Electricity price forecasting by clustering-least squares support vector machine

Li Xie, Hua Zheng
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引用次数: 2

Abstract

In the electricity market, the price as the lever results in the dramatic variations, especially, the capacity or willingness of electricity consumers and then demand may be low, particularly over short time frames. Therefore demand-side management (DSM) has been put into practice, and the market supervisors become more and more focused on the price dynamics of the short-term, because of its effects on the modification of consumer demand for energy through various methods especially financial incentives. But due to the complexity of the price, the electricity price forecasting is along one of focused and unsolved problems in the researches of electricity market. This paper describes a novel model for price forecasting is proposed by the developed least squares support vector machine (LS-SVM), which integrates Clustering algorithm with LS-SVM. First, clustering of the data samples are performed, which aims at mining the latent patterns in the data. After that, LS-SVM is applied for the nonlinear regression modeling of electricity price and its influence factors signed with its class, which results in a more efficient training and forecasting. Finally, hourly prices and loads of different market are employed to test the proposed approach.
基于聚类-最小二乘支持向量机的电价预测
在电力市场中,价格作为杠杆导致了巨大的变化,特别是电力消费者的容量或意愿,然后需求可能很低,特别是在短时间内。因此,需求侧管理(DSM)已经被付诸实践,市场监管者越来越关注短期的价格动态,因为它通过各种方法特别是财政激励对消费者能源需求的调整产生了影响。但由于电价的复杂性,电价预测一直是电力市场研究的热点和未解决的问题之一。本文将最小二乘支持向量机(LS-SVM)与聚类算法相结合,提出了一种新的价格预测模型。首先,对数据样本进行聚类,目的是挖掘数据中的潜在模式。然后,将LS-SVM应用于电价及其影响因素的非线性回归建模,并以其类签名,从而提高了训练和预测的效率。最后,采用不同市场的小时价格和负荷来验证所提出的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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