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An Improved-WM Method Based on Optimization of Centers of Output Fuzzy Subsets for Fuzzy Rules

机译:一种基于输出模糊子集中心优化的模糊规则改进WM方法

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The generation of fuzzy rules from samples is significant for fuzzy modelling. To improve the robustness of Wang-Mendel (WM) method, an improved WM method to extract fuzzy rules from all the regularized sample data was proposed. However, the accuracy of the model with this method is degraded for the conflicting rules with small difference between support degrees. And the output subsets can only be chosen from the pre-defined ones. To solve these problems, we develop an improved-WM method based on optimization of centers of output fuzzy subsets for fuzzy rules (COiWM). This method adopts the fuzzy c-means (FCM) clustering algorithm to divide the input and output spaces, and the improved WM method which replaces the original data by regularized data is used to calculate the support degrees. Then the support degrees are used as weights to optimize the centers of output fuzzy subsets with a method of weighted averages, so as to enhance the accuracy of a fuzzy model. Experimental results of a case study on short term daily maximum electric load forecasting prove that our proposed method enhances the accuracy of a fuzzy model.
机译:从样本生成模糊规则对于模糊建模具有重要意义。为了提高Wang-Mendel(WM)方法的鲁棒性,提出了一种从所有正则样本数据中提取模糊规则的改进的WM方法。但是,由于支持度之间的差异很小,因此对于冲突的规则,使用这种方法的模型的准确性会降低。输出子集只能从预定义的子集中选择。为了解决这些问题,我们基于模糊规则(COiWM)的输出模糊子集中心的优化开发了一种改进的WM方法。该方法采用模糊c均值(FCM)聚类算法划分输入和输出空间,并使用改进的WM方法(用正则化数据代替原始数据)来计算支持度。然后利用支持度作为权重,采用加权平均的方法优化输出模糊子集的中心,从而提高模糊模型的准确性。短期每日最大电力负荷预测的案例研究的实验结果证明,我们提出的方法提高了模糊模型的准确性。

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