Resilient adaptive optimal control of distributed multi-agent systems using reinforcement learning

被引:18
|
作者
Moghadam, Rohollah [1 ]
Modares, Hamidreza [2 ]
机构
[1] Missouri Univ Sci, Dept Elect & Comp Engn, Technol, Emerson Hall,301 W 16th St, Rolla, MO 65409 USA
[2] Michigan State Univ, Dept Mech Engn, E Lansing, MI 48824 USA
来源
IET CONTROL THEORY AND APPLICATIONS | 2018年 / 12卷 / 16期
关键词
game theory; Riccati equations; adaptive control; learning (artificial intelligence); multi-agent systems; distributed control; H control; resilient adaptive optimal control; distributed multiagent systems; model-free reinforcement learning; control protocol; leader-follower multiagent systems; optimal control protocols; adversarial input; adverse effects; learning outcome; intact agents; unified RL-based; control frameworks; corrupted sensory data; actual sensory information; leader state; distributed observer; compromised agent; off-policy RL algorithm; control problem; H control problem; ZERO-SUM GAMES; H-INFINITY; CONTINUOUS-TIME; TRACKING CONTROL; CONSENSUS CONTROL; FEEDBACK-CONTROL; DESIGN; AGENTS; SYNCHRONIZATION; ALGORITHM;
D O I
10.1049/iet-cta.2018.0029
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
This study presents a unified resilient model-free reinforcement learning (RL) based distributed control protocol for leader-follower multi-agent systems. Although RL has been successfully used to learn optimal control protocols for multi-agent systems, the effects of adversarial inputs are ignored. It is shown in this study, however, that their adverse effects can propagate across the network and impact the learning outcome of other intact agents. To alleviate this problem, a unified RL-based distributed control frameworks is developed for both homogeneous and heterogeneous multi-agent systems to prevent corrupted sensory data from propagating across the network. To this end, only the leader communicates its actual sensory information and other agents estimate the leader' state using a distributed observer and communicate this estimation to their neighbours to achieve consensus on the leader state. The observer cannot be physically affected by any adversarial input. To further improve resiliency, distributed H8 control protocols are designed to attenuate the effect of the adversarial inputs on the compromised agent itself. An off-policy RL algorithm is developed to learn the solutions of the game algebraic Riccati equations arising from solving the H8 control problem. No knowledge of the agent's dynamics is required and it is shown that the proposed RL-based H8 control protocol is resilient against adversarial inputs.
引用
收藏
页码:2165 / 2174
页数:10
相关论文
共 50 条
  • [21] Multi-Agent Reinforcement Learning With Distributed Targeted Multi-Agent Communication
    Xu, Chi
    Zhang, Hui
    Zhang, Ya
    2023 35TH CHINESE CONTROL AND DECISION CONFERENCE, CCDC, 2023, : 2915 - 2920
  • [22] ADAPTIVE MULTI-AGENT CONTROL OF HVAC SYSTEMS FOR RESIDENTIAL DEMAND RESPONSE USING BATCH REINFORCEMENT LEARNING
    Vazquez-Canteli, Jose
    Ulyanin, Stepan
    Kampf, Jerome
    Nagy, Zoltan
    2018 BUILDING PERFORMANCE ANALYSIS CONFERENCE AND SIMBUILD, 2018, : 683 - 690
  • [23] Distributed learning and cooperative control for multi-agent systems
    Choi, Jongeun
    Oh, Songhwai
    Horowitz, Roberto
    AUTOMATICA, 2009, 45 (12) : 2802 - 2814
  • [24] Cooperative and Adaptive Optimal Output Regulation of Discrete-time Multi-agent Systems Using Reinforcement Learning
    Gao, Weinan
    Liu, Yiyang
    Odekunle, Adedapo
    Jiang, Zhong-Ping
    Yu, Yunjun
    Lu, Pingli
    PROCEEDINGS OF 2018 IEEE INTERNATIONAL CONFERENCE ON REAL-TIME COMPUTING AND ROBOTICS (IEEE RCAR), 2018, : 348 - 353
  • [25] Optimal robust formation control for heterogeneous multi-agent systems based on reinforcement learning
    Yan, Bing
    Shi, Peng
    Lim, Cheng-Chew
    Shi, Zhiyuan
    INTERNATIONAL JOURNAL OF ROBUST AND NONLINEAR CONTROL, 2022, 32 (05) : 2683 - 2704
  • [26] Toward Resilient Multi-Agent Actor-Critic Algorithms for Distributed Reinforcement Learning
    Lin, Yixuan
    Gade, Shripad
    Sandhu, Romeil
    Liu, Ji
    2020 AMERICAN CONTROL CONFERENCE (ACC), 2020, : 3953 - 3958
  • [27] Cranes control using multi-agent reinforcement learning
    Arai, S
    Miyazaki, K
    Kobayashi, S
    INTELLIGENT AUTONOMOUS SYSTEMS: IAS-5, 1998, : 335 - 342
  • [28] Parallel and distributed multi-agent reinforcement learning
    Kaya, M
    Arslan, A
    PROCEEDINGS OF THE EIGHTH INTERNATIONAL CONFERENCE ON PARALLEL AND DISTRIBUTED SYSTEMS, 2001, : 437 - 441
  • [29] Coding for Distributed Multi-Agent Reinforcement Learning
    Wang, Baoqian
    Xie, Junfei
    Atanasov, Nikolay
    2021 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA 2021), 2021, : 10625 - 10631
  • [30] Distributed reinforcement learning in multi-agent networks
    Kar, Soummya
    Moura, Jose M. F.
    Poor, H. Vincent
    2013 IEEE 5TH INTERNATIONAL WORKSHOP ON COMPUTATIONAL ADVANCES IN MULTI-SENSOR ADAPTIVE PROCESSING (CAMSAP 2013), 2013, : 296 - +