首页> 外文会议>7th Biennial Conference on Engineering Systems Design and Analysis 2004(ESDA 2004) vol.1: Advanced Energy Systems; Advanced Heat Transfer in Engineering Systems; ... >DIRECT ADAPATIVE CONTROL FOR A CERTAIN CLASS OF NONLINEAR SYSTEMS USING MODIFIED RADIAL BASIS FUNCTION NEURAL NETWORK
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DIRECT ADAPATIVE CONTROL FOR A CERTAIN CLASS OF NONLINEAR SYSTEMS USING MODIFIED RADIAL BASIS FUNCTION NEURAL NETWORK

机译:基于修正径向基函数神经网络的某些非线性系统的直接自适应控制

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This paper proposes a direct adaptive controller for SISO affine nonlinear systems using Gaussian radial basis function (RBF) neural network (NN). The exact plant model is not necessary for composing the controller. If the plant is SISO, of affine form, without zero dynamics, and all the state variables are available, the controller is applicable under several mild assumptions. In this paper, the Gaussian RBF network (GRBFN) is modified to include pre-scale weights as its parameters for the input variables, which are also adapted in the control law. Pre-scaling the inputs is equivalent to extending or contracting the spectrum of the approximated function. With the modification, the spectrum along each coordinate of the domain can be scaled separately for approximating. The adaptation of the nonlinear parameters, including the variances, centers, and pre-scaling weights, are derived. Appropriate modification techniques are applied to the adaptation laws to ensure the robustness. The stability is analyzed with Lya-punov's Theory. From the analysis, the effect of the controller design parameters is also examined. A simulation of an inverted pendulum control is demonstrated to show the effectiveness.
机译:本文提出了一种基于高斯径向基函数(RBF)神经网络(NN)的SISO仿射非线性系统的直接自适应控制器。组成控制器不需要精确的工厂模型。如果工厂是仿射形式的SISO,没有零动态,并且所有状态变量均可用,则该控制器可在几种温和的假设下适用。在本文中,对高斯RBF网络(GRBFN)进行了修改,使其包含预缩放权重作为其输入变量的参数,该权重也已在控制律中进行了调整。对输入进行预缩放等效于扩展或缩小近似函数的频谱。通过修改,沿域每个坐标的频谱可以分别缩放以进行近似。得出了非线性参数的适应性,包括方差,中心和预缩放权重。将适当的修改技术应用于适应律,以确保鲁棒性。用李雅普诺夫理论分析稳定性。通过分析,还检查了控制器设计参数的影响。倒立摆控制的仿真证明了其有效性。

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