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Data-driven virtual reference controller design for high-order nonlinear systems via neural network

机译:基于神经网络的高阶非线性系统数据驱动虚拟参考控制器设计

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This paper is concerned with data-driven methods for virtual reference controller design of high-order nonlinear systems via neural network. Virtual reference feedback tuning (VRFT) is a one-shot direct data-based method to design controller of linear or nonlinear systems. In this paper, we recall the model reference control problem of high-order nonlinear systems and design a new objective function of VRFT. In ideal conditions, the two problems are demonstrated to have the same solution. For the first time, we prove that the value of the optimization problem for model reference control is bounded by that of the objective function of VRFT. A three-layer neural network is employed as a general approximator of the designed controller and two simulations are given to verify the validity of our method.
机译:本文研究了基于神经网络的高阶非线性系统虚拟参考控制器设计的数据驱动方法。虚拟参考反馈调整(VRFT)是一种基于直接数据的一次性设计方法,用于设计线性或非线性系统的控制器。在本文中,我们回顾了高阶非线性系统的模型参考控制问题,并设计了一个新的VRFT目标函数。在理想条件下,这两个问题被证明具有相同的解决方案。首次证明了模型参考控制的优化问题的价值受VRFT目标函数的价值所限制。采用三层神经网络作为所设计控制器的通用逼近器,并进行了两次仿真以验证我们方法的有效性。

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