Self-triggered Resilient Stabilization of Linear Systems with Quantized Output

Wenjie Liu, M. Wakaiki, Jian Sun, G. Wang, Jie Chen
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引用次数: 4

Abstract

This paper studies the problem of stabilizing a self-triggered control system with quantized output. Employing a standard observer-based state feedback control law, a self-triggering mechanism that dictates the next sampling time based on quantized output is co-developed with an output encoding scheme. If, in addition, the transmission protocols at the controller-to-actuator (C-A) and sensor-to-controller (S-C) channels can be adapted, the self-triggered control architecture can be considerably simplified, leveraging a delicate observer-based deadbeat controller to eliminate the need for running the controller in parallel at the encoder side. To account for denial-of-service (DoS) in the S-C channel, the proposed output encoding and self-triggered control schemes are further made resilient. It is shown that a linear time-invariant system can be exponentially stabilized if some conditions on the average DoS duration time are met. There is a trade-off between the maximum inter-sampling time and the resilience against DoS attacks. Finally, a numerical example is presented to demonstrate the practical merits of the proposed self-triggered control schemes and associated theory.
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具有量化输出的线性系统的自触发弹性镇定
研究了具有量化输出的自触发控制系统的镇定问题。采用标准的基于观测器的状态反馈控制律,基于量化输出的自触发机制与输出编码方案共同开发了下一个采样时间。此外,如果可以适应控制器到执行器(C-A)和传感器到控制器(S-C)通道的传输协议,则可以大大简化自触发控制架构,利用基于观测器的精致无差拍控制器来消除在编码器侧并行运行控制器的需要。为了考虑S-C通道中的拒绝服务(DoS),所提出的输出编码和自触发控制方案进一步具有弹性。证明了线性定常系统在平均持续时间满足一定条件时是指数稳定的。在最大采样时间和抗DoS攻击的弹性之间存在权衡。最后,给出了一个数值算例来说明所提出的自触发控制方案和相关理论的实际优点。
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