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Day-Ahead Deregulated Electricity Market Price Forecasting Using Recurrent Neural Network

机译:基于递归神经网络的日前放松管制的电力市场价格预测

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This paper proposes a recurrent neural network model for the day ahead deregulated electricity market price forecasting that could be realized using the Elman network. In a deregulated market, electricity price is influenced by many factors and exhibits a very complicated and irregular fluctuation. Both power producers and consumers need a single compact and robust price forecasting tool for maximizing their profits and utilities. In order to validate the chaotic characteristic of electricity price, an Elman network is modeled. The proposed Elman network is a single compact and robust architecture (without hybridizing the various hard and soft computing models). It has been observed that a nearly state of the art Elman network forecasting accuracy can be achieved with less computation time. The proposed Elman network approach is compared with autoregressive integrated moving average (ARIMA), mixed model, neural network, wavelet ARIMA, weighted nearest neighbors, fuzzy neural network, hybrid intelligent system, adaptive wavelet neural network, neural networks with wavelet transform, wavelet transform and a hybrid of neural networks and fuzzy logic, wavelet-ARIMA radial basis function neural networks, cascaded neuro-evolutionary algorithm, and wavelet transform, particle swarm optimization, and adaptive-network-based fuzzy inference system approaches to forecast the electricity market of mainland Spain. Finally, the accuracy of the price forecasting is also applied to the electricity market of New York in 2010, which shows the effectiveness of the proposed approach.
机译:本文提出了针对提前一天去管制的电力市场价格预测的递归神经网络模型,该模型可以使用Elman网络来实现。在放松管制的市场中,电价受许多因素影响,并且呈现出非常复杂和不规则的波动。电力生产商和消费者都需要一个紧凑而强大的价格预测工具,以最大限度地提高其利润和公用事业。为了验证电价的混沌特性,对Elman网络进行了建模。拟议的Elman网络是一个紧凑而健壮的体系结构(无需混合各种硬计算和软计算模型)。已经观察到,可以用更少的计算时间来达到近乎最新的Elman网络预测精度。将拟议的Elman网络方法与自回归综合移动平均值(ARIMA),混合模型,神经网络,小波ARIMA,加权最近邻,模糊神经网络,混合智能系统,自适应小波神经网络,带小波变换的神经网络,小波变换进行了比较以及神经网络和模糊逻辑的混合,小波-ARIMA径向基函数神经网络,级联神经进化算法,小波变换,粒子群优化和基于自适应网络的模糊推理系统方法来预测大陆的电力市场西班牙。最后,价格预测的准确性也应用于2010年的纽约电力市场,这表明了该方法的有效性。

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