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A neuro-fuzzy adaptive sliding mode controller: Application to second-order chaotic system

机译:神经模糊自适应滑模控制器:用于二阶混沌系统的应用

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To control complex dynamical systems, which are frequently coupled with unknown dynamics, modeling errors, nonlinearities, various sorts of disturbances, uncertainties and noise robust or model-free control methods should be employed. The features of a novel dynamical algorithm for robust adaptive learning in fuzzy rule-based neural networks of Takagi-Sugeno-Kang type with sigmoid membership functions and its application to the neuro-fuzzy adaptive nonlinear feedback control of systems with uncertain dynamics are presented. The proposed approach makes direct use of variable structure systems theory and the feedback-error-learning scheme. In the simulations, it has been tested on the control of Duffing oscillator and the analytical claims have been justified under the existence of uncertainty and large nonzero initial errors.
机译:为了控制复杂的动态系统,该系统经常与未知的动态,建模误差,非线性,各种扰动,不确定性和噪声稳健或无模型控制方法应采用。呈现了一种新型动力学算法的特征,其具有Sigmoid隶属函数的基于Takagi-sugeno-kang型的模糊规则的神经网络中的鲁棒自适应学习的特征及其应用于具有不确定动力学的系统的神经模糊自适应非线性反馈控制。所提出的方法直接使用可变结构系统理论和反馈纠错方案。在模拟中,它已经测试了Duffing振荡器的控制,并且在存在不确定性和大非零初始错误的情况下,分析权利要求一直是合理的。

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