Takagi-Sugeno模型在线辨识的混合模糊递推最小二乘估计

Lei Pan, Shen Jiong, P. Luh
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引用次数: 2

摘要

如果不考虑每个采样点的隶属度特征,局部模糊递归最小二乘(FRLS)算法和全局模糊递归最小二乘算法都无法获得理想的Takagi-Sugeno (TS)模糊模型的在线估计精度。本文提出了一种新的混合FRLS (MFRLS)算法来解决这一问题。该算法通过在每个更新时刻对采样点的隶属度特征进行局部估计和全局估计的加权,动态生成多目标代价函数。然后通过求解多目标优化问题,推导出局部估计和全局估计的混合协方差矩阵。在混合协方差矩阵的基础上,通过进一步的解析推导得到了一套MFRLS公式。在时变非线性模型上的仿真实验证明了MFRLS的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A mixed fuzzy recursive least-squares estimation for online identification of Takagi-Sugeno models
Without considering the membership feature of each sampling point, both the local fuzzy recursive least-squares (FRLS) and the global FRLS algorithm cannot get an ideal online estimation precision of a Takagi-Sugeno (TS) fuzzy model. This paper proposes a novel mixed FRLS (MFRLS) algorithm for solving the problem. It dynamically makes a multiobjective cost function by weighting the local estimation and global estimation on the membership feature of the sampling point at each updating instant. Then the mixed co-variance matrix of the local and global estimation is deduced by solving the multiobjective optimization problem. Based on the mixed co-variance matrix, a set of MFRLS formula is obtained by further analytical deduction. The simulation experiments on a time-varying nonlinear model have proved the advantages of MFRLS.
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