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Autonomous UAV Navigation: A DDPG-Based Deep Reinforcement Learning Approach

机译:自主无人机导航:基于DDPG的深度强化学习方法

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In this paper, we propose an autonomous UAV path planning framework using deep reinforcement learning approach. The objective is to employ a self-trained UAV as a flying mobile unit to reach spatially distributed moving or static targets in a given three dimensional urban area. In this approach, a Deep Deterministic Policy Gradient (DDPG) with continuous action space is designed to train the UAV to navigate through or over the obstacles to reach its assigned target. A customized reward function is developed to minimize the distance separating the UAV and its destination while penalizing collisions. Numerical simulations investigate the behavior of the UAV in learning the environment and autonomously determining trajectories for different selected scenarios.
机译:在本文中,我们提出了一种使用深度强化学习方法的自主无人机路径规划框架。目标是采用自训练的无人机作为飞行的移动单元,以在给定的三维市区内达到空间分布的移动或静态目标。在这种方法中,具有连续动作空间的深度确定性策略梯度(DDPG)被设计为训练无人驾驶飞机穿越障碍物或越过障碍物以达到其分配的目标。开发了定制的奖励功能,以最大程度地减小无人机与目的地之间的距离,同时惩罚碰撞。数值模拟研究了无人机在学习环境和自主确定不同选择场景的轨迹方面的行为。

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