Load forecasting for power system planning using a genetic-fuzzy-neural networks approach

A. Jarndal
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引用次数: 11

Abstract

Prediction of future load demand is important for secure operation of power systems and their economical utilization. A number of algorithms have been suggested for solving this problem. In this paper, a genetic-fuzzy-neural networks approach for mid-term load forecasting is proposed. In this paper the relationship between humidity, temperature and load is identified with a case study for a particular region in Oman. The output load obtained is corrected using a correction factor from neural networks model, which depends on previous set of loads. Data for monthly peak load of four years has been used for training the model, which then forecasts the load of the fifth year. The model has been validated using actual data from an electricity company.
基于遗传模糊神经网络的电力系统负荷预测
预测未来负荷需求对电力系统的安全运行和经济利用具有重要意义。已经提出了许多算法来解决这个问题。本文提出了一种用于中期负荷预测的遗传-模糊神经网络方法。在本文中,湿度,温度和负荷之间的关系是确定与阿曼一个特定地区的案例研究。利用神经网络模型中的修正因子对得到的输出负荷进行修正,该修正因子依赖于前一组负荷。四年每月峰值负荷的数据被用于训练模型,然后预测第五年的负荷。该模型已用某电力公司的实际数据进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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