基于自适应启发式的相关区域采样策略的渐近最优路径规划

Chenming Li , Fei Meng , Han Ma , Jiankun Wang , Max Q.-H. Meng
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引用次数: 1

摘要

基于采样的规划算法是解决高维状态空间规划问题的有力工具。在这篇文章中,我们提出了一种在最有前景的地区进行采样的新方法,它显著减少了规划时间消耗。RRT#算法基于由最优前向搜索树提供的成本来定义相关区域。但是,它使用当前状态和目标状态之间直接连接的累积成本作为要进行的成本。为了提高路径规划效率,我们提出了一种批量采样方法,该方法利用启发式信息的各种来源,利用直接采样策略在细化的相关区域中进行采样,该策略是根据最优成本和自适应成本来定义的。与相关工作相比,所提出的采样方法允许算法在最有希望的区域的方向上构建搜索树,从而获得卓越的初始解质量并减少总体计算时间。为了验证我们方法的有效性,我们在SE(2)和SE(3)状态空间中进行了几次模拟。仿真结果表明了该算法的优越性。
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Relevant Region sampling strategy with adaptive heuristic for asymptotically optimal path planning

Sampling-based planning algorithm is a powerful tool for solving planning problems in high-dimensional state spaces. In this article, we present a novel approach to sampling in the most promising regions, which significantly reduces planning time-consumption. The RRT# algorithm defines the Relevant Region based on the cost-to-come provided by the optimal forward-searching tree. However, it uses the cumulative cost of a direct connection between the current state and the goal state as the cost-to-go. To improve the path planning efficiency, we propose a batch sampling method that samples in a refined Relevant Region with a direct sampling strategy, which is defined according to the optimal cost-to-come and the adaptive cost-to-go, taking advantage of various sources of heuristic information. The proposed sampling approach allows the algorithm to build the search tree in the direction of the most promising area, resulting in a superior initial solution quality and reducing the overall computation time compared to related work. To validate the effectiveness of our method, we conducted several simulations in both SE(2) and SE(3) state spaces. And the simulation results demonstrate the superiorities of proposed algorithm.

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