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Cloud-Based Grasp Analysis and Planning for Toleranced Parts Using Parallelized Monte Carlo Sampling

机译:使用并行蒙特卡洛采样基于云的公差分析和公差零件的计划

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摘要

This paper considers grasp planning in the presence of shape uncertainty and explores how cloud computing can facilitate parallel Monte Carlo sampling of combination actions and shape perturbations to estimate a lower bound on the probability of achieving force closure. We focus on parallel-jaw push grasping for the class of parts that can be modeled as extruded 2-D polygons with statistical tolerancing. We describe an extension to model part slip and experimental results with an adaptive sampling algorithm that can reduce sample size by 90%. We show how the algorithm can also bound part tolerance for a given grasp quality level and report a sensitivity analysis on algorithm parameters. We test a cloud-based implementation with varying numbers of nodes, obtaining a 515 speedup with 500 nodes in one case, suggesting the algorithm can scale linearly when all nodes are reliable. Code and data are available at: .
机译:本文考虑了存在形状不确定性的情况下的抓握规划,并探讨了云计算如何促进组合动作和形状扰动的并行蒙特卡洛采样,以估计实现力闭合的概率的下限。我们专注于平行下颌推动抓取,该类零件可以建模为具有统计公差的拉伸二维多边形。我们描述了使用自适应采样算法对零件打滑和实验结果进行建模的扩展,该算法可将样本量减少90%。我们将展示算法如何在给定的抓握质量水平下限制零件公差,并报告算法参数的敏感性分析。我们测试了具有不同数量节点的基于云的实现,在一种情况下获得了500个节点的515加速,这表明当所有节点都可靠时,该算法可以线性扩展。代码和数据位于:。

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