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Decentralized adaptive neural network state and output feedback control of a class of interconnected nonlinear discrete-time systems

机译:一类互联非线性离散时间系统的分散自适应神经网络状态和输出反馈控制

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摘要

In this paper, novel decentralized controllers are introduced for a class of nonlinear interconnected discrete-time systems in an affine form with unknown internal subsystem and interconnection dynamics. First under the assumption that the state vector of the local subsystem is only measurable, a single neural network (NN)-based decentralized tracking controller is introduced to overcome the unknown internal dynamics as well as the control gain matrix of each subsystem. The NN weights are tuned online by using a novel update law, and thus, no offline training is employed. By using Lyapunov techniques, all subsystems signals are shown to be uniformly ultimately bounded (UUB). Next, the tracking problem is considered by using output feedback via a nonlinear NN observer. Lyapunov techniques demonstrate that the subsystems states, NN weight estimation errors, and state estimation errors are all UUB. Simulation results are provided on interconnected nonlinear discrete-time systems in affine form and on a power system with excitation control to show the effectiveness of the approach.
机译:在本文中,针对一类具有未知内部子系统和互连动力学的仿射形式的非线性互连离散时间系统,介绍了新颖的分散控制器。首先,在假设本地子系统的状态向量仅可测量的前提下,引入了基于单个神经网络(NN)的分散式跟踪控制器,以克服未知的内部动力学以及每个子系统的控制增益矩阵。 NN权重通过使用新的更新定律在线调整,因此,不使用任何离线训练。通过使用李雅普诺夫(Lyapunov)技术,所有子系统信号均显示为统一最终有界(UUB)。接下来,通过使用经由非线性NN观测器的输出反馈来考虑跟踪问题。 Lyapunov技术证明子系统状态,NN权重估计误差和状态估计误差均为UUB。在仿射形式的互连非线性离散时间系统和带有励磁控制的电力系统上提供了仿真结果,以证明该方法的有效性。

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  • 来源
    《American Control Conference;ACC》|2012年|p.6406- 6411|共6页
  • 会议地点 Montreal(CA)
  • 作者

    Mehraeen, S.;

  • 作者单位

    Department of Electrical and Computer Engineering Louisiana State University 102 S Campus Dr Baton Rouge LA 70803;

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