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Short-term Load Forecasting Model Using Fuzzy C Means Based Radial Basis Function Network

机译:基于径向基函数网络的模糊C均值短期负荷预测模型

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This paper presents the application of fuzzy c means based radial basis function (RBF) network model to short term load forecasting problem. Traditional learning process for BP network is a nonlinear optimizing process, thus resulting in slow convergence speed, local minima. While the ability of approaching nonlinear function and convergence speed for RBF is superior to BP network. Before training network, suitable historical data were selected as training set through calculating difference degree function. This can make the training set representative, thus reduce training time. The proposed model has been implemented on real data: inputs to RFB are historical load value, weather, day and temperature information, and the output is the load forecast for the given hour. This model can effectively improve the speed of convergence. Using the presented model, the better forecasting accuracy and learning potency can be achieved
机译:本文介绍了基于模糊C装置的径向基函数(RBF)网络模型在短期负荷预测问题中的应用。 BP网络的传统学习过程是非线性优化过程,从而导致收敛速度慢,局部最小值。虽然接近RBF的非线性功能和收敛速度的能力优于BP网络。在培训网络之前,选择合适的历史数据作为通过计算差异度函数设置的培训。这可以使训练集代表置,从而减少培训时间。该建议的模型已经在实际数据上实现:RFB的输入是历史负载值,天气,日和温度信息,并且输出是给定小时的负载预测。该模型可以有效地提高收敛速度。使用呈现的模型,可以实现更好的预测精度和学习效力

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