以新冠肺炎大流行限制为输入参数并加入ReLU激活函数的并行CNN-BPNN预测模型短期负荷预测

S. M. Velasquez, C. Ostia, Jr.
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引用次数: 0

摘要

短期负荷预测为电力系统提供了一种重要的预测工具。本研究探讨了应用混合机器学习算法来提高负荷预测的准确性。以菲律宾流行病限制为附加参数和ReLU激活函数,研究并行CNN-BPNN预测模型在短期负荷预测中的准确性。使用Python实现了CNN、BPNN以及所提出的并行CNN-BPNN模型。他们使用输入参数进行培训、验证和测试,如历史电力需求、星期几/节假日、气象数据,如温度、风速、湿度和COVID-19大流行限制。使用MAPE对三种模型的精度进行了检验。结果表明,该模型的最小MAPE为3.52%,低于CNN的4.62%和BPNN的3.98%。此外,Pearson相关分析显示,用电量与出行约束之间存在适度相关,相关值为-0.57。©2022 wcse。版权所有。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short-Term Load Forecasting Using a Parallel CNN-BPNN Prediction Model with COVID-19 Pandemic Restriction as an Added Input Parameter and ReLU Activation Function
Short-term load forecasting provides a vital tool for the power system. This study delved into applying a hybridized machine learning algorithm to improve load forecasting accuracy. It aims to investigate the accuracy of the parallel CNN-BPNN prediction model in short-term load forecasting with Philippine pandemic restriction as an added parameter and a ReLU activation function. The CNN, BPNN, and the proposed parallel CNN-BPNN models were implemented using Python. They were trained, validated, and tested using the input parameters such as historical power demand, day of weeks/ Holidays, meteorological data such as temperature, wind speed, humidity, and COVID-19 pandemic restriction. The accuracy of the three models was tested using the MAPE. Results showed that the proposed model achieved the lowest MAPE of 3.52 %, lower than that of the CNN, 4.62%, and BPNN, 3.98%. Furthermore, Pearson correlation analysis showed that the relationship between electricity usage and mobility constraints is moderately correlated with a correlation value of -0.57. © 2022 WCSE. All Rights Reserved.
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