基于反向传播人工神经网络的变量选择与短期电力需求预测

Xavier Serrano-Guerrero, Ricardo Prieto-Galarza, Esteban Huilcatanda, Juan Cabrera-Zeas, G. Escrivá-Escrivá
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引用次数: 9

摘要

电力需求预测是能源部门的一项基本要求,因为重要的决策是根据其结果做出的。涉及的领域包括电网的维护、需求的增长、装机容量的增加等,这些领域缺乏精确度可能会带来高昂的经济成本。在这项工作中,我们提出了一种基于反向传播神经网络的方法,并选择关键变量作为输入。对隐层神经元数量进行了优化。为了避免过度训练,定义了数据的最佳时间范围。结果表明,该方法对短期预报(24或48小时)效果特别好。
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Election of variables and short-term forecasting of electricity demand based on backpropagation artificial neural networks
Forecasting of electricity demand is a fundamental requirement for the energy sector since from its results important decisions are taken. The areas involved are maintenance of electrical networks, demand growth, increased installed capacity, among others, whose lack of precision can take high economic costs. In this work, we propose a method based on backpropagation neural networks and election of key variables as inputs. The number of neurons in the hidden layer was optimized. To avoid the overtraining the best time range of data was defined. The results show that the method works particularly well for short-term forecasting (24 or 48 hours).
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