Fuzzy Models for Short Term Power Forecasting in Palestine

Raed Basbous
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Abstract

Short-Term Load Forecasting (STLF) is needed to efficiently manage the power systems. In this paper, two kinds of models that depend on the Fuzzy based techniques are developed to represent the STLF models in Palestine. Different types of these models have been developed using the available data sets that include the past electric load values and the climatic variables as inputs. It is shown that the climatic variables have a major effect on the predicted load. Various optimization techniques are used to develop the proposed models including hybrid and Backpropagation optimization techniques, Subtractive Clustering, and combining the Subtractive Clustering and Hybrid optimization techniques. The obtained results indicate the efficiency of the proposed models using the time and weather data.
巴勒斯坦短期电力预测模糊模型
为了有效管理电力系统,需要进行短期负荷预测(STLF)。本文开发了两种基于模糊技术的模型,用于表示巴勒斯坦的 STLF 模型。这些模型的不同类型是利用现有数据集开发的,其中包括作为输入的过去电力负荷值和气候变量。结果表明,气候变量对预测负荷有重大影响。在开发建议的模型时使用了多种优化技术,包括混合优化技术和反向传播优化技术、减法聚类技术,以及减法聚类技术和混合优化技术的结合。获得的结果表明,利用时间和天气数据建立的模型非常有效。
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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