Author:
Zhu Xiaoming,Wang Liang,Gu Jiaru,Wang Peng,Tang Jigang,Hao Jinbao,Xiang Min,Lu Yangwen,Lu Xincheng
Abstract
Abstract
With the increasing penetration and installation of renewable energy such as photovoltaic (PV) generation, ultra-short-term PV output prediction is necessary to guarantee the stability of the power system. However, the traditional methods cannot capture the important features of PV power data, and prediction accuracy cannot be guaranteed. Focusing on these problems, this paper presents a novel PV prediction method based on LSTM with a multi-head attention mechanism. The mechanism can make the matrix operation run in parallel. At the same time, the model assigns weight to different features of the input data to improve the prediction. To show the effectiveness, this paper constructs four scale types for PV power prediction. Case studies show that the multi-head attention mechanism can improve the prediction performance, and the prediction accuracy decreases following the increase of time scale.
Subject
Computer Science Applications,History,Education
Cited by
1 articles.
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