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Robust Adaptive Control for Nonlinear Discrete-Time Systems by Using Multiple Models

机译:非线性离散系统的多种模型鲁棒自适应控制

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摘要

Back propagation (BP) neural network is used to approximate the dynamic character of nonlinear discrete-time system. Considering the unmodeling dynamics of the system, the weights of neural network are updated by using a dead-zone algorithm and a robust adaptive controller based on the BP neural network is proposed. For the situation that jumping change parameters exist, multiple neural networks with multiple weights are built to cover the uncertainty of parameters, and multiple controllers based on these models are set up. At every sample time, a performance index function based on the identification error will be used to choose the optimal model and the corresponding controller. Different kinds of combinations of fixed model and adaptive model will be used for robust multiple models adaptive control (MMAC). The proof of stability and convergence of MMAC are given, and the significant efficacy of the proposed methods is tested by simulation.
机译:反向传播(BP)神经网络用于近似非线性离散时间系统的动态特性。考虑到系统的非建模动力学,通过使用死区算法来更新神经网络的权重,并提出了一种基于BP神经网络的鲁棒自适应控制器。针对存在跳跃变化参数的情况,建立了具有多个权重的多个神经网络来覆盖参数的不确定性,并基于这些模型建立了多个控制器。在每个采样时间,基于识别误差的性能指标函数将用于选择最佳模型和相应的控制器。固定模型和自适应模型的不同组合将用于鲁棒多模型自适应控制(MMAC)。给出了MMAC算法的稳定性和收敛性证明,并通过仿真验证了所提方法的有效性。

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