一种基于人工神经网络的短期负荷预测方法

N. Kandil, R. Wamkeue, M. Saad, S. Georges
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引用次数: 17

摘要

在之前的工作中,我们使用人工神经网络(ANN)进行短期负荷预测,使用来自魁北克水电数据库的实际负荷和天气数据,其中三种类型的变量被用作神经网络的输入:a)小时和日指标,b)天气相关输入,c)历史负荷。一般来说,对于提前几天的预测,负荷历史(最近几天)是不可用的,因此,使用该负荷的估计值来代替。然而,这些估计值中的一个小误差可能会急剧增长,并导致负荷预测中的一个严重问题,因为这个误差作为预测过程的输入反馈。在本文中,我们展示了人工神经网络在不使用负荷历史作为输入的情况下进行负荷预测的能力。此外,在本应用程序中仅使用温度(来自天气变量),其结果表明,其他变量,如天空条件(云量)和风速没有严重影响,可以不考虑在负荷预测过程中
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Approach for Shorterm Load Forecasting using Artificial Neural Networks
In previous work, we applied artificial neural networks (ANN) for short term load forecasting using real load and weather data from the Hydro-Quebec databases where three types of variables were used as inputs to the neural network: a) hour and day indicators, b) weather related inputs, and c) historical loads. In general, for forecasting with a lead time of up to a few days ahead, load history (for the last few days) is not available, and therefore, estimated values of this load are used instead. However, a small error in these estimated values may grow up dramatically and lead to a serious problem in load forecasting since this error is fed back as an input to the forecasting procedure. In this paper, we demonstrate ANN capabilities in load forecasting without the use of load history as an input. In addition, only temperature (from weather variables) is used, in this application, where results show that other variables like sky condition (cloud cover) and wind velocity have no serious effect and may not be considered in the load forecasting procedure
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