基于小波网络的电价预测

M. Rashidi-nejad, A. Gharaveisi, A. Khajehzadeh, M. Salehizadeh
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引用次数: 4

摘要

在竞争性电力市场中,各种基于现货价格的长期和短期合同由独立的市场运营商(IMO)执行。准确的现货价格预测技术有助于市场参与者制定投标策略,以实现其利益最大化。神经小波是一种用于非线性和不确定性条件下预测问题的有效方法。本文提出了一种基于径向基函数(RBF)网络的现货价格预测方法。为了训练网络,为了应用价格行为的历史信息,使用了一些其他有效参数。负荷水平、燃料价格、发电和输电位置以及工况是与一般已知参数相关联的有效参数。将这些参数应用到一个假设的神经小波网络(NWN)的学习过程中。本文详细介绍了模拟结果,这些结果表明了所提出的预测工具作为一种精确技术的有效性
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Eelctricity Price Forecasting Using WaveNet
Under competitive electricity markets, various long-term and short-term contracts based on spot price are implemented by independent market operator (IMO). An accurate forecasting technique for spot price facilitates the market participants to develop bidding strategies in order to maximize their benefit. Neural-wavelet is a powerful method for forecasting problems under the condition of nonlinearity as well as uncertainty. In this paper, a new methodology based upon radial basis function (RBF) network is proposed to the forecasting spot price problem. To train the network, in order to apply historical information of the price behavior, some other effective parameters are used. Load level, fuel price, generation and transmission location as well as conditions are the effective parameters which are associated with general well known parameters. All these parameters are applied for learning process to an assumed neural wavelet network (NWN). Simulation results are presented in details in this paper, where these results indicate the effectiveness of the proposed forecasting tool as an accurate technique
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