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Short-term photovoltaic power forecasting model based on similarity day algorithm and ensemble learning |
WU Mingyi, JIAO Chaofan, QU Boyang, JIAO Yuechao, FU Kai |
School of Electronic and Information Engineering, Zhongyuan University of Technology, Zhengzhou 450007 |
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Abstract With the increasing of the distributed generation in the power system, photovoltaic power forecasting has become essential in the planning and operation of the electric power system. This paper proposes a hybrid model which utilizing the improved similarity day algorithm and the Bagging ensemble learning for short-term photovoltaic power forecasting. By using the improved similarity day algorithm, the similar day is found out from the history data of photovoltaic output. The similar day and other climate factor make up the input vector of the decision tree model, which has been trained by using the Bagging ensemble learning algorithm. To confirm the effectiveness of the proposed modeling strategy, the model has been tested on the publicly available data set of photovoltaic output and compared with the classical neural network model and SVM. The results of the proposed model show a better accuracy.
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Received: 01 September 2020
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Cite this article: |
WU Mingyi,JIAO Chaofan,QU Boyang等. Short-term photovoltaic power forecasting model based on similarity day algorithm and ensemble learning[J]. Electrical Engineering, 2021, 22(4): 33-37.
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URL: |
http://dqjs.cesmedia.cn/EN/Y2021/V22/I4/33
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