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Fuzzy iterative learning identification algorithms of time-varying nonlinear systems

机译:时变非线性系统的模糊迭代学习辨识算法

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Two fuzzy iterative learning identification algorithms are presented, in this paper, for modeling and identification of continuous time-varying nonlinear systems. The algorithms are used to adjust the parameters involved in the fuzzy systems, by means of the iterative learning manner, where the system undertaken runs over a finite interval repeatedly. The compensation is introduced in the learning mechanism to eliminate the influence of the approximation error. With the use of time-varying fuzzy systems for the identification of time-varying nonlinear systems, the less number of fuzzy rules is expected, which helps to reduce the online computation of the identification process. In this paper, Lyapunov approach is used for the identifier design and the convergence analysis. The identification error is ensured to converge to zero over the entire interval after a number of iterations, and all the parameter estimates are guaranteed to be bounded.
机译:提出了两种模糊迭代学习辨识算法,用于连续时变非线性系统的建模与辨识。该算法用于通过迭代学习的方式来调整模糊系统中涉及的参数,其中所采用的系统在有限的间隔内反复运行。在学习机制中引入了补偿,以消除近似误差的影响。通过使用时变模糊系统来识别时变非线性系统,可以减少模糊规则的数量,这有助于减少识别过程的在线计算。本文将Lyapunov方法用于标识符的设计和收敛性分析。经过多次迭代后,确保整个过程中的识别误差均收敛为零,并且保证所有参数估计均是有界的。

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