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A hybrid Elman recurrent neural network, group search optimization, and refined VMD-based framework for multi-step ahead electricity price forecasting

机译:一个混合埃尔曼经常性神经网络,集团搜索优化和基于精制的基于VMD的多步前方电价预测框架

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This paper presents a synergy of three methods for training the Elman recurrent neural network to forecast the multi-step-ahead electricity price in an electric power system. Electricity prices are characterized as non-stationary time series data that entail vigorous learning model for predicting the future electricity price from past data. To accomplish this, an enhanced hybrid framework that integrates the refined variational mode decomposition method and the group search optimization algorithm is proposed for training the Elman recurrent neural network. The variational mode decomposition method is optimized using a complement particle swarm optimization method so as to decompose the non-stationary pricing data into optimum number of intrinsic mode functions. Subsequently, based on the power values of intrinsic mode, functions are further filtered and used as the input data to train the Elman neural network. The group search optimization algorithm is used to optimize the weights of the Elman neural network. Three real-time time series non-stationary data for multi-step ahead price prediction are adopted from Australian, British, and Indian power markets and experimented using the proposed forecasting model.
机译:本文提出了三种方法,用于培训Elman经常性神经网络,以预测电力系统中的多阶电力价格。电价的特点是非静止时间序列数据,即需要剧烈的学习模式,以预测过去数据的未来电价。为了实现这一点,提出了一种增强的混合框架,其集成了精制变分模式分解方法和组搜索优化算法,用于训练ELMAN经常性神经网络。使用补码粒子群优化方法优化变分模式分解方法,以便将非静止定价数据分解为内在模式功能的最佳数量。随后,基于内在模式的功率值,进一步滤波并用作培训ELMAN神经网络的输入数据。该组搜索优化算法用于优化ELMAN神经网络的权重。三种实时时间系列非静止数据用于澳大利亚,英国和印度电力市场采用澳大利亚,英国和印度电力市场,并使用所提出的预测模型进行实验。

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