Distributed Minmax Strategy for Consensus Tracking in Differential Graphical Games: A Model-Free Approach

IF 1.9 Q3 COMPUTER SCIENCE, CYBERNETICS IEEE Systems Man and Cybernetics Magazine Pub Date : 2023-10-01 DOI:10.1109/msmc.2023.3282774
Yan Zhou, Jialing Zhou, Guanghui Wen, Minggang Gan, Tao Yang
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Abstract

This article focuses on the design of distributed minmax strategies for multiagent consensus tracking control problems with completely unknown dynamics in the presence of external disturbances or attacks. Each agent obtains its distributed minmax strategy by solving a multiagent zero-sum differential graphical game, which involves both nonadversarial and adversarial behaviors. Solving such a game is equivalent to solving a game algebraic Riccati equation (GARE). By making slight assumptions concerning performance matrices, ${\cal{L}}_{2}$ stability and asymptotic stability of the closed-loop consensus error systems are strictly proven. Furthermore, inspired by data-driven off-policy reinforcement learning (RL), a model-free policy iteration (PI) algorithm is presented for each follower to generate the minmax strategy. Finally, simulations are performed to demonstrate the effectiveness of the proposed theoretical results.
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微分图形博弈共识跟踪的分布式极小策略:一种无模型方法
本文主要研究在存在外部干扰或攻击的情况下,具有完全未知动态的多智能体共识跟踪控制问题的分布式最小最大策略的设计。每个智能体通过求解一个包含非对抗行为和对抗行为的多智能体零和微分图形博弈,得到其分布式最小最大策略。求解这样的博弈相当于求解博弈代数里卡蒂方程(GARE)。通过对性能矩阵稍作假设,严格证明了闭环一致误差系统的${\cal{L}}_{2}$稳定性和渐近稳定性。此外,受数据驱动的离策略强化学习(RL)的启发,提出了一种无模型策略迭代(PI)算法,用于生成最小最大策略。最后通过仿真验证了所提理论结果的有效性。
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IEEE Systems Man and Cybernetics Magazine
IEEE Systems Man and Cybernetics Magazine COMPUTER SCIENCE, CYBERNETICS-
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60
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