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Direct adaptive regulation and robustness analysis for systems in Brunovsky form using a new Neuro-Fuzzy method

机译:使用新的神经模糊方法对Brunovsky形式的系统直接的自适应调节和鲁棒性分析

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The direct adaptive regulation of unknown nonlinear dynamical systems in Brunovsky form with modeling error effects, is considered in this paper. The method is based on a new Neuro-Fuzzy Dynamical System definition, which uses the concept of Fuzzy Adaptive Systems (FAS) operating in conjunction with High Order Neural Network Functions (HONNFs). Since the plant is considered unknown, we propose its approximation by a special form of a Brunovsky type fuzzy dynamical system (FDS) assuming also the existence of disturbance expressed as modeling error terms depending on both input and system states. The development is combined with a sensitivity analysis of the closed loop in the presence of modeling imperfections and provides a comprehensive and rigorous analysis of the stability properties of the closed loop system. Simulations illustrate the potency of the method and its applicability is tested on the well known benchmark “Inverted Pendulum”, where it is shown that our approach is superior to the case of simple Recurrent High Order Neural Networks (RHONNs).
机译:本文考虑了用建模误差效果的Brunovsky形式的未知非线性动力系统的直接自适应调节。该方法基于新的神经模糊动态系统定义,它使用模糊自适应系统(FAS)的概念与高阶神经网络功能(Honnfs)一起运行。由于该工厂被认为是未知的,我们通过特殊形式的Brunovsky型模糊动态系统(FDS)提出了其近似,假设根据输入和系统状态表示作为建模误差术语的干扰存在。该开发与闭环存在于模型缺陷的情况下,对闭环系统的稳定性分析进行了全面且严谨的分析。仿真说明了该方法的效力,并且其适用性在众所周知的基准“倒摆”上测试,示出了我们的方法优于简单的经常性高阶神经网络(Rhonns)的情况。

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