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Model reference adaptive control of a class of non-autonomous systems using serial input neuron

机译:使用串行输入神经元的一类非自治系统的模型参考自适应控制

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摘要

The serial input neuron is an effective approximator of real-valued functions defined on the real line. In this paper, a serial input neuron-based model reference adaptive controller is proposed for the control of a class of uncertain non-autonomous systems. An on-line learning rule is developed to approximate the unknown nonlinear terms so that closed-loop stability as well as internal signal boundedness can be guaranteed using traditional Lyapunov design as long as the approximation error is sufficiently small. Simulation examples are provided to demonstrate the design of the proposed control system. In addition, an off-line learning simulation result is also presented for comparison.
机译:串行输入神经元是在实线上定义的实值函数的有效近似器。针对一类不确定的非自治系统,提出了一种基于串行输入神经元的模型参考自适应控制器。开发了一种在线学习规则来近似未知的非线性项,因此只要近似误差足够小,就可以使用传统的Lyapunov设计来确保闭环稳定性以及内部信号有界度。提供了仿真示例来演示所提出的控制系统的设计。此外,还提供了离线学习仿真结果以进行比较。

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