Adaptive event-triggered control of a uncertain linear discrete time system using measured input and output data

A. Sahoo, Hao Xu, S. Jagannathan
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引用次数: 13

Abstract

In this paper, an adaptive model-based event-triggered control of an uncertain linear discrete time system is developed. Measured input and output vectors and their history are utilized to express the unknown linear discrete-time system as an autoregressive Markov representation (ARMarkov). A novel adaptive model in the form of AR Markov is proposed and an update law is derived in order to estimate parameters of the ARMarkov model at triggered instants unlike periodic updates in standard adaptive control. Lyapunov method is used to derive the event trigger condition, prove boundedness of the parameter vector and asymptotic convergence of the outputs and states. A simulation example is utilized to verify theoretical claims and a comparison of the proposed with zero order hold (ZOH) and fixed model-based schemes is also discussed as part of simulation.
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基于测量输入输出数据的不确定线性离散时间系统的自适应事件触发控制
提出了一种基于自适应模型的不确定线性离散时间系统的事件触发控制方法。利用测量的输入和输出向量及其历史将未知的线性离散系统表示为自回归马尔可夫表示(ARMarkov)。提出了一种新的AR马尔可夫自适应模型,并推导了一种更新规律,用于在触发时刻估计AR马尔可夫模型的参数,而不像标准自适应控制中的周期性更新。利用李雅普诺夫方法推导了事件触发条件,证明了参数向量的有界性以及输出和状态的渐近收敛性。利用仿真实例验证了理论主张,并将所提出的方案与零阶保持(ZOH)和基于固定模型的方案进行了比较。
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