Day-ahead electricity market price forecasting using artificial neural network with spearman data correlation

J. Nascimento, T. Pinto, Z. Vale
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引用次数: 3

Abstract

Electricity markets are complex environments with very dynamic characteristics. The large-scale penetration of renewable energy sources has brought an increased uncertainty to generation, which is consequently, reflected in electricity market prices. In this way, novel advanced forecasting methods that are able to predict electricity market prices taking into account the new variables that influence prices variation are required. This paper proposes a new model for day-ahead electricity market prices forecasting based on the application of an artificial neural network. The main novelty of this paper relates to the pre-processing phase, in which the relevant data referring to the different variables that have a direct influence on market prices such as generation, temperature, consumption, among others, is analysed. The association between these variables is performed using spearman correlation, from which results the identification of which data has a larger influence on the market prices variation. This pre-analysis is then used to adapt the training process of the artificial neural network, leading to improved forecasting results, by using the most relevant data in an appropriate way.
基于spearman数据关联的人工神经网络日前电价预测
电力市场是一个复杂的环境,具有很强的动态特征。可再生能源的大规模渗透增加了发电的不确定性,因此反映在电力市场价格上。在这种情况下,需要新颖的先进的预测方法,能够预测电力市场价格,并考虑到影响价格变化的新变量。本文提出了一种基于人工神经网络的日前电力市场价格预测模型。本文的主要新颖之处与预处理阶段有关,在预处理阶段,分析了涉及对市场价格有直接影响的不同变量的相关数据,如发电量、温度、消费量等。这些变量之间的关联是使用spearman相关性进行的,从中可以确定哪些数据对市场价格变化的影响更大。然后使用这种预分析来调整人工神经网络的训练过程,从而通过以适当的方式使用最相关的数据来改进预测结果。
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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