使用负载平衡可扩展并行化基于采样的运动规划算法

Adam Fidel, S. A. Jacobs, Shishir Sharma, N. Amato, Lawrence Rauchwerger
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引用次数: 4

摘要

运动规划是计算可移动物体在环境中可行路径的问题,在许多领域都有应用,从机器人到智能CAD,到蛋白质折叠。解决这个pspace难题的最佳方法是所谓的基于抽样的计划。最近的工作介绍了均匀空间细分技术,用于并行化基于采样的运动规划算法,该算法具有良好的缩放性。然而,由于规划时间取决于区域特征,并且对于大多数问题,子问题的异构性随着处理器数量的增加而增加,因此这种方法容易出现负载不平衡。在这项工作中,我们介绍了两种技术来解决基于采样的运动规划算法并行化中的负载不平衡:自适应工作窃取方法和批量同步重新分配。我们表明,将这些技术应用于两类主要的基于并行采样的运动规划算法的代表,概率路线图和快速探索随机树,可以在超过3000个内核上实现更具可扩展性和负载均衡的计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Load Balancing to Scalably Parallelize Sampling-Based Motion Planning Algorithms
Motion planning, which is the problem of computing feasible paths in an environment for a movable object, has applications in many domains ranging from robotics, to intelligent CAD, to protein folding. The best methods for solving this PSPACE-hard problem are so-called sampling-based planners. Recent work introduced uniform spatial subdivision techniques for parallelizing sampling-based motion planning algorithms that scaled well. However, such methods are prone to load imbalance, as planning time depends on region characteristics and, for most problems, the heterogeneity of the sub problems increases as the number of processors increases. In this work, we introduce two techniques to address load imbalance in the parallelization of sampling-based motion planning algorithms: an adaptive work stealing approach and bulk-synchronous redistribution. We show that applying these techniques to representatives of the two major classes of parallel sampling-based motion planning algorithms, probabilistic roadmaps and rapidly-exploring random trees, results in a more scalable and load-balanced computation on more than 3,000 cores.
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