Training artificial neural networks for short-term electricity price forecasting

E. N. Chogumaira, T. Hiyama
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引用次数: 3

Abstract

This paper present a comparative study of training approaches for artificial neural network (ANN) used in forecasting short-term wholesale electricity prices. High probability of volatility in wholesale electricity prices and trends that are generally non-uniform create challenges when forecasting future prices using simple backpropagation feedforward ANN. A number of ANN architectures and training methods have been proposed for a variety of applications, and here we consider three approaches with actual electricity price data. The architectures considered in this study are: the well known feedforward and Elman networks trained with backpropagation, which are compared to feedforward network trained with genetic algorithm. Avoidance of local minima and minimization of computational cost are key performance indicators in ANN training. Number of training iterations needed to achieve target error and the generalization ability are used to compare the methods. This investigation is meant to guide in selecting ANN training method for electricity price forecasting.
训练用于短期电价预测的人工神经网络
本文对人工神经网络(ANN)用于短期批发电价预测的训练方法进行了比较研究。批发电价波动的高概率和通常不均匀的趋势在使用简单的反向传播前馈人工神经网络预测未来电价时带来了挑战。针对各种应用,已经提出了许多人工神经网络架构和训练方法,在这里,我们考虑使用实际电价数据的三种方法。本研究考虑的结构是:用反向传播训练的前馈和Elman网络,并将其与用遗传算法训练的前馈网络进行比较。避免局部极小值和计算成本最小化是人工神经网络训练的关键性能指标。通过实现目标误差所需的训练迭代次数和泛化能力对两种方法进行比较。本研究旨在指导人工神经网络在电价预测中训练方法的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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