Photovoltaic power prediction based on sliced bidirectional long short term memory and attention mechanism

Chen, Wengang and He, Hongying and Liu, Jianguo and Yang, Jinbiao and Zhang, Ke and Luo, Diansheng (2023) Photovoltaic power prediction based on sliced bidirectional long short term memory and attention mechanism. Frontiers in Energy Research, 11. ISSN 2296-598X

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Abstract

Solar photovoltaic power generation has the characteristics of intermittence and randomness, which makes it a challenge to accurately predict solar power generation power, and it is difficult to achieve the desired effect. Therefore, by fully considering the relationship between power generation data and climate factors, a new prediction method is proposed based on sliced bidirectional long short term memory and the attention mechanism. The prediction results show that the presented model has higher accuracy than the common prediction models multi-layer perceptron, convolution neural network, long short term memory and bidirectional long short term memory. The presented sliced bidirectional cyclic network has high prediction accuracy by low root mean square error and mean absolute error of 1.999 and 1.159 respectively. The time cost is only 24.32% of that of long short term memory network and 13.76% of that of bidirectional long short term memory network.

Item Type: Article
Subjects: Article Paper Librarian > Energy
Depositing User: Unnamed user with email support@article.paperlibrarian.com
Date Deposited: 25 Apr 2023 09:22
Last Modified: 12 Mar 2024 04:26
URI: http://editor.journal7sub.com/id/eprint/762

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