基于网络安全通信的交换系统的经验继承智能MPC学习

Yiwen Qi;Yiwen Tang;Wenke Yu
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引用次数: 0

摘要

研究了切换系统的学习经验继承智能模型预测控制(LEII-MPC)。对于复杂的环境和系统,设计一种具有学习能力的智能控制方法是必要的,也是有意义的。首先,根据平均停留时间法设计了协调迭代学习控制动作的切换律;其次,设计了具有迭代学习经验的智能MPC机制来优化控制动作;利用所设计的LEII-MPC,给出了具有事件触发方案的切换系统在时域和迭代域稳定的充分条件。迭代领域的ETS是为了解决不必要的迭代更新。在时域中,ETS主要处理潜在的拒绝服务攻击,主要包括两个部分:1)检测方面,提出了一种与攻击相关的事件触发方法来确定攻击顺序,减少数据包丢失;2)作为补偿,使用缓冲区来保证系统在攻击期间的性能。最后,通过数值算例验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Empirical Inherited Intelligent MPC for Switched Systems With Network Security Communication
This article studies learning empirical inherited intelligent model predictive control (LEII-MPC) for switched systems. For complex environments and systems, an intelligent control method design with learning ability is necessary and meaningful. First, a switching law that coordinates the iterative learning control action is devised according to the average dwell time approach. Second, an intelligent MPC mechanism with the iteration learning experience is designed to optimize the control action. With the designed LEII-MPC, sufficient conditions for the switched systems stability equipped with the event-triggering schemes (ETSs) in both the time domain and the iterative domain are presented. The ETS in the iterative domain is to solve unnecessary iterative updates. The ETS in the time domain is to deal with potential denial of service (DoS) attacks, which includes two parts: 1) for detection, an attack-dependent event-triggering method is presented to determine attack sequence and reduce lost packets; and 2) for compensation, a buffer is used to ensure system performance during the attack period. Last, a numerical example shows the effectiveness of the proposed method.
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CiteScore
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