模糊回归作为短期负荷预测的辅助工具

J. Rothe, A. Wadhwani, S. Wadhwani
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摘要

到目前为止,为了提高负荷预测的精度,人们对负荷预测进行了许多研究,采用了各种方法,如回归、人工神经网络(ANN)和神经网络模糊方法。为了减小负荷预测误差,将模糊回归分析的概念引入负荷预测问题。利用模糊概念分析了回归预测结果与实际结果的差异。然后根据预测中涉及的模糊误差进行误差校正。预测结果需要专家推理,而模糊推理是有益的。分析结果清楚地支持这一观点。利用历年负荷数据建立模糊线性回归模型,通过求解混合线性规划问题求出模型的系数。对预测结果进行模糊校正,使误差从1%提高到3%。
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Fuzzy regression as an additive tool for short term load forecasting
So far, many studies on the load forecasting have been made to improve the prediction accuracy using various methods such as regression, artificial neural network (ANN) and neural network-fuzzy methods. In order to reduce the load forecasting error, the concept of fuzzy regression analysis is employed to load forecasting problem. The difference between regressed forecasting results and actual results is analyzed using fuzzy concept. Error correction was then applied based on fuzzy sense of error involved in prediction. Forecasted results need expert inference for which fuzzy proves to be beneficial. Results analyzed clearly support the viewpoint. The fuzzy linear regression model is made from the load data of the previous years and the coefficients of the model are found by solving the mixed linear programming problem. The fuzzy correction in predicted results improved the error from 1 to 3 %.
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