Chakravorty Suman, Kumar Sandip
Department of Aerospace Engineering, Texas A&M University, College Station, TX 77843-3141, USA.
IEEE Trans Syst Man Cybern B Cybern. 2011 Jun;41(3):855-66. doi: 10.1109/TSMCB.2010.2098438. Epub 2011 Jan 28.
In this paper, generalized versions of the probabilistic sampling-based planners, i.e., probabilistic roadmaps and rapidly exploring random tree, are presented. The generalized planners, i.e., generalized probabilistic roadmap and the generalized rapidly exploring random tree, result in hybrid hierarchical feedback planners that are robust to the uncertainties in the robot motion model and in the robot map or workspace. The proposed planners are analyzed and shown to probabilistically be complete. The algorithms are tested on fully actuated and underactuated robots on several maps of varying degrees of difficulty, and the results show that the generalized methods have a significant advantage over the traditional methods when planning under uncertainty.
本文提出了基于概率采样的规划器的广义版本,即概率地图和快速扩展随机树。广义规划器,即广义概率地图和广义快速扩展随机树,产生了混合分层反馈规划器,它们对机器人运动模型以及机器人地图或工作空间中的不确定性具有鲁棒性。对所提出的规划器进行了分析,并证明其概率完备。在几张难度不同的地图上,对全驱动和欠驱动机器人进行了算法测试,结果表明,在不确定性条件下进行规划时,广义方法比传统方法具有显著优势。