A comparison of support vector machines and artificial neural networks for mid-term load forecasting

Xinxing Pan, B. Lee
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引用次数: 34

Abstract

Load forecasting plays a very important role in building out the smart grid, and attracts the attention of not only the researchers and engineers, but also governments. The classical method for load forecasting is to use artificial neural networks (ANN). Recently the use of support vector machines (SVM) has emerged as a hot research topic for load forecasting. In this study, in which several different experiments are executed, to compare the use of SVM and ANN for mid-term load forecasting is presented. The forecasting is mainly performed for the electrical daily load in one year. Based on the results from the experiments, a comparison between different internal ANN algorithms as well as the comparison between ANN itself and SVM is discussed, and the merits of each approach described. Also, how much effect the factors like weather and type of day have for the load prediction is analyzed.
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中期负荷预测中支持向量机与人工神经网络的比较
负荷预测在智能电网建设中起着非常重要的作用,不仅受到研究人员和工程师的重视,而且受到政府的重视。负荷预测的经典方法是利用人工神经网络(ANN)进行预测。近年来,利用支持向量机(SVM)进行负荷预测已成为一个研究热点。在本研究中,执行了几个不同的实验,以比较支持向量机和人工神经网络在中期负荷预测中的使用。预测主要是对一年内的电力日负荷进行预测。在实验结果的基础上,对不同的人工神经网络内部算法以及人工神经网络本身与支持向量机的比较进行了讨论,并描述了每种方法的优点。分析了天气、天气类型等因素对负荷预测的影响程度。
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