Short-term system load forecasting using an artificial neural network

A. Papalexopoulos, S. Hao, T. Peng
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引用次数: 16

Abstract

This paper presents a new, artificial neural network (ANN) based model for the calculation of next day's load forecasts. The model's most significant aspects fall into the following two areas: training process and selection of the input variables. Insights gained during the development of the model regarding the choice of the input variables, and their transformations, the design of the ANN structure, the selection of the training cases and the training process itself are described in the paper. The new model has been tested under a wide variety of conditions and it is shown in this paper to produce excellent results. Comparison results between an existing regression-based model that is currently in production use and the ANN model are very encouraging. The ANN model consistently outperforms the existing model in terms of both average errors over a long period of time and number of 'large' errors. Conclusions reached from this development are sufficiently general to be used by other electric power utilities.<>
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基于人工神经网络的短期系统负荷预测
本文提出了一种新的基于人工神经网络的次日负荷预测计算模型。该模型最重要的方面包括以下两个方面:训练过程和输入变量的选择。本文描述了在模型开发过程中对输入变量的选择及其转换、人工神经网络结构的设计、训练案例的选择和训练过程本身的见解。新模型已在各种条件下进行了测试,并在本文中显示出良好的效果。目前在生产中使用的基于回归的模型与人工神经网络模型的比较结果非常令人鼓舞。人工神经网络模型在长时间内的平均误差和“大”误差数量方面始终优于现有模型。从这一发展中得出的结论具有足够的普遍性,可供其他电力公司使用。
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