基于深度强化学习的蜂窝连接无人机 3D 轨迹规划

Drones Pub Date : 2024-05-15 DOI:10.3390/drones8050199
Xiang Liu, Weizhi Zhong, Xin Wang, Hongtao Duan, Zhenxiong Fan, Haowen Jin, Yang Huang, Zhipeng Lin
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引用次数: 0

摘要

针对基于二维(2D)轨迹规划的连接性保证应用场景有限的问题,本文提出了一种基于深度强化学习(DRL)的蜂窝无人机(UAVs)通信三维(3D)轨迹规划改进方法。通过考虑三维空间环境并综合无人机任务完成时间和连接性等因素,我们开发了路径优化目标函数,并利用先进的对决双深度 Q 网络(D3QN)对其进行优化。此外,我们还引入了优先经验重放(PER)机制,以提高学习效率并加速收敛。为了进一步帮助轨迹规划,我们的方法采用了同步导航和无线电映射(SNARM)框架,该框架可生成模拟三维无线电映射,并利用无人机在飞行过程中发出的测量信号模拟飞行过程,从而降低实际飞行成本。模拟结果表明,所提出的方法能有效地使无人机避开空间中的弱覆盖区域,从而减少飞行时间和预期中断时间的加权总和。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Reinforcement Learning-Based 3D Trajectory Planning for Cellular Connected UAV
To address the issue of limited application scenarios associated with connectivity assurance based on two-dimensional (2D) trajectory planning, this paper proposes an improved deep reinforcement learning (DRL) -based three-dimensional (3D) trajectory planning method for cellular unmanned aerial vehicles (UAVs) communication. By considering the 3D space environment and integrating factors such as UAV mission completion time and connectivity, we develop an objective function for path optimization and utilize the advanced dueling double deep Q network (D3QN) to optimize it. Additionally, we introduce the prioritized experience replay (PER) mechanism to enhance learning efficiency and expedite convergence. In order to further aid in trajectory planning, our method incorporates a simultaneous navigation and radio mapping (SNARM) framework that generates simulated 3D radio maps and simulates flight processes by utilizing measurement signals from the UAV during flight, thereby reducing actual flight costs. The simulation results demonstrate that the proposed approach effectively enable UAVs to avoid weak coverage regions in space, thereby reducing the weighted sum of flight time and expected interruption time.
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