one to the shunt inverter
control system and the other to the series inverter control system. Only one signal, that
is, rotor speed is used as ICS to the SSRDC. The SSRDCs are tuned using trial-and-error
approach. El-Moursi et al. [50] and Golshannavaz et al. [49] present damping control
algorithm for static synchronous compensator (STATCOM) to mitigate SSR in SEIG. In
[50] and [49], the rotor speed is used as ICS to the SSRDC block.
Faried et al. [33] study SSR damping in nearby turbine generators by addition of a
SSRDC to the controllers of the DFIG converters. For a steam turbine generator, located
4
22. close to a DFIG wind farm, with N multi-mass shaft sections, the SSRDC composed of
N channels, and the ICS for the ith channel is the rotor speed deviation of the ith shaft
section. In [33], the trial-and-error method is used to tune the SSRDC parameters in each
channel. Leon et al. in [59] study SSR mitigation in nearby turbine generators by addition
of a SSRDC to the converter controllers of a fully-rated fully rated converter wind turbines.
In [59], a multi-input multi-output (MIMO) approach is used to design the SSR damping
controller, and the inputs to the SSRDC block are the rotor speed deviations of different
sections of the steam turbine.
1.2 OBJECTIVES AND OUTLINE
This dissertation aims to study SSR damping in DFIG wind farms using three different
methods. The first method uses gate-controlled series capacitor (GCSC) for SSR damp-
ing. The GCSC, which consists of two anti-parallel GTOs connected in parallel with a
fixed capacitor for each phase, is a FACTS device recently proposed for controlling the
power flow in transmission lines [24], [60], [61]. In the GCSC, the gate-turn-off (GTO) or
other gate commutated switches, e.g. gate commutated thyristor (GCT), are used to pro-
vide variable impedance for the transmission lines [24]. Unlike thyristors, which are not
fully controllable switches, GTO’s can be turned on and off, making them more control-
lable switches compared to thyristors [24]. In many situations where a controllable series
compensator must be installed, the GCSC may be used instead of the TCSC, possibly with
some advantages. A comparison of the sizing of the TCSC and the GCSC components,
when both the GCSC and the TCSC have the same maximum capacitive impedance, shows
that the power rating of the GCSC capacitor is smaller than that of the TCSC, especially for
power-flow control applications. Moreover, the thyristor valve in the TCSC needs to have
a higher current rating than the gate-commutated switch valve in the GCSC. Finally, the
components of a GCSC designed for the same maximum compensation level of a TCSC
may have switches with a smaller rating and, naturally, a reactor is not needed. For this
5
23. reason, unlike the TCSC, the GCSC is free of intrinsic internal resonance [60].
The second method uses thyristor controlled series capacitor (TCSC) for SSR damping.
The TCSC, which consists of a thyristor-controlled reactor (TCR) in parallel with a fixed
capacitor for each phase, is a later member of the first generation of FACTS devices [24].
This device enables the transmission companies to transfer more power on the existing
transmission lines. For example, ABB manufactured the world’s first TCSC, installed at
Kayenta substation, Arizona in 1992. The TCSC increased the capacity of the transmission
line by about 30%. By the end of year 2004, seven TCSCs have been installed worldwide
[62]. TCSC introduces a number of important benefits in the application of series com-
pensation like elimination of sub-synchronous resonance (SSR) risks, damping of active
power oscillations, post-contingency stability improvement, and dynamic power flow con-
trol [63]. The TCSC may present the problem of an internal resonance, which must be
avoided. This internal resonance also limits TCSC’s operating area [24].
The third method uses DFIG back-to-back converters for SSR damping. Although the
TCSC and GCSC are more flexible compared to a fixed-series capacitor (FSC) and can
provide other benefits to the power network [24], they are a much more expensive solution
than fixed series capacitor [24]. Moreover, the DFIG converters have a configuration that
is similar to a STATCOM, a shunt FACTS device, whose SSR damping capability has been
proven in wind farms [48], [52]. Therefore, in order to use the advantages of FSC without
being concerned about the SSR, an auxiliary SSRDC is designed and implemented as part
of the DFIG converter controllers.
The SSR damping capability of each method is examined using eigenvalue analysis,
performed in MATLAB/Simulink, and time-domain simulations, performed in PSCAD /
EMTDC. An auxiliary SSRDC, if necessary, is designed for each method using residue-
based analysis and root-locus method. This dissertation is organized as follows.
Chapter 2 presents modal analysis of a DFIG-based series compensated wind farm
using Matlab/Simulink. The model of the system includes a wind turbine aerodynamics,
6
24. a sixth-order induction generator, a second-order two-mass shaft system, a fourth-order
series compensated transmission line, an eighth-order rotor-side converter (RSC) and grid-
side converter (GSC) controllers, and a first-order DC-link model.
Chapter 3 focuses mainly on the identification and definition of the main types of the
SSR that occur in DFIG wind farms, namely: (1) induction generator effect (SSIGE), (2)
torsional interactions (SSTI), and (3) control interactions (SSCI).
Chapter 4 presents application and control of the gate-controlled series capacitor (GCSC)
for series compensation and sub-synchronous resonance (SSR) damping in doubly-fed in-
duction generator (DFIG)-based wind farms. A SSRDC is designed for this device using
residue-based analysis and root locus diagrams. Using residue-based analysis, the optimal
input control signal (ICS) to the SSRDC is identified that can damp the SSR mode without
destabilizing other modes, and using root-locus analysis, the required gain for the SSRDC
is determined.
Chapter 5 presents application and control of the thyristor-controlled series capaci-
tor (TCSC) for series compensation and sub-synchronous resonance (SSR) damping in
doubly-fed induction generator (DFIG)-based wind farms. This chapter includes model-
ing of the TCSC for SSR analysis, control of TCSC, eigenvalue analysis of a DFIG based
wind farm interfaced with a TCSC, and time-domain simulations in PSCAD to support the
eigenvalue analysis.
Chapter 6 studies the capability of the rotor-side converter (RSC) and grid-side con-
verter (GSC) controllers of the DFIG in SSR damping. The objective is to design a simple
proportional SSRDC by properly choosing an optimum input control signal (ICS) to the
SSRDC block so that the SSR mode becomes stable without decreasing or destabilizing
the other system modes. Moreover, an optimum point within the RSC and GSC controllers
to insert the SSRDC is identified. Moreover, two methods are discussed, in this chapter, in
order to estimate the optimum ICS, without measuring it directly.
Chapter 7 a gain-scheduling adaptive SSRDC is designed so that the change of the
7
25. system dynamics with system operating point has less influence on the effectiveness of the
SSRDC.
Finally, Chapter 8 concludes the work and presents the future work.
8
26. CHAPTER 2
MODELING OF DFIG-BASED WIND TURBINE
This chapter presents a step-by-step modal analysis of a DFIG-based series compensated
wind farm using MATLAB/Simulink. The model of the system includes a wind turbine
aerodynamics, a sixth-order induction generator, a second-order two-mass shaft system,
a fourth-order series compensated transmission line, an eighth-order rotor-side converter
(RSC) and grid-side converter (GSC) controllers, and a first-order DC-link model.
2.1 POWER SYSTEM DESCRIPTION
The studied power system, shown in Figure. 2.1, is adapted from the IEEE first benchmark
model (FBM) for SSR studies [64]. In this system, a 100 MW DFIG-based offshore wind
farm is connected to the infinite bus via a 161 kV series compensated transmission line
[65]. The 100 MW wind farm is an aggregated model of 50 wind turbine units, where each
unit has a power rating of 2 MW. In fact, a 2 MW wind turbine is scaled up to represent
the 100 MW wind farm. This simplification is supported by several studies [66], [67]. The
systems data are given in the Appendix.
2.2 FUNDAMENTAL CONCEPTS: SMALL-SIGNAL STABILITY AND abc TO qd-FRAME
TRANSFORMATION
Small-Signal Stability
Small-signal stability is the ability of the power system to maintain stability when the
system is subjected to small disturbances [68]. The small-signal stability analysis of a
9
27. Figure 2.1: One line diagram of the studied power system. RL = transmission line re-
sistance, XL = transmission line reactance, XT = transformer reactance, Xsys = system
impedance, XC = fixed series capacitor, Xtg = transformer reactance in grid side converter
(GSC), Vs = generator’s terminal voltage, iL = line current, ig = GSC current, is = stator
current, ir = rotor current [64].
power system can provide power system designers with valuable information about the
inherent small-signal dynamic characteristics of the power system, which will help them in
the design process of the power system.
The behavior of any dynamic system, e.g., a power system, can be expressed by a set
of n first order nonlinear ordinary differential equations as follows [68]:
˙x = f(x,u) (2.1)
where x = [x1 x2 ...xn]T is called the state vector, and each elements, i.e. xi, are called the
state variable. Also, the column vector u = [u1 u2 ...ur]T is the input to the dynamic system.
We might also be interested in the output variables, which can be expressed in terms of
the state and the input variables as follows [68]:
y = g(x,u) (2.2)
where y = [y1 y2 ...ym]T is the vector of outputs, and g(x,u) is a vector of nonlinear func-
tions that relates the outputs to the inputs and the state variables.
10
28. Figure 2.2: Block diagram of the state-space representation.
If the disturbances to the system are considered sufficiently small, one can linearize the
differential equations 2.1 and 2.2 around the operating points and can express the system
dynamics in state-space form as follows:
∆˙x = A ∆x+B ∆u (2.3)
∆y = C ∆x+D ∆u (2.4)
where A is the state matrix of size n×n , B is the input matrix of size n×r , C is the output
matrix of size m × n and D is the feed-forward matrix of size m × r. The generic block
diagram of the state variables used in this paper is shown in Figure 2.2.
Transformation from abc to qd Frame
In this work, in order to make the calculations easier, three-phase abc variables are trans-
formed into qd variables using the following equation in matrix notation [69].
fe
qd0s = Ke
qd0s fe
abcs (2.5)
where
fe
qd0s
T
= [ fe
qs fe
ds fe
0s] (2.6)
11
29. Figure 2.3: Synchronously rotating qd frame with respect to the stator abc-frame.
fe
abcs
T
= [ fe
as fe
bs fe
cs] (2.7)
Ke
qd0s =
2
3
cosθ cos(θ−
2π
3
) cos(θ+
2π
3
)
sinθ sin(θ−
2π
3
) sin(θ+
2π
3
)
1
2
1
2
1
2
(2.8)
where fe denotes voltage, current, flux linkage, or electric charge, and θ =
dωe
dt
, where ωe
is the rotating synchronous frame frequency.
Figure 2.3 shows the qd-frame with respect to the stator abc-frame, where q-axis is
leading the d-axis. Note that in this work, the synchronously rotating reference frame has
been used, in which the reference frame rotates at the electrical angular velocity of the
air-gap rotating magnetic field generated by stator currents at the fundamental frequency,
i.e. ωe.
2.3 WIND-TURBINE AERODYNAMICS
The wind power can be calculated from the wind speed Vw as follows [70]:
12
30. Tω =
0.5ρπR2CPV2
w
ωm
(2.9)
where Tω is the wind power (N.m), Vω is the wind speed (m/s), ρ is the air density (kgm−3),
R is the rotor radius of the wind turbine (m), and ωm is the wind turbine shaft speed
(rad./s).
Also, CP is the power coefficient of the blade given by:
CP = 0.5(
RCf
λw
−0.022θ−2)e−0.225
RCf
λω (2.10)
where Cf is the wind turbine blade design constant, and θ is the wind speed pitch angle
(rad.)
Also, λω is the wind speed tip-speed ratio defined by:
λω =
ωmR
Vω
(2.11)
2.4 A BRIEF OVERVIEW OF DFIG CONVERTER CONTROL METHODS
In this section, a short overview of rotor-side converter (RSC) and grid-side converter
(GSC) controllers is presented.
RSC
Usually, the RSC is used to control the electric torque (or rotor speed) of the DFIG and the
power factor at the stator terminals [71]. Different control strategies of the RSC, including
vector control (VC) [72] - [74], direct torque control (DTC) [75] - [77], and direct power
control (DPC) [78] - [80] have been studied in literature.
In the VC method, the rotor currents are usually controlled using a rotating frame
aligned with the stator flux. The VC method controls the electric torque, which is pro-
portional to the q-axis rotor current, through q-axis channel of the rotor current. Moreover,
13
31. the reactive power in the machine can be controlled by tracking d-axis component of the
rotor current [72] - [74].
In the DTC method, the rotor flux linkage magnitude and the electric toque of the DFIG
are directly controlled. This direct control becomes feasible by proper selection of the
inverter switching in the rotor side. In order to implement this method, the flux and torque
feedbacks are needed, where the former is estimated using the rotor and stator current
vectors while the latter is estimated through the estimated rotor flux and the measured rotor
currents.
The DPC method is similar to the DTC, but it considers the effect of both the stator
and rotor fluxes upon the real and reactive power of the stator. Indeed, this method aims to
control directly the real and reactive power of the stator by applying appropriate machine
rotor vector voltage [77] - [80].
GSC
The main objective of the GSC is to regulate the DC-link voltage and to permit real power
flow through the converter. For the GSC, the VC method is usually adopted [81], where
the reference frame is aligned with the grid-voltage vector. Additionally, DPC method
has been implemented in literature to control the GSC, resulting in independent real and
reactive power flow in the converter [82].
Modeling of the DFIG Converter Controllers
Control loops for RSC and GSC presented in [83] - [85] are considered in this work. Both
RSC and GSC controllers are modeled. In order to achieve high efficiency in the DFIG
wind farm, the maximum power point tracking (MPPT) is used [83]. Figure 2.4 shows
the wind power versus wind turbine shaft speed in per unit for various wind speeds with
indication of MPPT curve. To enforce operation on the MPPT curve, for a given wind
speed Vω, the optimal reference power and optimal rotational speed are obtained. Note that
14
32. 0.5 0.75 1 1.25 1.5 1.75 2
0
0.5
1
1.5
¯Pω(p.u.)
¯ωm(p.u.)
Wind power (p.u.)
Vω
=10 m/s
Vω
= 6 m/s
Vω
= 12 m/s
Vω
= 7 m/s
Vω
= 11 m/s
Vω
= 9 m/s
Vω
= 8 m/s
Maximum Power Point
Tracking (MPPT) Curve
Wind Power
Curves ¯Pω
Figure 2.4: Wind power ¯Pm (p.u.), wind turbine shaft speed ¯ωm (p.u.), and wind speed Vω
(m/s) relationship.
(A) (B)
Figure 2.5: A. RSC controllers. B. GSC controllers.
due to power converters ratings, it may not be practical to always work on the MPPT cure.
In this case for a very low wind speeds, the DFIG operates at almost constant rotational
speed. On the other hand, when the wind speed increases so that it exceeds the turbine
torque rating, the DFIG will work in maximum constant torque [86].
The aim of the GSC and RSC are to enable the DFIG to work on the MPPT curve. Note
that the converters are assumed to store no energy so that their losses can be neglected, and
operate fast enough so that their dynamics can be neglected. Figure 2.5 show the block dia-
grams of the two controllers. In this paper, the RSC controller is responsible for regulating
the electric torque, Te, and stator reactive power, Qs. In steady state condition, neglecting
15
33. Figure 2.6: GSC regulators in Simulink.
Figure 2.7: Back-to-back converter between the DFIG and grid.
power losses, the wind torque, ¯Tω =
¯Pω
¯ωm
, is equal to electric torque, Te. Therefore, the ref-
erence torque, T∗
e , can be calculated based on the value of ¯T∗
ω determined by the MPPT
shown in Figure 2.4 [83] . The value of Q∗
s depends on the chosen reactive power control
method which could be either fixed reactive power or unity power factor [83]. In this paper,
the latter method is chosen.
Moreover, the GSC is responsible for controlling the DC-link voltage, VDC, and the
induction generator’s terminal voltage, Vs [83]. The GSC and RSC controllers add eight
state variables to the system, due to the eight PI controllers, and their state variables are
defined as a vector XRG. One loop of the RSC controllers implemented in Simulink is
represented in Figure 2.6. The other controllers have similar structure.
Modeling of the DC-Link
In this work, the DC link capacitor dynamics is considered. Figure 2.7 shows the back-to-
back converters between DFIG and grid which are separated by a DC-link. The dynamics
16
34. Figure 2.8: DC-link model in Matlab/Simulink.
of the DC-link can be expressed by a first order model as follows [87]:
−CvDC
dvDC
dt
= Pr +Pg (2.12)
where the rotor side converter’s (RSC) active power Pr, and the grid-side converter’s (GSC)
active power, Pg, are given as follows [69]:
Pr = 0.5 (vqr iqr +vdr idr) (2.13)
Pg = 0.5 (vqg iqg +vdg idg) (2.14)
Modeling of the DC-link in Matlab/Simulink is shown in 2.8. Notice that after adding
Pr and Pg, they are multiplied by the based power, Sbase, in order to obtain the power in
MW. This is necessary, as we have not considered per unit value for the DC-link, and all
values in this block are in actual physical values.
2.5 MODELING OF THE INDUCTION MACHINE
Using the information given in Section 2.2, the induction machine equations in abc-frame
are transformed into the synchronously rotating qd-frame. If the DFIG currents are selected
as the state variables, then the DFIG qd model in per unit will be as follows, where the input
variables are the DFIG voltages [69]:
17
35. ˙XIG = AIGXIG +BIGUIG (2.15)
where
XIG = [iqs ids i0s iqr idr i0r]T
(2.16)
UIG = [vqs vds v0s vqr vdr v0r]T
(2.17)
where iqs, ids, iqr, idr are the stator and rotor qd-axis currents (p.u.), vqs, vds, vqr, vdr are
the stator and rotor qd-axis voltages (p.u.), and i0s, i0r, v0s, v0r are the stator and rotor zero
sequence current and voltage components (p.u.), respectively.
The ADFIG and BDFIG matrices are defined as follows. We first define the matrices
given in Eq. 2.18 and Eq. 2.19.
F =
Rs
ωe
ωb
XSS 0 0 ωe
ωb
XM 0
−ωe
ωb
XSS Rs 0 −ωe
ωb
XM 0 0
0 0 Rs 0 0 0
0 (ωe−ωr)
ωb
XM 0 Rr 0 (ωe−ωr)
ωb
Xrr
−
(ωe−ωr)
ωb
XM 0 0 −
(ωe−ωr)
ωb
Xrr Rr 0
0 0 0 0 0 Rr
(2.18)
G =
Xss 0 0 XM 0 0
0 Xss 0 0 XM 0
0 0 Xls 0 0 0
XM 0 0 Xrr 0 0
0 XM 0 0 Xrr 0
0 0 0 0 0 Xlr
(2.19)
18
36. Figure 2.9: DFIG model in Matlab/Simulink.
Then:
ADFIG = −ωb ·G−1
·F (2.20)
BDFIG = ωb ·G−1
(2.21)
In Eq. 2.18 and 2.19: Xlr is the rotor leakage reactance (p.u.), Xls is the stator leakage
reactance (p.u.), XM is the magnetizing reactance (p.u.), Xss = Xls+XM (p.u.), Xrr equals
to Xlr+XM (p.u.), Rr is the rotor resistance (p.u.), Rs is the stator resistance (p.u.), ωb is
the base radian frequency (rad./s), ωr is the generator rotor speed (rad./s), and ωe is the
rotating synchronous frame frequency (rad./s).
Eq. 3.14 was implemented in Matlab/Simulink. The simulated system is given in
Figure 2.9. As seen in this figure, the inputs to the system are the DFIG qd-frame stator and
rotor voltages. Also, the state variables are the DFIG qd-frame stator and rotor currents, as
shown in Figure 2.9. Note that because we are considering a balanced system, the stator
and rotor zero-sequence voltage components, i.e. v0s and v0r, are set to zero. Also, note
that the input ωr to the system is the generator rotor speed in (rad./s), which is provided
by the shaft equations, which will be explained in the next subsection.
19
37. 2.6 MODELING OF SHAFT SYSTEM
The shaft of the wind turbine system can be represented by two-mass system. The first mass
represents the low-speed turbine and the second mass represents the high-speed generator,
and the two mass connections are modeled as spring and a damper. The motion equations
then can be expressed as 3 first order differential equations in per unit as follows [87]:
˙Xshaft = AshaftXshaft +BshaftUshaft (2.22)
where
Xshaft = [ ¯ωm ¯ωr Ttg]T
(2.23)
Ushaft = [ ¯Tω Te 0]T
(2.24)
The Ashaft and Bshaft matrices are defined as follows:
Ashaft =
(−Dt−Dtg)
2Ht
Dtg
2Ht
−1
2Ht
Dtg
2Hg
(−Dt−Dtg)
2Hg
−1
2Hg
Ktgωb −Ktgωb 0
(2.25)
Bshaft =
1
2Ht
0 0
0 1
2Hg
0
0 0 1
(2.26)
In the shaft equations, ¯ωm is the turbine shaft speed (p.u.), ¯ωr is the generator rotor
speed (p.u.), ¯Tω is the wind torque (p.u.), Dg and Dt are damping coefficient of generator
and turbine (p.u.), Dtg is the damping coefficient between the two masses (p.u.), Ktg is the
inertia constant of turbine and generator (p.u/rad.), and Hg and Ht are the inertia constants
of generator and turbine (s).
20
38. Figure 2.10: The shaft system model in Matlab/Simulink.
In shaft equations, the state variables are wind turbine speed ωt, generator rotor speed
ωr, and internal torque of the two-mass system Ttg. Also, the inputs to the two-mass model
are wind torque Tω and electric torque Te. The optimal value of the wind torque for any
given wind speed can be obtained using the MPPT curve shown in 2.4. Also, the value of
the electric torque can be calculated using the following equation [69]:
Te = 0.5 XM (iqs idr −ids iqr) (2.27)
Figure 2.10. represents the modeling of the shaft system in Matlab/Simulink. As seen
in this figure, the DFIG stator currents, i.e. iqs, ids, and rotor currents, i.e. iqr, idr, are
applied to the Matlab Function (fcn), Te, to calculate electric torque using Eq. 2.27. Then
Eq. 3.17 is implemented in fcn block Ashaft and Bshaft to create the shaft model. Also,
using this system, the state variable ωr is provided to the DFIG model, as seen in Figure
2.9 and 2.10.
2.7 MODELING OF TRANSMISSION LINE
The transformation explained in Section 2.2 is used to convert the transmission line equa-
tions from abc-frame to qd-frame. Considering the line current and voltage across the ca-
pacitor as the state variables, the transmission line equations in qd-frame can be expressed
in the matrix form as follows [69]:
21
39. ˙XTline = ATlineXTline +BTlineUTline (2.28)
where
XTline = [iql idl vqc vdc]T
(2.29)
UTline = [
(vqs −EBq)
XL
(vds −EBd)
XL
0 0]T
(2.30)
The ATline and BTline matrices are defined as follows:
ATline =
−RL
XL
− ¯ωe
−1
XL
0
¯ωe
−RL
XL
0 −1
XL
XC 0 − ¯ωe 0
0 XC ¯ωe 0
(2.31)
BTline =
ωb 0 0 0
0 ωb 0 0
0 0 1 0
0 0 0 1
(2.32)
where iql and idl are the transmission line qd-axis currents (p.u.), vqc and vdc are the series
capacitor’s qd-axis voltages (p.u.), RL is the transmission line resistance (p.u.), XL is the
transmission line reactance (p.u.), XC is the fixed series capacitor (p.u.), EBq and EBd are
the infinite bus qd-axis voltages (p.u.), and ¯ωe is the rotating synchronous frame frequency
(p.u.)
Since we are dealing with a three-phase balanced system, the zero sequence compo-
nents can be neglected. Whereupon, it can be observed from these equations that the state
22
40. Figure 2.11: Transmission line model in Matlab/Simulink.
variables in the transmission line system are ilq, ild, vcq, and vcd. The Simulink model of
the transmission line in a synchronously rotating qd-frame is shown in Figure 2.11.
2.8 INTEGRATING THE MODELS
So far dynamic equations of the whole system shown in Figure 2.1 have been presented.
However, more algebraic equations are needed for integration of each element, which will
be explained in this section. By applying KCL at the common point of the stator, GSC, and
transmission line (see Figure 2.7), the first equation can be obtained as follows:
Ig = Is +Iline (2.33)
This equation gives:
iqg = iqs +iql and idg = ids +idl (2.34)
In this work, the transformer in GSC-side of the generator is considered lossless, and
its dynamics is neglected. Considering this, the second equation can be derived by apply-
ing a KVL starting from GSC and ending to the common point of the stator, GSC, and
transmission line (see Figure 2.7) as follows:
23
41. Figure 2.12: RSC and GSC controllers, DC-link, and algebraic equations in Mat-
lab/Simulink.
Vg −Vs = jXtg Ig (2.35)
Performing some algebraic manipulations in this equation will result in:
vqs = vqg −Xtg idg vds = vdg +Xtg iqg (2.36)
Figure 2.12 shows the GSC and RSC controllers and DC-link model in Matlab/Simulink.
Also, the mentioned algebraic equations are implemented in “Converter currents” block
and “Algebraic equations” fcn , as it can be observed in Figure 2.12.
Considering the modeling of the system shown in Figure 2.1 given in this section, the
entire DFIG system is a 22nd order and can be expressed as:
˙X = f(X,U,t) (2.37)
24
42. where
X = [XT
IG XT
shaft XT
Tline vdc XT
RG]T
(2.38)
Here, the modeling of the entire system is completed, and the individual models ex-
plained above are integrated, and the entire system is named and saved in the computer as
“DFIG” to compose a DFIG-based wind farm connected to a series compensated transmis-
sion line. Out of 22 state variables, 3 state variables are related to the shaft system, 6 state
variables belong to the DFIG model, 4 state variables are related to the transmission line, 1
state variable is for the DC-link, and 8 state variables model the RSC and GSC controllers.
2.9 CALCULATION OF THE SYSTEM EIGENVALUES
Matlab/Simulink can estimate the state-space matrices A, B, C, and D in a linearized ap-
proximation using small perturbations in the states and inputs to numerically calculate the
partial derivatives [88]. For the developed model in Matlab/Simulink, after providing the
initial values of each state, the eigenvalues of the system are obtained using the following
commands in Matlab:
<< A B C D = linmod (′
DFIG′
); Eigenvalues = eig(A); (2.39)
2.10 SUMMARY
This chapter has presented a step-by-step comprehensive approach on modal analysis of
a series compensated DFIG-based wind farm in Matlab/Simulink. A 6th order model has
been used for the DFIG including stator and rotor dynamics, and a 3rd, 4th, and 1st order
models have been applied for the drive train two-mass model of the shaft system, series
compensated transmission line, and the DC-link, respectively. Also, the dynamics of the
both grid-side converter (GSC) and rotor-side converter (RSC) controllers have been con-
sidered, which adds 8 more orders to the system. The presented models have been sup-
25
43. ported by the corresponding Simulink blocks in order to help the readers to better under-
stand the modeling process, which provides a useful understanding of the grid-connected
series compensated DFIG wind farm’s inherent dynamics.
26
44. CHAPTER 3
SERIES COMPENSATION AND SSR ANALYSIS IN
DFIG-BASED WIND FARMS: DEFINITIONS AND PROBLEM
IDENTIFICATION
This chapter focuses mainly on the identification and definition of the main types of the
SSR that occur in DFIG wind farms, namely: (1) induction generator effect (SSIGE or
simply SSR in this work), (2) torsional interactions (SSTI), and (3) control interactions
(SSCI). Regarding the SSIGE, first a simple definition of the SSIGE is given; then, using
eigenvalue analysis and time-domain simulations, it is shown that the DFIG wind farm can
be highly unstable due to the SSIGE; finally, the impact of wind speed and compensation
level variations on the SSIGE is explained. Regarding the SSTI, first a descriptive definition
is given; then, the real world possibility of the SSTI in DFIG wind farm is studied; finally,
the impact of the stiffness coefficient and compensation level variations on this type of SSR
is investigated. Regarding the SSCI, since it may be confused with the SSIGE, a simple
definition of the SSCI and its mechanism in DFIG wind farm are presented.
3.1 SERIES COMPENSATION BASICS
In order to briefly explain this phenomenon, a simple lossless two-machine system, where
the sending point and receiving points voltages are assumed to have the same magnitude,
is considered as shown in Figure 3.1. (A). In this figure, the effective transmission line
impedance considering the series capacitor is obtained as follows:
27
45. 0 45 90 135 180 225
0
1
2
3
4
RealPower(p.u.)
δ (deg.)
Pmax
= 1 p.u.
(QC
, K = 0.6)
(P, K= 0.6)
(P, K= 0.3)
(P, K= 0.0) (QC
, K= 0.0)
(QC
, K = 0.3)
(A) (B)
Figure 3.1: (A) A simple lossless series compensated two-machine system. (B) Variation
of transmission real power of line and injected reactive power by series capacitor versus
angle δ, for different values of compensation levels.
XLef f = XL −XC (3.1)
The series compensation level (or also called the degree of series compensation) K is
defined as:
K =
XC
XL
0 ≤ K < 1 or 0% ≤ K < 100% (3.2)
Substitution of Eq. 3.2 in Eq. 3.1 will result in:
XLef f = (1−K)XL (3.3)
If we assume in Figure 3.1. (A) that Vsend = Vres = V, then the line current and real
power are derived as follows [24]:
IL =
2V
(1−K)XL
sin
δ
2
(3.4)
P =
Pmax
(1−K)
sinδ (3.5)
28
46. where Pmax is defined as:
Pmax =
V2
XL
(3.6)
Additionally, the injected reactive power to the line by the series capacitor can be de-
rived as [24]:
QC = 2Pmax
K
(1−K)2
(1−cosδ) (3.7)
Figure 3.1. (B) represents the real power P and the reactive power QC versus δ, for dif-
ferent values of series compensation levels. In this figure, it is assumed that Pmax is equal
to 1 p.u.. It can be observed that the transmissible real power of the line P increases, as
it is expected from Eq. 3.5, when the series compensation level K increases. Likewise,
the injected reactive power by the series capacitor QC increases, when K increases. There-
fore, the basic idea about series compensation is to cancel out a portion of the inductive
impedance of a transmission line using the capacitive impedance of the series capacitor.
This reduces the total inductive reactance of the transmission line, as if the line has been
physically shortened.
3.2 INDUCTION GENERATOR EFFECT (SSIGE)
The general expression of the stator current in a series compensated WTGS can be defined
as [89]:
iL(t) = Asin(ωst +φ1)+Be−αt
sin(ωnt +φ2) (3.8)
where ωs the electric fundamental frequency and ωn is the natural frequency of the electric
network, and it can be obtained as [89]:
ωn
2π
= fn = fs
KXe
∑X
(3.9)
29
47. Figure 3.2: Equivalent circuit of the system under sub-synchronous and super-synchronous
frequencies.
where K = XC
Xe
is the compensation level, Xe = XL+XT (p.u.), ∑X is the entire inductive
reactance seen from the infinite bus (p.u.), fn is the natural frequency of the electric system
(Hz), and fs is the frequency of the system (Hz).
Figure 3.2 shows the equivalent circuit of the DFIG wind turbine under sub-and-super-
synchronous frequencies. This figure also shows the status of the positive and negative
components of the electric natural frequency with regard to the electrical frequency corre-
sponding to the rotating speed. At sub-synchronous and super synchronous frequencies,
the slip is given by S1 and S2, respectively, as follows:
S1 =
fn − fm
fn
, S2 =
fn + fm
fn
(3.10)
The super-synchronous slip, i.e. S2 in Eq. 3.10, is always a positive value, and con-
sequently, Rr
S2
in Figure 3.2 is a positive value. Thus, the DFIG wind farm is stable at this
frequency. On the other hand, the sub-synchronous slip, i.e. S1 in Eq. 3.10, is a negative
number since the electric natural frequency, fn, is less than the electric frequency corre-
sponding to the rotating speed, fm. If the magnitude of the equivalent rotor resistance, i.e.
Rr
S < 0, exceeds the sum of the resistances of the armature and the network, there will be a
30
48. negative resistance at the sub-synchronous frequency, and the sub-synchronous current will
increase with time. This phenomenon is called Induction Generator Effect (IGE), which
only involves rotor electrical dynamics [64], and is termed as SSIGE in this work.
SSIGE Modes and Participation Factors
Participation factor is a measure of the relative participation of jth state variable in the ith
mode of the system. The magnitude of the normalized participation factors for an eigen-
value, λi, is defined as [68]:
Pji =
|Ψji||Φi j|
n
∑
k=1
|Ψjk||Φk j|
(3.11)
where Pji is the participation factor, n is the number of modes or state variables, and Ψ and
Φ are right and left eigenvectors, respectively.
Table 3.1 and 3.2 show the eigenvalues and participation factors of the system when the
wind speed is 7 m/s and the compensation level is 75%. In these tables, larger participation
factors in each column are bolded. By looking at these tables, one can readily find the
participation of each state variable in system modes. For example, based on Table 3.1
and using participation factors related to λ9,10, one can see that this mode is associated
primarily to the iqs, idr, and DC link voltage, vDC. Also, using Table 3.1 it can be observed
that ¯ωm and rotor-side converter PI-D have a high participation in mode λ11,12. In 3.2,
λ13 to λ22 are non-oscillatory and stable modes, and one can easily find the participation
of each state variables on these modes by looking at this table. These modes will not be
further discussed.
Identification of System Modes
In this section, the nature of modes λ1,2, λ3,4, λ5,6, λ7,8 is identified.
31
51. Identification of SSR and SupSR Modes
Table 3.1 shows that modes λ1,2 and λ3,4 are primarily associated with iqs, ids, iqr, and idr.
With the frequency of 20.9947 Hz (or 131.913 rad./s) and λ3,4 with the frequency of 98.23
Hz (or 617.197 rad./s) are the SSR and super-synchronous (SupSR) modes (Mode 1 and
Mode 2), respectively. This can be verified using Eq. 3.9, where fn is calculated to be
around 39 Hz. Given the synchronously rotating reference frame, the complementary the
SSR and SupSR frequencies are fs − fn = 21 Hz and fs + fn = 99 Hz, which matches the
frequency of λ1,2 and λ3,4. Table 3.1 also shows that the SSR mode at 75% compensation
and 7 m/s wind speed is unstable as the real part of this mode is positive, while the SupSR
mode is stable.
Identification of Electromechanical Mode
In order to identify the nature of this mode, Table 3.3 shows this mode for different wind
speeds and series compensation levels. In this table, the optimum shaft turbine speed and
corresponding frequency related to each wind speed is also given using MPPT plot shown
in Figure 2.4. It is seen that the frequency of this mode is changed with the change of the
wind speed, while changing the compensation level has slight impact on this mode. It can
be observed that the frequency of this mode is the complimentary of the frequency of shaft
turbine speed. For example, for the wind speed equal to 7 m/s and compensation level equal
to 75 %, the frequency of this mode is 99.97 rad./s or 15.9 Hz, and its complementary
is calculated to be 44.1 Hz (60 − 15.9 = 44.1 Hz). This frequency coincides with the
frequency of the shaft turbine, i.e. 45 Hz. This can also be applied to other wind speeds;
thus, this mode is related to wind speed change, and therefore, mechanical dynamics. Also,
using Table 3.1, it is observed that λ5,6 is mostly associated with iqs and ids, iqr, and idr.
Therefore, this mode is related to both mechanical and electrical dynamics and is called
electromechanical mode (Mode 3).
34
52. Table 3.3: λ5,6 at different wind speeds and compensation levels.
7 m/s
(0.75 p.u./45 Hz)
8 m/s
(0.85 p.u./51 Hz)
9 m/s
(0.95 p.u./57 Hz)
75% -9.911 ± j99.969 -4.909 ± j62.445 -1.889 ± j28.791
80% -12.767 ± j99.942 -5.498 ± j62.995 -2.123 ± j29.335
90% -18.475 ± j95.501 -7.330 ± j64.531 -2.704 ± j30.553
Identification of Shaft Mode
From Table 3.1, it is observed that the generator rotor speed ¯ωr and the mechanical torque
between two masses, Ttg, have the highest participation in λ7,8. Therefore, λ7,8 is related
to the shaft mode (Mode 4). The shaft mode has low-frequency, about 0.954 Hz (or 5.999
rad./s), and this mode at the present operating condition is stable. This mode might be
unstable if the series compensation level becomes too high, which will cause SSTI.
Calculation of the SSIGE Mode for Different Operating Points of the
DFIG
Table 3.4 shows the eigenvalues of the sub-synchronous resonance (SSR) and super - syn-
chronous resonance (SupSR) modes of the system shown in Figure 2.1 for different series
compensation levels and wind speeds. As seen in this table, the SSR and SupSR modes are
a function of these two variables: (1) the wind speed Vω and (2) the compensation level K.
On the one hand, at a constant wind speed, when the compensation level increases, the sta-
bility of the SSR mode decreases while the stability of the SupSR mode slightly increases.
Table 3.4 shows that the SSR mode is unstable for Vω = 7 m/s and K = 55%, K = 60%, and
K = 65%.
On the other hand, at a constant series compensation level, when the wind speed in-
creases, the stability of both the SSR and SupSR modes increases. Based on Table 3.4, for
K = 65% and Vω = 7 m/s the SSR mode is highly unstable, but when Vω increases, while
K is kept constant, the stability of the SSR mode increases. For example, for K = 65% and
35
53. Table 3.4: The SSR and SupSR modes of the system at different wind speeds Vω and
compensation levels K.
Vω (m/s)-K (%) SSR Mode SupSR Mode
7 - 50 -1.8784 ± j140.7799 -5.1561 ± j608.9960
7 - 55 +1.2126 ± j128.5545 -5.2253 ± j620.39633
7 - 60 +5.9289 ± j118.8507 -5.2812 ± j631.2477
7 - 65 +9.6991 ± j112.3237 -5.3158 ± j641.5941
8 - 55 -3.7739 ± j128.5441 -5.9986 ± j622.5840
8 - 60 -2.3818 ± j116.5455 -6.1252 ± j633.4910
8 - 65 -0.4696 ± j104.8237 -6.1877 ± j643.7831
9 - 55 -6.8362 ± j122.7589 -6.8150 ± j623.2366
9 - 60 -5.5889 ± 115.9793 -7.0351 ± j637.6388
9 - 65 -3.7165 ± j105.3277 -7.1718 ± j646.5196
Vω = 8 m/s & 9 m/s, the SSR mode is stable.
Impact of Compensation Level Variations on the Stability of the
SSIGE
As mentioned in Section 3.2, the stability of SSIGE depends on both wind speed and com-
pensation level. This section describes why increasing the compensation level decreases
the stability of the SSR mode. In order to explain this fact, a specific example- where wind
speed is kept constant at Vω = 7 m/s, while the compensation level changes- is used. Using
MPPT curve shown in Figure 2.4, the electrical frequency corresponding to Vω = 7 m/s is
45 Hz. Note that, the value of the rotor resistance of the DFIG used in this work is Rr =
0.00549 p.u., as it can be found in the Appendix.
Table 3.5 shows the rotor resistances under sub-and-super-synchronous frequencies for
the aforementioned case. Note that if Table 3.4 is used to calculate fn, since the models
are built in a d − q synchronous reference frame, the computed frequencies of the SSR
and SupSR modes, given in Table 3.4, are fs − fn and fs + fn, respectively. From Table
3.5, it can be easily observed that by increasing the compensation level, larger negative
resistances are provided to the network, which decreases the stability of the SSR mode.
36
54. Table 3.5: Rotor resistance under SSR and SupSR frequencies when the wind speed is kept
constant at Vω = 7 m/s (45 Hz) and the compensation level changes.
K (%) fn Hz
Rr
S1
Rr
S2
50% 37.59 -0.0278 0.00249
55% 39.54 -0.0397 0.00256
60 % 41.08 -0.0576 0.00262
65% 42.12 -0.0803 0.00265
The reason is that at a constant wind speed, or constant fm, increasing the compensation
level increases the electric natural frequency of the system. Therefore, the absolute value
of the DFIG slip S1 under SSR frequency given in Eq. 3.10 decreases, providing more
negative rotor resistance
Rr
S1
to the system. This decreases the stability of the SSR mode.
Impact of Wind Speed Variations on the Stability of SSIGE
In order to explain the impact of wind speed variations on the stability of the SSR and
SupSR modes, a specific example - where the compensation level is kept constant at K =
65% while the wind speed changes - is used. Using the MPPT curve shown in Figure 2.4,
the electrical frequencies corresponding to different wind speeds are obtained. Table 3.6
shows the rotor resistances under sub-and-super-synchronous frequencies for this example.
As it can be observed from this table, by increasing the wind speed, the SSR mode becomes
more stable. The reason is that by increasing the wind speed - which, in other words,
is equivalent to increasing the electrical frequency corresponding to wind speed fm - the
absolute value of the DFIG slip S1 increases, providing less negative rotor resistance
Rr
S1
to
the system. This increases the stability of the SSR mode.
Time-Domain Simulation in PSCAD/EMTDC
In order to confirm the eigenvalue analysis provided in Table 3.4, time domain simulations
in PSCAD/EMTDC are performed. Figures 3.3 through 3.5 show the IG terminal voltage
37
55. Table 3.6: Rotor resistance under SSR and SupSR frequencies when compensation level is
kept constant at K = 65% (fn = 42.12 Hz) and wind speed changes.
Vω (m/s) fm Hz
Rr
S1
Rr
S2
7 45 -0.0803 0.0026
8 51 -0.0260 0.0024
9 57 -0.0155 0.0023
0.4 0.5 0.75 1 1.25 1.5
0.98
0.99
1.0
1.01
V
s
(p.u.)
(a): Vω
= 7 m/s, K = 55%
0.4 0.5 0.75 1 1.25 1.5
0
1
2
2.5
V
s
(p.u.)
(b): Vω
= 7 m/s, K= 60%
0.4 0.5 0.75 1 1.25 1.5
0
1
2
3
V
s
(p.u.)
(c): Vω
= 7 m/s, K = 65%
Time (s)
Figure 3.3: Terminal voltage when Vω = 7 m/s and (a) K = 55% (b) K = 60% (c) K =
65% .
Vs for different wind speeds and compensation levels. Note that in the given simulation
results, the system is first started with a lower series compensation level at which the wind
farm is stable, i.e. K = 50%, and then at t = 0.5 s, the compensation level is increased.
The following conclusions can be drawn from the simulation results:
1. At lower wind seed, e.g. Vω = 7 m/s, when K increases, the stability of the SSR
mode decreases, as seen in Figure 3.3.
2. The frequency of the oscillations using Figures 3.3 - (a) - through - (c) are obtained
about 20 Hz, 18.18 Hz, and 17.85 Hz for K = 55%, K = 60% and K = 65%,
respectively. These frequencies validate the frequencies obtained using eigenvalue
analysis for these cases given in Table 3.4.
38
56. 0.5 1.5 2.5 3.5 4.5 5.5
0.98
0.99
1.00
1.01
V
s
(p.u.)
(a): Vω
= 8 m/s, K = 55%
0.5 1.5 2.5 3.5 4.5 5.5
0.98
1.00
1.02
V
s
(p.u.)
(b): V
ω
= 8 m/s, K= 60%
0.5 1.5 2.5 3.5 4.5 5.5
0.94
0.96
0.98
1.00
1.02
V
s
(p.u.)
(c): V
ω
= 8 m/s, K = 65%
Time (s)
Figure 3.4: Terminal voltage when Vω = 8 m/s and (a) K = 55% (b) K = 60% (c) K =
65% .
0.5 1.5 2.5 3.5 4.5 5.5
0.98
0.99
1.00
1.01
V
s
(p.u.)
(a): V
ω
= 9 m/s, K = 55%
0.5 1.5 2.5 3.5 4.5 5.5
0.96
0.98
1.00
1.02
V
s
(p.u.)
(b): Vω
= 9 m/s, K= 60%
0.5 1.5 2.5 3.5 4.5 5.5
0.94
0.96
0.98
1.00
1.02
V
s
(p.u.)
(c): Vω
= 9 m/s, K = 65%
Time (s)
Figure 3.5: Terminal voltage when Vω = 9 m/s and (a) K = 55% (b) K = 60% (c) K =
65% .
3. From Figures 3.4 and 3.5, it is observed that increasing the wind speed stabilizes
the SSR mode, as expected from Table 3.6. Additionally, these figures show that at
a constant wind speed, increasing the compensation level, decreases the stability of
the SSIGE mode, as discussed in reference to Table 3.5.
39
57. Figure 3.6: Structure of a typical drive-train model. Ti,i+1 = The torque applied to the ith
mass from (i + 1)th mass, Ti = external torque applied to ith mass, δi = torsional angle of
the ith mass, Hi inertia constant of the ith mass, Di = damping coefficient of the ith mass,
Ki,i−1 = stiffness coefficient between ith and (i−1)th masses.
3.3 TORSIONAL INTERACTIONS (SSTI)
In order to analyze the SSTI, it is better first to define the torsional frequencies of a DFIG
wind turbine drive-train model. A common way is to represent the rotor as a number of
discrete masses connected together by springs defined by damping and stiffness coefficient.
Figure 3.6 shows the structure of a typical WTGS drive-train model. The equation of the
ith mass motion can be expressed as [90]:
2Hi
d∆ωi
dt
= Ti +Ti,i+1 −Ti,i−1 −Di
dδi
dt
(3.12)
where
Ti, j = Ki, j ·(δj −δi) (3.13)
dδi
dt
= ωi −ωr = ∆ωi (3.14)
If N discrete masses are considered, using Eqs. 3.12 through 3.14, a set of 2N differen-
tial equations can be obtained, which in a state-space description take the following form
[90]:
˙X = AX +BU (3.15)
40
58. where X and U are the state variables vector and the input torque vector, respectively.
Using the state matrix A, the eigenvalues of the drive-train system are a set of complex-
conjugate pairs of the form [90]:
λi,i+1 = −ζiωni ± jωni 1−ζ2
i (3.16)
where ζi and ωni are the damping ratio and undamped natural frequency of the ith mass.
As a general case, a rotor with N masses has N modes, where N − 1 modes represent
the torsional modes of oscillation, and one remaining mode represents the oscillation of the
entire rotor against the power system.
Using Eq. 3.16, the torsional natural frequency of the ith mass can be obtained as [90]:
fmi =
ωni 1−ζ2
i
2π
(3.17)
If generator rotor oscillates at a torsional natural frequency, fmi, this phenomenon in-
duces armature voltage component in the generator at frequencies given by [91]:
femi = fs ± fmi (3.18)
If femi is close to fn, which is the electric natural frequency due to series compensation
and is given by Eq. 3.9, the sub-synchronous torques generated by this sub-synchronous
induced armature voltage can be sustained. This energy exchange between the electric part
of the DFIG wind farm and its mechanical part is called Torsional Interaction, and it is
termed as SSTI in this work.
Does SSTI Occur in Wind Farms?
In this section, we answer to the question: “Does SSTI occur in wind farms?”. The fre-
quency of shaft torsional modes is a strong function of the shaft stiffness coefficient, i.e.
Ki, j in Figure 3.6. The values of Ki, j in wind turbines are much smaller compared to
41
59. the values found in steam, hydro, and diesel turbines. The typical value of Ki, j reported
in the literature is much less than 10 p.u. Torque/rad. [90], while the values of Ki, j for
the different sections of a typical steam turbine reported in [64] are in the range 19 - 70
p.u. Torque/rad..
The low shaft stiffness coefficient in wind turbine drive-train leads to low torsional
natural frequencies, which are in the range of 1-5 Hz. Therefore, based on the definition
given for SSTI, in order to cause the SSTI in a wind farm, the electric natural frequency
of the network should be in the range of 55-59 Hz. In order to obtain such a large electric
natural frequency in the network, a very high series compensation level is needed, while
in practice, the series compensation is normally not larger than 70% - 75% for reasons
such as load balancing with parallel paths, high fault current, and the possible difficulties
of power flow control [24]. Hence, the SSTI may not be a concern in WTGS. However, for
the sake of completeness of the current work, the impact of shaft stiffness coefficients Ki, j
and series compensation level K on the SSTI mode is studied.
Impact of Shaft Stiffness Coefficients Variations on the Stability of
SSTI
The studied WTGS shown in Figure 2.1 is composed of two masses, the generator and the
turbine, and the stiffness coefficient between the turbine and the generator is called Kt,g.
Also, the value of the stiffness coefficient in the studied system in this paper is Kt,g = 0.15
p.u. Torque/rad.. With this Kt,g, for Vω = 9 m/s and K = 55%, the shaft torsional mode is
calculated as λTorsional = −3.2396 ± j4.6767, and this mode is stable. Using λTorsional, the
torsional natural frequency is calculated to be less than 1 Hz. Therefore, in order to cause
the SSTI in the system with the current Kt,g, fn has to be about 59 Hz, which requires a
very large compensation level.
Figure 3.7 shows the SSR and torsional modes as a function of the stiffness coefficient,
Kt,g, when Vω = 9 m/s and K = 55%. As seen in this figure, by increasing Kt,g, as soon as
42
60. 1 5 10 20 30 40 50 60
1
10
20
25
Imaginarypart(Hz)
(a)
SSR Mode
Torsional Mode
10 20 30 40 50 55 60
−10
−5
0
5
Realpart
(b)
The stiffness coefficient, K
t,g
(Torque p.u./rad.)
SSR Mode
Torsional Mode
Figure 3.7: SSR and torsional modes versus the stiffness coefficient, Kt,g, when Vω = 9
m/s and K = 55% : (a) Imaginary part (Hz) (b) Real part.
the frequency of the torsional mode becomes close to the frequency of the SSR mode, the
torsional mode becomes unstable.
Impact of Series Compensation Level Variations on the Stability of
SSTI
In order to cause the SSTI in the wind farm, the value of Kt,g is increased from 0.15 to
50 p.u. Torque/rad.. Figure 3.8 shows the SSR and torsional modes as a function of
compensation level when Vω = 9 m/s. As seen in Figure 3.8 as long as the torsional natural
frequency is not close to the SSR mode, the shaft mode is stable. Once the frequency of
these modes become close to each other, the shaft mode becomes unstable
Time-Domain Simulation of SSTI in PSCAD/EMTDC
In order to show the SSTI in the WTGS, time-domain simulations in PSCAD/EMTDC are
performed. Figure 3.9 shows the system response including the torsional torque between
masses I&II Tt,g, wind turbine speed ωt, the electric torque Te, and IG terminal voltage Vs,
when Vω = 9 m/s and K changes. Note that in the given simulation results, the system is
43
61. 10 20 30 40 50 55 60
18
30
40
50
Imaginarypart(Hz)
(a)
SSR Mode
Torsional Mode
10 20 30 40 50 55 60
−10
−5
0
5
Realpart
(b)
Series compensation level (%)
SSR Mode
Torsional Mode
Figure 3.8: SSR and torsional modes versus series compensation level, K, when Vω = 9
m/s: (a) Imaginary part (Hz) (b) Real part.
first started with a lower series compensation level, K = 20%, and then at t = 2.5 s and t =
8 s, the compensation level is increased to K = 50% and K = 55%, respectively. In these
simulations, Kt,g = 50 p.u. Torque/rad.. The following conclusions can be drawn from
the simulation results:
1. The wind farm is stable at lower compensation levels, i.e. when K = 20% and K =
50%, as expected from Figure 3.8. However, when the compensation level increases
to 55%, the SSTI occurs in the WTGS, and the wind farm goes unstable due to the
unstable torsional mode.
2. Even when the torsional mode is stable at lower compensation levels, i.e. when K =
20% and K = 50%, the SST-TI is very lightly damped. This is due to the fact that the
damping ratio of the torsional mode is very small even at these compensation levels,
i.e. 0.5% and 0.14% for K = 20% and K = 50%, respectively.
3. Therefore, in some cases, depending on system parameters, the torsional interaction
mode may have a low damping ratio and an SSR damping controller may be desir-
able.
44
62. 0 2 4 6 8 10
−0.5
0
1
2
2.5
T
t,g
(p.u.)
(a)
0 2 4 6 8 10
0.940
0.945
0.950
0.955
ω
t
(b)
0 2 4 6 8 10
−1.5
−1
−0.5
T
e
(p.u.)
(c)
0 2 4 6 8 10
0.9
0.95
1.00
1.05
V
s
(p.u.)
(d)
Time (s)
Figure 3.9: The SSTI when Vω = 9 m/s and compensation level changes at different times:
(a) Ttg (p.u.) (b) ωt (p.u.) (c) Te (p.u.) (d) Vs (p.u.).
3.4 CONTROL INTERACTIONS (SSCI)
Sub-synchronous control interactions (SSCI) are mainly due to the interactions between
DFIG wind turbine controllers and the series compensated transmission line, to which the
wind farm is connected. Unlike the beforementioned SSR types, the SSCI does not have
well-defined frequencies of concern due to the fact that the frequency of oscillations in
SSCI depends not only on the configuration of the series compensated transmission line
and induction generator parameters, but also on the wind turbine controller configuration
and parameters [37] - [41]. Moreover, the oscillations caused by the SSCI may grow faster
compared to previously mentioned SSR type, since the undamped oscillation in SSCI com-
pletely depends on the electrical and controller interactions, which have a smaller time
constant.
The SSCI has come into prominence since the ERCOT event of 2009 [37] - [41]. A
faulted line and subsequent outage in the network caused a large DFIG wind farm to be-
45
63. Figure 3.10: The mechanism of the SSCI in WTGS.
come radially connected to the series compensation network, resulting in rapidly increasing
of sub-synchronous frequency oscillations leading to damage to both the series capacitor
and the wind turbine [37] - [41]. The SSCI system can be simplified as shown in Fig-
ure 3.10. According to this figure, as mentioned earlier, the reason for the SSCI is the
interaction between the DFIG controllers and the network electric natural frequency.
3.5 EXISTING AND PLANNED SERIES COMPENSATED WIND FARMS
In 2005 [92], [93], the public utility commission of Texas (PUCT) developed a plan to build
2300 miles of new 345 kV transmission lines to accommodate an increase of 11553 MW
of wind energy in West Texas. Some of the transmission lines in the plan were designed to
have 50% series compensation. In Figure 3.11, a section of the electric reliability council
of Texas (ERCOT) grid is shown, where a 200 MW DFIG wind farm is connected to Bus 2.
The nominal voltage in all buses is 138 kV, except for buses 12-16, where the transformers
increase the voltage level from 138 kV to 345 kV. The series compensation capacitors are
located on the Bus 13-Bus 16 transmission line and on the Bus 15-Bus 16 transmission
line, with compensation levels from 50% to 80%. The thick green line in Figure 3.11 is the
worst case scenario in terms of susceptibility to SSR, where all other lines in the network
46
64. Figure 3.11: Single line diagram of a part of ERCOT grid, where a 200 MW DFIG wind
farm is connected to the Bus 2 [37],[40].
are open, and thereby, the wind farm is radially connected to the series compensated lines
via Bus 2, Bus 3, Bus 8, Bus 13, Bus 16 and Bus 15. In the ERCOT event of 2009 [37] -
[41], a faulted line and subsequent outage in the network caused a large DFIG wind farm
to become radially connected to the series compensation network. In this case, the power
network shown in Figure 3.11 is reduced to a radial single-machine-infinite bus network.
This event resulted in rapidly increasing of sub-synchronous frequency oscillations leading
47
65. Figure 3.12: Single line diagram of the 54 mile 345 KV Wilmarth (WLM)- Lakefield
Generating station (LFD) transmission line connected to the wind farm [57], [94].
to damage to both the series capacitor and the wind turbine [37] - [41]. Note that this case
of a wind farm radially connected to series-compensated transmission lines is similar to the
system studied in this paper shown in Figure 2.1. This shows the practical relevance of the
research presented in this work.
Additionally, with rapid increase of wind power energy in Southern Minnesota and
South Dakota, the Xcel Energy Inc. has planned (or already implemented) series compen-
sation in several transmission lines, including a 150-MW DFIG wind farm connected to a
60% series compensation of 54 miles 345 kV Wilmarth (WLM) - Lakefield Generating sta-
tion (LFD) transmission line, as seen in Figure 3.12 [57], [94]. A switching event around
the series compensated transmission line connected to wind farm and combustion turbine
generation resulted in growing unstable sub-synchronous oscillations [57].
Moreover, in [95], ABB Inc. has performed a “Dakotas Wind Transmission Study”
to investigate the transmission line capacity for up to 500 MW of new wind generation
planned to be located at seven different sites. The results revealed that the peak wind gen-
48
66. erated power cannot be delivered because the uncompensated transmission line exhibited
congestion. The report suggests that providing 35% and 50% series compensation for the
existing transmission lines can increase the level of wind generation that can be exported.
The ABB Inc. report also states that special studies must be performed in order to avoid
the SSR in the system.
In addition, [96] discusses technical requirements for the interconnection to Bonneville
Power Administration (BPA), in Pacific Northwest, transmission grid, including series
compensation to transmit wind power energy. Also, [97] gives a report regarding rein-
forcement of transmission lines of Alberta Electric System Operator (AESO) using series
compensation. Some of these lines are connected directly or indirectly to wind farms.
3.6 SUMMARY
In this chapter, three possible SSRs in DFIG wind farms including induction generator
effect (SSIGE), torsional interactions (SSTI), and control interactions (SSCI) are briefly
explained, and impact of some wind farms parameters on these SSRs are investigated using
eigenvalue analysis and time-domain simulations in PSCAD/EMTDC.
Regarding the SSIGE, the following conclusions can be drawn:
1. The SSIGE may happen when the equivalent rotor resistance under sub-synchronous
frequency, which can be a negative value, exceeds the sum of the positive resistances
of the armature and the network.
2. At lower wind speeds and higher compensation levels, the possibility of the SSIGE
in DFIG becomes higher.
3. The SSIGE is not related to the mechanical part of the system and is a purely electri-
cal phenomenon.
Regarding the SSTI, the following conclusions can be drawn:
49
67. 1. The SSTI may happen if the complement of one of the torsional natural frequencies
of the drive-train turbine system is close to the electric natural frequency.
2. Because of the low-shaft stiffness coefficient in WTGS, the SSTI may not be a con-
cern.
Regarding the SSCI, the following conclusions can be drawn:
1. The SSCI is an interaction between the DFIG wind turbine controllers and the series
compensated transmission line, to which the wind farm is radially connected.
2. The SSCI does not have well-defined frequencies of concern.
3. The oscillations caused by the SSCI may grow faster compared to SSIGE and SSTI.
50
68. CHAPTER 4
SSR DAMPING USING GATE - CONTROLLED SERIES
CAPACITOR (GCSC)
This chapter presents application and control of the gate-controlled series capacitor (GCSC)
for series compensation and sub-synchronous resonance (SSR) damping in doubly-fed
induction generator (DFIG)-based wind farms. The GCSC is a new series FACTS de-
vice composed of a fixed-capacitor in parallel with a pair of anti-parallel gate-commuted
switches. The wind farm is equipped with a GCSC to solve the instability of the wind farm
resulting from the SSR mode, and a SSR damping controller (SSRDC) is designed for this
device using residue-based analysis and root locus diagrams. Using residue-based analysis,
the optimal input control signal (ICS) to the SSRDC is identified that can damp the SSR
mode without destabilizing other modes, and using root-locus analysis, the required gain
for the SSRDC is determined. Matlab/Simulink is used as a tool for modeling and design,
and PSCAD/EMTDC is used for time-domain simulations.
4.1 GCSC: STRUCTURE AND CONTROL
Flexible AC transmission systems (FACTS) are defined as a high-power electronic based
system and other static equipment controlling one or several transmission systems to im-
prove their controllability and power transfer capability [24]. Generally, high-power elec-
tronic devices include a variety of diodes, transistors, silicon controlled rectifier (SCR), and
gate-turn-off thyristors (GTO) [98]. Unlike the conventional thyristors or SCRs, GTOs are
fully controllable, and they can be turned on and off by their gate. Nowadays, SCRs and
51
69. Figure 4.1: Single line configuration of the GCSC. vcg = voltage across the GCSC, iL =
transmission line’s current, icg = GCSC capacitor current, Xcg = fixed capacitance of the
GCSC.
high power GTOs are widely used for FACTS controllers. Gate-controlled series capacitor
(GCSC) is a family of series FACTS devices that uses GTO switches that can be turned on
and off by its gate [24].
This section describes the GCSC principles of operation, generated harmonics, and its
application for series compensation and SSR damping in DFIG-based wind farms, includ-
ing power scheduling and SSR damping controller design.
Principle of Operation and Generated Harmonics
A GCSC (one per phase), as shown in Figure 4.1, is composed of a fixed-capacitor in
parallel with a pair of GTOs. The switch in the GCSC is turned-off at the angle β, measured
from the peak value of the line current. Figure 4.2 shows the line current, capacitor voltage
and the GTOs pulses waveform. As seen in this figure, the GTO switch is closed, when
vcg(t) is equal to zero. The effective capacitance of the GCSC is given by [24]:
XG =
Xcg
π
(2γ−sin2γ) =
Xcg
π
(δ−sinδ) (4.1)
where γ is the the angle of the advance, δ is the hold off angle, and XC f g is the fixed
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70. Figure 4.2: Line current iL(t), capacitor voltage vcg(t), and switching function of the
GCSC. β = GCSC’s turn-off angle γ = the angle of the advance (π/2 − β), δ = hold off
angle (π−2β = 2γ)
capacitance of the GCSC. As δ changes from 0o to 180o, XG varies from 0 to Xcg.
The voltage across the GCSC contains odd harmonics, in addition to the fundamental
components. The harmonic analysis of the GCSC and some methods to reduce the har-
monic levels have already been studied in literature [37], [99], [100]. In [99], it has been
shown that the maximum total harmonic distortion (THD) of the GCSC voltage, when a
single GCSC module is used, is about 4.5%. However, in practice, multi-module GCSCs
(MGCSC), which use smaller GCSC modules in series so that each module compensates
part of the total required series compensation level, are used in order to obtain the required
power rating for the GCSC. Using this configuration, the THD generated by the GCSC can
be reduced down to 1.5% [99]. In this method, the voltage of each GCSC module still con-
tains all the harmonic components of the single GCSC module, but with lower magnitude
[37], [99], [100].
Another method for reducing harmonic levels in the GCSC voltage is using multi-pulse
arrangements [99]. In this method, transformers are used to inject the GCSC voltage into
the transmission line, and the transformers windings are connected in such a way that some
lower order harmonics (LOH) of the GCSC voltage are canceled out. Using this method,
the THD of the GCSC voltage could be reduced to less than 0.34%, which is an acceptable
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