多无人机协同任务分配与路径规划

Jian Zhou, Yuhe Qiu
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引用次数: 0

摘要

轻小型无人机因其适应性好、成本低、时间分辨率高等特点而受到广泛关注。随着技术的不断发展,多无人机协同已成为研究热点。多无人机协同航路规划问题可以分解为任务分配和航路规划两个子问题。提出了一种基于强化学习的多无人机协同任务分配方法。考虑任务需求、无人机能力、环境影响和任务冲突等因素,构建了包含状态空间、动作空间、奖励函数和折扣因子的MDP过程,并结合约束函数和优化函数进行了优化。本文将任务分配过程与基于信息吞吐量最大化的轨迹规划相结合,并进行了大量仿真试验,验证了该方法的稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Task allocation and route planning in multi-UAV collaboration
Light and small UAVs have attracted widespread attention due to their good adaptability, low cost, and high temporal resolution. With the continuous development of technology, multi-UAV cooperation has become a research hot spot. The route planning problem of multi-UAV cooperation can be decomposed into two sub-problems: task allocation and route planning. In this paper, a task allocation method based on reinforcement learning is proposed for multi-UAV cooperation. Considering the task requirements, the capabilities of the UAV, the influence of the environment and the conflict of the task, we construct a MDP process include the state space, action space, reward function and discount factor with the constraints and optimization functions. In this paper, the task allocation process is combined with the trajectory planning based on maximizing information throughput, and a large number of simulation tests are carried out to verify the stability of the method.
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