异质人工神经网络短期负荷预测

A. Piras, A. Germond, B. Buchenel, K. Imhof, Y. Jaccard
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引用次数: 81

摘要

短期电力负荷预测是能源生产和分配规划的一个重要课题。在结果的准确性方面,人工神经网络的使用已被证明是经典统计方法的有效替代方法。然而,目前还缺乏一种能够预测不同地理区域、不同负荷形态和气候特征下的负荷的通用架构。在本文中,我们讨论了一个异构神经网络架构,它由一个无监督部分(即神经气体)和一个有监督部分(多层感知器)组成,该部分用于分析子模型中寻找数据中的局部特征并建议回归变量的过程,而一个有监督部分(即多层感知器)则执行底层函数的逼近。结果输出然后由加权模糊平均值求和,允许子模型之间的平滑过渡。通过对瑞士西部能源公司(EOS)电力系统分区域(对应于五个不同的地理区域)及其总电力负荷的两天前负荷预测,证明了所提出架构的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heterogeneous artificial neural network for short term electrical load forecasting
Short term electrical load forecasting is a topic of major interest for the planning of energy production and distribution. The use of artificial neural networks has been demonstrated as a valid alternative to classical statistical methods in terms of accuracy of results. However, a common architecture able to forecast the load in different geographical regions, showing different load shape and climate characteristics, is still missing. In this paper we discuss a heterogeneous neural network architecture composed of an unsupervised part, namely a neural gas, which is used to analyze the process in sub models finding local features in the data and suggesting regression variables, and a supervised one, a multilayer perceptron, which performs the approximation of the underlying function. The resulting outputs are then summed by a weighted fuzzy average, allowing a smooth transition between sub models. The effectiveness of the proposed architecture Is demonstrated by two days ahead load forecasting of L'Energie de L'Ouest Suisse (EOS) power system sub areas, corresponding to five different geographical regions, and of its total electrical load.
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