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Short-Term Load Forecasting for the Holidays Using Fuzzy Linear Regression Method

机译:基于模糊线性回归的假期短期负荷预测

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摘要

Average load forecasting errors for the holidays are much higher than those for weekdays. So far, many studies on the short-term load forecasting have been made to improve the prediction accuracy using various methods such as deterministic, stochastic, artificial neural net (ANN) and neural network-fuzzy methods. In order to reduce the load forecasting error of the 24 hourly loads for the holidays, the concept of fuzzy regression analysis is employed in the short-term load forecasting problem. According to the historical load data, the same type of holiday showed a similar trend of load profile as in previous years. The fuzzy linear regression model is made from the load data of the previous three years and the coefficients of the model are found by solving the mixed linear programming problem. The1 proposed algorithm shows good accuracy, and the average maximum percentage error is 3.57% in the load forecasting of the holidays for the years of 1996-1997.
机译:假期的平均负荷预测误差比工作日的平均预测误差高得多。到目前为止,已经进行了许多有关短期负荷预测的研究,以使用确定性,随机,人工神经网络(ANN)和神经网络模糊方法等各种方法来提高预测精度。为了减少节假日24小时负荷的负荷预测误差,在短期负荷预测问题中采用了模糊回归分析的概念。根据历史负荷数据,相同类型的假期显示出与往年相似的负荷曲线趋势。根据前三年的负荷数据建立了模糊线性回归模型,并通过求解混合线性规划问题找到了模型的系数。提出的算法具有很好的准确性,在1996-1997年的假日负荷预测中,平均最大百分比误差为3.57%。

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