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Noise elimination of nonlinear systems using Takagi-Sugeno model

机译:高穗型模型的非线性系统噪声消除

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In the old paper of Mukhopadhyay and Narendra, the problem of disturbance rejection in the control of nonlinear systems with additive disturbance generated by some unforced dynamical systems, was formulated and solved by using neural networks for several models of varying complexity, but the purpose of this paper is how using the fuzzy set systems in the problem of disturbance rejection, and to provide theoretical justification to existence of solution. The objective is to determine the identification model and the control law to minimize the effect of the disturbance at the output. In all cases, several stages of increasing complexity of the problem are discussed in detail. Two simulation studies based on the results discussed are included towards the end of the paper.
机译:在Mukhopadhyay and Narendra的旧纸中,通过使用神经网络为多种不同复杂性的多种模型,制定并解决了由一些未加工动态系统产生的非线性系统控制中的扰动抑制问题。纸张是如何在扰动抑制问题中使用模糊集系统,并为解决方案的存在提供理论的理由。目的是确定识别模型和控制定律,以最小化扰动对输出的影响。在所有情况下,详细讨论了问题越来越复杂的几个阶段。基于所讨论的结果的两项模拟研究包括在纸张的末尾。

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