Electric power price forecasting using data mining techniques

Mrinall K. Patil, S. Deshmukh, Ritu Agrawal
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引用次数: 6

Abstract

Electricity price is the governing factor in taking various operational decisions such as generation scheduling, exchange of power amongst utilities, trading of power in market along with keeping pace with technical stability and reliability of power system. The accurate forecasting of price of electric power is a need of every participant in restructured power system scenario. Hence, this paper is an attempt to apply data mining for forecasting the electricity price. The k-mean algorithm is used for classification of data of historical prices of New York Energy Market (NYISO) according to type of day, into three classes. The k-NN algorithm to divide the classified data into two patterns for month of February-March and April to January. Once classification is done, the data is used for developing forecasting model. The historical electricity price data of 2014, along with load is used as input patterns. The accuracy of the developed model is verified by forecasting respective period samples of 2015. The performance of forecasting model is very satisfactory. The step wise development of forecasting model and the results are discussed in detail.
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基于数据挖掘技术的电价预测
电价是决定发电计划、电力公司间电力交换、电力市场交易等各种运营决策的决定性因素,同时也影响着电力系统的技术稳定性和可靠性。电力价格的准确预测是电力系统重构中各参与方的需求。因此,本文是将数据挖掘应用于电价预测的一次尝试。采用k-均值算法对纽约能源市场(NYISO)历史价格数据按日类型进行分类,分为三类。k-NN算法将分类数据分为2 - 3月和4 - 1月两种模式。分类完成后,数据用于开发预测模型。以2014年的历史电价数据和负荷作为输入模式。通过对2015年各期样本的预测,验证了所建模型的准确性。预测模型的性能令人满意。详细讨论了预测模型的逐步发展及其结果。
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