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Key Operational Issues on the Integration of Large-Scale Solar Power Generation—A Literature Review

Author

Listed:
  • Wei Li

    (Department of Electrical Engineering, North China Electric Power University, Baoding 071003, China)

  • Hui Ren

    (Department of Electrical Engineering, North China Electric Power University, Baoding 071003, China)

  • Ping Chen

    (Department of Electrical Engineering, North China Electric Power University, Baoding 071003, China)

  • Yanyang Wang

    (Hebei Electric Power Trading Center Co., Ltd., Shijiazhuang 050011, China)

  • Hailong Qi

    (Hebei Minheng Electrical Technology Co., Ltd., Baoding 071000, China)

Abstract

Solar photovoltaic (PV) power generation has strong intermittency and volatility due to its high dependence on solar radiation and other meteorological factors. Therefore, the negative impact of grid-connected PV on power systems has become one of the constraints in the development of large scale PV systems. Accurate forecasting of solar power generation and flexible planning and operational measures are of great significance to ensure safe, stable, and economical operation of a system with high penetration of solar generation at transmission and distribution levels. In this paper, studies on the following aspects are reviewed: (1) this paper comprehensively expounds the research on forecasting techniques of PV power generation output. (2) In view of the new challenge brought by the integration of high proportion solar generation to the frequency stability of power grid, this paper analyzes the mechanisms of influence between them and introduces the current technical route of PV power generation participating in system frequency regulation. (3) This section reviews the feasible measures that facilitate the inter-regional and wide-area consumption of intermittent solar power generation. At the end of this paper, combined with the actual demand of the development of power grid and PV power generation, the problems that need further attention in the future are prospected.

Suggested Citation

  • Wei Li & Hui Ren & Ping Chen & Yanyang Wang & Hailong Qi, 2020. "Key Operational Issues on the Integration of Large-Scale Solar Power Generation—A Literature Review," Energies, MDPI, vol. 13(22), pages 1-25, November.
  • Handle: RePEc:gam:jeners:v:13:y:2020:i:22:p:5951-:d:445161
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    References listed on IDEAS

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