A hybrid approach for short term electricity price and load forecasting

A. Mohapatra, M. K. Mallick, B. K. Panigrahi, Z. Cui, S. Hong
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引用次数: 7

Abstract

In a deregulated power industry, accurate short term load forecasting (STLF) and price forecasting (STPF) is a key issue in daily power market. The load forecasting helps in unit commitment as well as in economic scheduling of the generators. The price forecasting helps an electric utility to make important decisions like generation of electric power, bidding for generation, price switching and infrastructure development. Price forecasting is very much useful for energy suppliers, ISOs and other participants in electric generation, transmission and distribution. This paper presents a hybrid approach for the STLF and STPF. The time series data pertaining to load / price is decomposed into various decomposition levels by the use of Wavelet Transform (WT) and each level obtained by this process is predicted using Artificial Neural Network (ANN). The performance of the proposed hybrid model is validated using New Delhi load data and Ontario electricity price data.
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短期电价与负荷预测的混合方法
在放松管制的电力行业中,准确的短期负荷预测和价格预测是日常电力市场的关键问题。负荷预测不仅有助于机组的调度,也有助于机组的经济调度。价格预测有助于电力公司做出重要决策,如发电、发电投标、价格转换和基础设施发展。价格预测对能源供应商、iso和发电、输电和配电的其他参与者非常有用。本文提出了一种STLF和STPF的混合方法。利用小波变换(Wavelet Transform, WT)将负荷/价格时序数据分解成不同的分解层次,并利用人工神经网络(Artificial Neural Network, ANN)对各分解层次进行预测。使用新德里负荷数据和安大略省电价数据验证了所提出的混合模型的性能。
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