Short Term Load Forecasting for Electrical Dispatcher of Baghdad City Based on SVM-PSO Method

Aqeel S. Jaber, Koay A. Satar, Nadheer A. Shalash
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引用次数: 6

Abstract

The short-term of power forecasting represents as one of the substantial roles in the safe and economic uses of the power system. The climate consideration is the main challenge which is facing the improvement of the load forecasting accuracy. In this paper hybrid PSO and SVM methods used to forecast non-linear load data was proposed. First, description of the detail of a hybrid method between PSO and support vector machines learning method. Secondly; applying this method for forecasting the load in Bagdad city. Finally, the proposed method implemented by MATLAB and compared with classical support vector machines method. The results show that the proposed method was very clear in the accuracy of the forecasting depends on terms of absolute proportional error (MAPE).
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基于SVM-PSO方法的巴格达市电力调度员短期负荷预测
短期电力预测对电力系统的安全、经济运行起着重要的作用。气候因素是提高负荷预测精度所面临的主要挑战。本文提出了基于粒子群算法和支持向量机的非线性负荷预测方法。首先,详细描述了一种介于粒子群算法和支持向量机学习方法之间的混合方法。其次;将该方法应用于巴格达市区负荷预测。最后,用MATLAB实现了该方法,并与经典的支持向量机方法进行了比较。结果表明,该方法对绝对比例误差(MAPE)项的预测精度有明显的提高。
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