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Prediction of Solar Radiation in Qinghai Lake Area Based on BiLSTM-Attention Method

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Published:24 January 2020Publication History

ABSTRACT

Short-term solar radiation prediction plays a crucial role in production and life. There is much room for improvement in the prediction accuracy and stability of traditional models. In order to solve this problem, this paper uses a method based on deep learning to predict solar radiation. A short-term solar radiation prediction model is established for Qinghai Lake combined with a bidirectional long-term memory network and attention mechanism. Based on the historical solar radiation in the past month and the average temperature at 1.5 meters, the solar radiation prediction in the next two weeks is made prediction. The experimental results show that the prediction model combined with the bidirectional long-term memory network and the attention mechanism is superior to the traditional prediction method in predicting accuracy, convergence speed and root mean square error and average absolute error, which can effectively improve. The accuracy and stability of the short-term solar radiation prediction model in local areas.

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  1. Prediction of Solar Radiation in Qinghai Lake Area Based on BiLSTM-Attention Method

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      cover image ACM Other conferences
      ICAIP '19: Proceedings of the 2019 3rd International Conference on Advances in Image Processing
      November 2019
      232 pages
      ISBN:9781450376754
      DOI:10.1145/3373419

      Copyright © 2019 ACM

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      Publication History

      • Published: 24 January 2020

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