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A Fuzzy-neural Multi-model For Nonlinear Systems Identification And Control

机译:非线性系统辨识与控制的模糊神经多模型

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摘要

The paper proposed to apply a hierarchical fuzzy-neural multi-model and Takagi-Sugeno (T-S) rules with recurrent neural procedural consequent part for systems identification, states estimation and adaptive control of complex nonlinear plants. The parameters and states of the local recurrent neural network models are used for a local direct and indirect adaptive trajectory tracking control systems design. The designed local control laws are coordinated by a fuzzy rule-based control system. The upper level defuzzyfication is performed by a recurrent neural network. The applicability of the proposed intelligent control system is confirmed by simulation examples and by a DC-motor identification and control experimental results. Two main cases of a reference and plant output fuzzyfication are considered-a two membership functions without overlapping and a three membership functions with overlapping. In both cases a good convergent results are obtained.
机译:本文提出将层次模糊神经网络多模型和Takagi-Sugeno(T-S)规则与递归神经过程的结果部分一起应用于复杂非线性植物的系统识别,状态估计和自适应控制。局部递归神经网络模型的参数和状态用于局部直接和间接自适应轨迹跟踪控制系统设计。设计的本地控制律由基于模糊规则的控制系统协调。上级去模糊处理由循环神经网络执行。仿真实例,直流电动机辨识与控制实验结果证实了所提出智能控制系统的适用性。考虑参考和工厂输出模糊化的两个主要情况-两个不重叠的隶属函数和三个重叠的隶属函数。在这两种情况下,都获得了良好的收敛结果。

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