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基于多重卷积组合大模型的光伏出力预测

殷林飞 张依玲

综合智慧能源2025,Vol.47Issue(4):63-72,10.
综合智慧能源2025,Vol.47Issue(4):63-72,10.DOI:10.3969/j.issn.2097-0706.2025.04.005

基于多重卷积组合大模型的光伏出力预测

Photovoltaic output prediction based on multi-convolutional combined large model

殷林飞 1张依玲2

作者信息

  • 1. 广西大学 电力系统优化与能源技术广西重点实验室,南宁 530004
  • 2. 广西大学 数学与信息科学学院,南宁 530004
  • 折叠

摘要

Abstract

To address the issue of low accuracy in photovoltaic output prediction,a multi-convolutional combined large model is proposed,integrating triple convolutional neural networks(TCNNs),a weighted fully-connected regression network(WFRN),and improved bidirectional encoder representations from transformers(IBERT).The TCNNs employed convolutional kernels of multiple sizes to efficiently extract feature information from photovoltaic data,progressing from shallow to deep layers.The weighted fully-connected regression network(WFRN)optimized the weight coefficients of the prediction outputs from two deep neural networks using particle swarm optimization algorithm,thereby enhancing prediction accuracy.The prediction results from TCNNs and WFRN were integrated and input into the IBERT for training.The attention mechanism of IBERT was then employed to perform interpretable feature analysis,determining the final photovoltaic output prediction value.The TCNNs-WFRN-IBERT model was applied to predict the hourly photovoltaic output power for the next day in Natal,Brazil.Simulation tests were conducted using actual photovoltaic output and meteorological data,and the results were compared with those of 38 algorithms.The results showed that the mean absolute error(MAE),mean squared error(MSE),and root mean squared error(RMSE)of the TCNNs-WFRN-IBERT model were 22.61 W,1 818.20 W2 and 42.64 W,respectively.Compared with other models,the evaluation metrics of TCNNs-WFRN-IBERT were lower than those of the other models,with its MAE value being at least 2.71%smaller than those of the other 38 comparative models,validating the effectiveness of the proposed model.

关键词

三重卷积神经网络/权重全连接回归网络/改进的双向编码器表征网络/光伏出力预测/多重卷积组合大模型/注意力机制

Key words

triple convolutional neural network/weighted fully connected regression network/improved model of bidirectional encoder representation from transformers/photovoltaic output prediction/multi-convolutional combined large model/attention mechanism

分类

能源科技

引用本文复制引用

殷林飞,张依玲..基于多重卷积组合大模型的光伏出力预测[J].综合智慧能源,2025,47(4):63-72,10.

基金项目

国家自然科学基金项目(62463001) National Natural Science Foundation of China(62463001) (62463001)

综合智慧能源

2097-0706

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