LQR performance for multi-agent systems: Benefits of introducing delayed inter-agent measurements

A. Seuret, P. Menon, C. Edwards
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引用次数: 7

Abstract

This paper deals with the design of an optimal controller for a set of identical multi-agent systems. The problem under consideration is to examine if there is any benefit to adding to the classical local optimal control law, obtained from solving a Riccati equation, a term which depends on delayed relative information with respect to neighbouring agents. The resulting control law has a local linear feedback term (from solving the Riccati equation) and a consensus-like term which depends on a delayed version of the relative states with respect to its neighbours. The resulting closed loop system at a network level is linear and involves delayed states. A Lyapunov-Krasovskii approach is used to synthesize the gain associated with the consensus term to provide sub-optimal LQR-like performance at a network level. Situations are demonstrated when this approach provides better performance (in terms of the LQR cost) than when a traditional decentralised approach is adopted.
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多代理系统的LQR性能:引入延迟代理间度量的好处
本文研究了一组相同的多智能体系统的最优控制器的设计。考虑的问题是检查是否有任何好处加入经典的局部最优控制律,由求解Riccati方程得到,这一项取决于对邻近代理的延迟相对信息。由此产生的控制律有一个局部线性反馈项(来自求解Riccati方程)和一个类似共识的项,它依赖于相对于其邻居的相对状态的延迟版本。由此产生的网络级闭环系统是线性的,并且涉及延迟状态。使用Lyapunov-Krasovskii方法来综合与共识项相关的增益,以在网络级别提供次优的lqr类性能。当这种方法比采用传统的去中心化方法提供更好的性能(就LQR成本而言)时,演示了这种情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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