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Deep Reinforcement Learning Approach with Multiple Experience Pools for UAV’s Autonomous Motion Planning in Complex Unknown Environments

机译:具有多种经验库的深度强化学习方法用于复杂未知环境中的无人机自主运动计划

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摘要

Autonomous motion planning (AMP) of unmanned aerial vehicles (UAVs) is aimed at enabling a UAV to safely fly to the target without human intervention. Recently, several emerging deep reinforcement learning (DRL) methods have been employed to address the AMP problem in some simplified environments, and these methods have yielded good results. This paper proposes a multiple experience pools (MEPs) framework leveraging human expert experiences for DRL to speed up the learning process. Based on the deep deterministic policy gradient (DDPG) algorithm, a MEP–DDPG algorithm was designed using model predictive control and simulated annealing to generate expert experiences. On applying this algorithm to a complex unknown simulation environment constructed based on the parameters of the real UAV, the training experiment results showed that the novel DRL algorithm resulted in a performance improvement exceeding 20% as compared with the state-of-the-art DDPG. The results of the experimental testing indicate that UAVs trained using MEP–DDPG can stably complete a variety of tasks in complex, unknown environments.
机译:无人机(UAV)的自主运动计划(AMP)旨在使无人机能够在无需人工干预的情况下安全地飞向目标。最近,在一些简化的环境中,已经采用了几种新兴的深度强化学习(DRL)方法来解决AMP问题,并且这些方法已取得了良好的效果。本文提出了一个多经验库(MEP)框架,利用人类专家的DRL经验来加快学习过程。基于深度确定性策略梯度(DDPG)算法,设计了MEP–DDPG算法,该算法使用模型预测控制和模拟退火来产生专家经验。通过将该算法应用于基于真实无人机参数构建的复杂未知仿真环境,训练实验结果表明,与最新的DDPG相比,新型DRL算法的性能提高了20%以上。实验测试的结果表明,使用MEP-DDPG训练的无人机可以在复杂,未知的环境中稳定地完成各种任务。

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