Short-term wind power forecasting based on integrated multi-scale LSTM
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TP391.4

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    Abstract:

    Wind energy is a pollution-free renewable energy, and the proportion of wind power is increasing year by year globally. In view of the large fluctuations in the output of wind power generation, which leads to the instability of the grid power, a short-term wind power prediction model based on integrated multi-scale long short-term memory (LSTM) is proposed. By using LSTM’s special processing capabilities for sequence data, combined with the information contained in different scales’ time data, to predict short-term wind power after integration. It is conducive to comprehensive control and dispatch of power resources. Experiments are conducted on the real data set of wind power generation in the northeast of our country, and the results prove that the method in this paper has high prediction accuracy and strong stability.

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易善军,王汉军,向勇,田长翼,高大禹,陈志奎.基于集成多尺度LSTM的短时风功率预测[J].重庆大学学报,2021,44(7):75~81

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  • Received:September 12,2020
  • Online: July 28,2021
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