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Biased Sampling Potentially Guided Intelligent Bidirectional RRT? Algorithm for UAV Path Planning in 3D Environment

机译:偏见采样可能引导智能双向rrt? 3D环境中的UAV路径规划算法

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During the last decade, Rapidly-exploring Random Tree star (RRT?) algorithm based on sampling has been widely used in the field of unmanned aerial vehicle (UAV) path planning for its probabilistically complete and asymptotically optimal characteristics. However, the convergence rate of RRT? as well as B-RRT? and IB-RRT? is slow for these algorithms perform pure exploration. To overcome the weaknesses above, Biased Sampling Potentially Guided Intelligent Bidirectional RRT? (BPIB-RRT?) algorithm is proposed in this paper, which combines the bidirectional artificial potential field method with the idea of bidirectional biased sampling. The proposed algorithm flexibly adjusts the sampling space, greatly reduces the invalid spatial sampling, and improves the convergence rate. Moreover, the deeply theoretical analysis of the proposed BPIB-RRT? algorithm is given regarding its probabilistic completeness, asymptotic optimality, and computational complexity. Finally, compared to the latest UAV path planning algorithms, simulation comparisons are demonstrated to show the superiority of our proposed BPIB-RRT? algorithm.
机译:在过去十年中,基于采样的快速探索随机树星(RRT?)算法已广泛应用于无人机(UAV)路径规划的领域,其概率地完成和渐近最佳特性。但是,RRT的收敛速度?以及b-rrt?和ib-rrt?对于这些算法进行纯粹的探索,这是缓慢的。为了克服上述弱点,偏见采样可能引导智能双向rrt? (BPIB-RRT?)在本文中提出了算法,其结合了双向人工潜在场方法与双向偏置采样的思想。所提出的算法灵活调整采样空间,大大减少了无效的空间采样,并提高了收敛速度。此外,拟议的BPIB-RRT的深度理论分析?算法关于其概率完整性,渐近最优性和计算复杂性。最后,与最新的UAV路径规划算法相比,仿真比较被证明是为了显示我们提出的BPIB-RRT的优越性?算法。

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