RAN算法在短期负荷预测问题中的应用

M. Arahal, E. Camacho
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引用次数: 1

摘要

本文介绍了资源分配网络(RAN)算法在西班牙某电力公司电力负荷预测问题中的应用。算法参数的选择通常是手工完成的。本文探讨了参数自动选择的可能性。这些参数至关重要,因为它们决定了网络的最终规模及其适应新情况的能力。这类问题的训练样本数量通常很少。这一事实对获得神经模型的方法有很大的影响,但在预测文献中很少考虑到这一点。对可用训练数据的影响进行了实证分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of the RAN algorithm to the problem of short term load forecasting
This paper shows the application of the resource allocation network (RAN) algorithm to the problem of electrical load forecasting in a Spanish utility company. The choice of the parameters of the algorithm is usually done manually. In this paper the possibility of automatic selection of parameters is investigated. These parameters are of paramount importance since they determine the final size of the network and its capacity to generalize to new situations. The number of training samples in this kind of problems is usually small. This fact has a strong influence in methods for obtaining neural models, but is rarely taken into account in the forecasting literature. The influence of the available training data is analyzed empirically.
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