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Utilizing higher-order neural networks in U-model based controllers for stable nonlinear plants

机译:在基于U模型的控制器中使用高阶神经网络来稳定非线性植物

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摘要

The use of intelligent control schemes in nonlinear model based control (NMBC) has gained widespread popularity. Neural networks, in particular, have been used extensively to model the dynamics of nonlinear plants. However, in most cases, these models do not lend themselves to easy maneuvering for controller design. Therefore, a common need is being felt to develop intelligent control strategies that lead to computationally simple control laws. To address this issue, we recently proposed a U-model based controller utilizing nonlinear adaptive filters. The present work extends that concept further to include higher-order neural networks (HONN) for better approximation. The main feature of the proposed structure is its ability to capture higher-order nonlinear properties of the input pattern space while allowing the synthesis of a simple control law. The effectiveness of the proposed scheme is demonstrated through application to various nonlinear models and a comparison with the Backstepping controller is presented.
机译:在基于非线性模型的控制(NMBC)中使用智能控制方案已获得广泛普及。尤其是神经网络已被广泛用于建模非线性植物的动力学。但是,在大多数情况下,这些模型并不便于操纵器设计。因此,人们感到普遍需要开发导致计算简单的控制律的智能控制策略。为了解决这个问题,我们最近提出了利用非线性自适应滤波器的基于U模型的控制器。本工作进一步扩展了该概念,以包括更好的近似高阶神经网络(HONN)。所提出的结构的主要特征是它能够捕获输入模式空间的高阶非线性特性,同时允许合成简单的控制定律。通过应用于各种非线性模型证明了该方案的有效性,并与Backstepping控制器进行了比较。

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