Multi-UAV Optimal Formation Control via Actor-Critic Reinforcement Learning Algorithm

Qiwei Lou, Yan Zhou, Xiaodong Li
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Abstract

In this paper, the multi-agent synchronous actor-critic algorithm is developed to solve the optimal formation control problem of the disturbed multi-unmanned aerial vehicle system. Based on the optimal control theory, the optimal formation problem is transformed to seek the optimal solutions of a set of coupled Hamilton-Jacobi-Bellman equations. The multi-agent reinforcement learning algorithm via actor/critic structure is adapted to approximate such solutions. The adaptive tuning laws are given for both critic and actor networks, which ensure the approximate convergence of the optimal value and optimal controller and the stability of the closed-loop formation error system. The simulation is provided to verify the effectiveness of the proposed theoretical results.
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基于actor - critical强化学习算法的多无人机最优编队控制
针对受干扰多无人机系统的最优编队控制问题,提出了一种多智能体同步角色评判算法。基于最优控制理论,将最优编队问题转化为求解一组耦合Hamilton-Jacobi-Bellman方程的最优解。基于actor/critic结构的多智能体强化学习算法适用于逼近这类解。给出了临界网络和主动网络的自适应调谐律,保证了最优值和最优控制器的近似收敛,保证了闭环编队误差系统的稳定性。仿真结果验证了所提理论结果的有效性。
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