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Fuzzy c-regression models based on the BELS method for nonlinear system identification

机译:基于BELS法的非线性系统识别方法模糊C-返回模型

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A fuzzy c-regression model clustering algorithm based on Bias-Eliminated Least Squares method (BELS) is presented. This method is designed to develop an identification procedure for noisy nonlinear systems. The BELS method is used to identify consequent parameters and eliminate the bias. The proposed approach has been applied to benchmark modeling problem which proved a good performance.
机译:提出了一种基于偏置最小二乘法(BEL)的模糊C-回归模型聚类算法。该方法旨在开发噪声非线性系统的识别过程。 BELS方法用于识别后续参数并消除偏差。拟议的方法已被应用于基准建模问题,证明了良好的表现。

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