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A Neural Circuit Model of Adaptive Robust Tracking Control for Continuous-Time Nonlinear Systems

机译:连续时间非线性系统的自适应鲁棒跟踪控制的神经电路模型

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A neural circuit model of adaptive robust tracking control for continuous-time unknown nonlinear dynamic systems is presented. A first-order differential equation with variable structure and an output equation are used to describe the circuit. A corresponding functional block-diagram of the circuit is given. There is discussed a possibility of software and hardware implementation of the circuit. Stability and convergence analysis of the circuit states is performed based on Lyapunov second method. An upper bound is estimated for the time required to reach a steady state by the circuit. The circuit operation with disturbances of its nonlinearity is discussed. The circuit has simple architecture, it can provide bounded tracking error and finite controlled convergence time to steady states and does not need off-line learning phase. Computer simulations of the circuit operation confirming the theoretical derivations and illustrating the performance of the circuit are provided.
机译:提出了连续时间未知的非线性动力系统的自适应鲁棒跟踪控制的神经电路模型。具有可变结构的一阶微分方程和输出方程用于描述电路。给出了电路的相应功能框图。讨论了电路的软件和硬件实现的可能性。电路状态的稳定性和收敛性分析是基于Lyapunov第二种方法进行的。估计电路达到稳态所需时间的上限。讨论了具有非线性干扰的电路工作。该电路结构简单,可以提供稳定的稳态跟踪误差和有限的收敛时间,并且无需离线学习阶段。提供了电路操作的计算机仿真,证实了理论推导并说明了电路的性能。

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