利用前几年的个体和集体数据进行人工神经网络短期负荷预测

T. Matsumoto, S. Kitamura, Y. Ueki, T. Matsui
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引用次数: 23

摘要

提出了一种基于人工神经网络(ANN)的夏季短期负荷预测方法。本研究的目的是利用前几年同期的实际数据作为训练数据,准确预测目标时期的日峰值负荷。本文介绍了两种方法。在一种方法中,对每个人工神经网络使用前几年每年的实际数据。另一种方法是利用几年的集体数据对人工神经网络进行训练。采用该方法,平均绝对预测误差在2%以下。
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Short-term load forecasting by artificial neural networks using individual and collective data of preceding years
This paper presents a short-term load forecasting technique for summer using an artificial neural network (ANN). The purpose of this study is to forecast accurately daily peak load for a target period using actual data from the same period of the previous several years as training data. This paper describes two methods. In one method, the actual data of each year for the several years earlier are used for each ANN. The other method uses the collective data of several years for the training of the ANN. With the proposed method, the mean absolute forecasting error was below 2%.<>
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