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Adaptive control of a class of nonlinear discrete-time systemsusing neural networks

机译:基于神经网络的一类非线性离散时间系统的自适应控制

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摘要

Layered neural networks are used in a nonlinear self-tuning adaptive control problem. The plant is an unknown feedback-linearizable discrete-time system, represented by an input-output model. To derive the linearizing-stabilizing feedback control, a (possibly nonminimal) state-space model of the plant is obtained. This model is used to define the zero dynamics, which are assumed to be stable, i.e., the system is assumed to be minimum phase. A linearizing feedback control is derived in terms of some unknown nonlinear functions. A layered neural network is used to model the unknown system and generate the feedback control. Based on the error between the plant output and the model output, the weights of the neural network are updated. A local convergence result is given. The result says that, for any bounded initial conditions of the plant, if the neural network model contains enough number of nonlinear hidden neurons and if the initial guess of the network weights is sufficiently close to the correct weights, then the tracking error between the plant output and the reference command will converge to a bounded ball, whose size is determined by a dead-zone nonlinearity. Computer simulations verify the theoretical result
机译:分层神经网络用于非线性自调谐自适应控制问题。该工厂是一个未知的反馈线性化离散时间系统,由输入输出模型表示。为了导出线性化稳定反馈控制,获得了植物的(可能是非最小的)状态空间模型。该模型用于定义假定为稳定的零动态,即假定系统为最小相位。根据一些未知的非线性函数得出线性化反馈控制。分层神经网络用于建模未知系统并生成反馈控制。根据工厂输出和模型输出之间的误差,更新神经网络的权重。给出了局部收敛结果。结果表明,对于工厂的任何有界初始条件,如果神经网络模型包含足够数量的非线性隐藏神经元,并且如果网络权重的初始猜测足够接近正确的权重,则工厂之间的跟踪误差输出和参考命令将收敛到一个有界球,其大小由死区非线性决定。计算机仿真验证了理论结果

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