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Analysis on the Key Influencing Factors of Power Generation Forecast of China's Power Generation Enterprises

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DOI: 10.23977/fpes.2022.010103 | Downloads: 5 | Views: 779

Author(s)

Jun Chen 1, Dan Liu 1, Zheng Gao 1, Guibo Zheng 1, Liang Zhang 1

Affiliation(s)

1 China Energy Power Marketing Center Investment Limited Corporation, Dongcheng, Beijing, China

Corresponding Author

Jun Chen

ABSTRACT

Under the current situation of accelerating and continuously deepening the construction of new power systems in China, the way of matching the basically measurable power system with an accurate and controllable power generation system in the traditional power system will no longer be applicable. The new system organization mode will change from "source follows load" to "source network load storage" interaction. Power marketing as the frontier of production and operation, under the background of building a unified national power market, carries out analysis and prediction system research on the power market supply and demand situation. It needs clarifying the medium and long-term power generation forecasting methods and models, which provides reference for the reform and development of the power market in the power industry, and is of great significance, The analysis of influencing factors is crucial to accurate forecasting of power generation. Therefore, this paper makes an in-depth analysis of the power market supply and demand situation of power generation enterprises in China and the influencing factors of power generation forecasting, and the purpose is providing a foundation for accurate forecasting.

KEYWORDS

power situation analysis, power generation forecasting, power supplement

CITE THIS PAPER

Jun Chen, Dan Liu, Zheng Gao, Guibo Zheng, Liang Zhang, Analysis on the Key Influencing Factors of Power Generation Forecast of China's Power Generation Enterprises. Frontiers in Power and Energy Systems (2022) Vol. 1: 18-22. DOI: http://dx.doi.org/10.23977/fpes.2022.010103.

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