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Research Article

A FRCC method based on rapid voltage response for LVRT recovery of D-PMSG

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Pages 8320-8336 | Received 22 May 2019, Accepted 14 Jul 2019, Published online: 15 Oct 2019
 

ABSTRACT

One of the main problems of large-scale wind power access to the power system is the fault ride-through (FRT) ability of wind turbine generator (WTG) at present. A fast-reactive current control (FRCC) method, based on rapid voltage response for the low-voltage ride through (LVRT) recovery of direct drive permanent magnet wind turbine (D-PMSG), is offered in order to solve the reactive power reversal phenomenon of D-PMSG during the reactive power recovery period after the end of LVRT. Initially, the technical regulations for voltage FRT of WTG in the world’s mainstream wind power markets are analyzed. Then, the reactive power reversal phenomenon of D-PMSG and its reason during reactive power recovery after LVRT are introduced. Afterward, an FRCC method based on rapid voltage response for LVRT recovery of D-PMSG is proposed, which is verified through improved IEEE standard three-machines nine-nodes test system. Finally, another reason for the voltage rose after the end of LVRT is further discussed according to the simulation results, and the conclusion and the next research direction are drawn.

Additional information

Funding

This research is supported by technology projects of State Grid Corporation of China “The coordinated control method and application of wide-area hybrid power generation to improve the clean energy consumption ability and acceptability in weakly connected power grid” (Grant No. 5442XT190006).

Notes on contributors

Jian Zhang

Jian Zhang was born in 1993. He received the B.S. degree fromDalian Jiaotong University, Dalian, China, in 2016 and M.S. degrees from China Electric Power Research Institute(CEPRI) in 2019.His research interest mainly includes the stabilityof power system with renewable energy.

Huadong Sun

Huadong Sun is a professional engineer of China Electric Power Research Institute (CEPRI), Beijing, China. He received his B.E. and M.S. degree in electrical engineering from Shandong University,in 1999 and 2001, and Ph.D. degree from the CEPRI in 2005. His current research interest is power system security analysis and control.

Wenfeng Li

Wenfeng Li was born in 1979. He received the B.S. degree from North China Electric Power University, Beijing, China, in 2004 and Ph.D. degrees from China Electric Power Research Institute(CEPRI) in 2013.His research interest mainly includes the stability of power system stability and the coordination between units and grid.

Yuan Jia

Yuan Jia was born in 1985. She received the B.S. degree and M.S.degrees in electrical engineering, all from Xi'an University of Technology, Xi'an, China, in 2007 and 2012, respectively.Her research interest mainly includes wind power integration modelling and simulation technology.

Zhiyong Han

Zhiyong Han was born in 1980. He received the B.S. degree in thermal engineering, M.S. and Ph.D. degrees in electrical engineering, all from North China Electric Power University, Beijing, China, in 2002, 2005 and 2009, respectively.His main research interests are dynamic power system, low frequency oscillation and system modeling.

Xiangyun Tao

Xiangyun Tao  was born in 1981. He received the B.S. degree fromXi’an Jiaotong University, Xi’an, China, in 2003 and M.S. degrees from China Electric Power Research Institute(CEPRI) in 2006.His research interest mainly includes the stability of power system stability and the coordination between units and grid.

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