Research on Multi-load Forecasting of Integrated Energy System Based on GRA-BP Neural Network

Xiaohui Zhang, Dongdong Lv, Zhifei Hao
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Abstract

Aiming at the accuracy of regional comprehensive energy multi-load forecasting, a multi-load short-term forecasting model based on grey correlation analysis and improved BP neural network is proposed. The BP neural network prediction model has adaptive learning rate, elastically modifies the connection weight coefficient and improves the prediction accuracy. According to the typical climate characteristics in summer and winter, the correlation change law of cold, heat, electricity and gas load in an industrial park is dynamically simulated according to the actual calculation example. The actual results show that the improved BP neural network multivariate load short-term prediction model improves the prediction accuracy and has practical application prospects.
基于GRA-BP神经网络的综合能源系统多负荷预测研究
针对区域综合能源多负荷预测的准确性,提出了一种基于灰色关联分析和改进BP神经网络的多负荷短期预测模型。BP神经网络预测模型具有自适应学习率、弹性修正连接权系数,提高了预测精度。根据某工业园区夏季和冬季典型气候特征,结合实际算例,动态模拟了工业园区冷、热、电、气负荷的相关变化规律。实际结果表明,改进的BP神经网络多元负荷短期预测模型提高了预测精度,具有实际应用前景。
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