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Distributed Deep Reinforcement Learning for Fighting Forest Fires with a Network of Aerial Robots

机译:通过空中机器人网络进行分布式深度强化学习,以扑灭森林大火

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This paper proposes a distributed deep reinforcement learning (RL) based strategy for a team of Unmanned Aerial Vehicles (UAVs) to autonomously fight forest fires. We first model the forest fire as a Markov decision process (MDP) with a factored structure. We consider optimally controlling the forest fire without agents using dynamic programming, and show any exact solution and many approximate solutions are computationally intractable. Given the problem complexity, we consider a deep RL approach in which each agent learns a policy requiring only local information. We show with Monte Carlo simulations that the deep RL policy outperforms a hand-tuned heuristic, and scales well for various forest sizes and different numbers of UAVs as well as variations in model parameters. Experimental demonstrations with mobile robots fighting a simulated forest fire in the Robotarium at the Georgia Institute of Technology are also presented.
机译:本文提出了一种基于分布式深度强化学习(RL)的策略,用于一支无人驾驶飞机(UAV)小组自主扑灭森林大火的策略。我们首先将森林火灾建模为具有因子结构的马尔可夫决策过程(MDP)。我们考虑使用动态规划在没有代理的情况下最佳地控制森林火灾,并显示出任何精确解,并且许多近似解在计算上都是难以解决的。考虑到问题的复杂性,我们考虑采用深度RL方法,其中每个代理都学习仅需要本地信息的策略。我们通过蒙特卡洛模拟显示,深层RL策略优于手动调整的启发式算法,并且可以针对各种森林大小和不同数量的UAV以及模型参数的变化很好地进行缩放。佐治亚理工学院的机器人馆还展示了使用移动机器人扑灭模拟森林大火的实验演示。

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