Uniform Boundedness of Feedback Error Learning for a Class of Stochastic Nonlinear Systems

J. Doornik, A. Ishihara, T. Sanger
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Abstract

In this paper we analyze stochastic stability and boundedness of the neurophysiologically inspired feedback error learning (FEL) paradigm, a control algorithm that uses an inverse model of the plant to maximize tracking performance under uncertain conditions. FEL is analyzed in the framework of an adaptive state feedback controller. An inverse model of the plant is adaptively learned by a neural network based on basis functions, while the output of the feedback controller is used as the training signal. The nonlinear plant under consideration is described as a multidimensional SISO stochastic differential equation. The tracking error was shown to be uniformly bounded in the case where the variance of the noise on the parameter update rule was constant and the variance of the noise on the state variables was a function of the tracking error. When the system was allowed to have only noise on the states variables, with variance linear to the tracking error, then FEL was shown to be stochastically stable
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一类随机非线性系统反馈误差学习的一致有界性
在本文中,我们分析了神经生理学启发的反馈错误学习(FEL)范式的随机稳定性和有界性,FEL是一种在不确定条件下使用植物的逆模型来最大化跟踪性能的控制算法。在自适应状态反馈控制器的框架下分析了自由振荡。基于基函数的神经网络自适应学习被控对象的逆模型,反馈控制器的输出作为训练信号。所考虑的非线性对象被描述为一个多维SISO随机微分方程。当参数更新规则上的噪声方差恒定,状态变量上的噪声方差是跟踪误差的函数时,跟踪误差呈均匀有界。当系统状态变量只有噪声,且方差与跟踪误差成线性关系时,证明了自由电子系统是随机稳定的
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