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Containment control of heterogeneous systems with active leaders of bounded unknown control using reinforcement learning

机译:具有强化学习的有限未知控制活跃领导者的异构系统的遏制控制

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This paper solves the containment problem of multi-agent systems on undirected graph with multiple active leaders using off-policy reinforcement learning (RL). The leaders are active in the sense that there exists bounded control input in the dynamics which is unknown to all followers and the followers are heterogeneous with different dynamics. Not only the steady states of agent i but also the transient trajectories are taken into account to impose optimality to the proposed containment control. Inhomogeneous algebraic Riccati equations (ARE) are derived to solve the optimal containment control protocol. To avoid the requirement of agents' dynamics to obtain containment control, an off-policy RL algorithm is developed to solve the inhomogeneous AREs online in real time and without requiring any knowledge of the agents' dynamics. Finally, a simulation example is presented to illustrate the effectiveness of the proposed algorithm.
机译:本文使用政策外强化学习(RL)解决了具有多个活动领导者的无向图上多智能体系统的包含性问题。领导者是活跃的,因为在动力学中存在有限的控制输入,这对于所有跟随者都是未知的,并且跟随者是异质的,具有不同的动力学。不仅要考虑代理i的稳态,还要考虑瞬变轨迹,以对建议的安全壳控制施加最佳效果。推导了不均匀的代数Riccati方程(ARE),以求解最佳的安全壳控制协议。为了避免需要代理商动态来获得遏制控制的需求,开发了一种基于策略的RL算法来实时在线解决不均匀的ARE,而无需了解代理商的动态。最后,给出了一个仿真实例来说明所提算法的有效性。

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