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A stochastic and adaptive motion planning methodology for autonomous mobile robots.

机译:自主移动机器人的随机和自适应运动计划方法。

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This dissertation presents a novel approach to mobile robot motion planning. It capitalizes on properties of Markov chains, harmonic functions, and the Boundary Integral Equation method to introduce a new two-level method of environment representation. This method attributes a probability value to each robot state (environment point) that will later be used in dealing with uncertainties in the planning stage. Unlike other methods of environment representation, no geometric approximation is carried out on the shape of boundaries and obstacles, and the introduced representation method can consider arbitrary-shaped geometries. The first level of environment representation, using Markov chains, leads to an adaptive and flexible way-point selection algorithm for large and structured environments. This algorithm develops a connected sequence of zones that the robot may visit in order to attain the goal state. At the second level, for navigation within each zone a collection of behaviors based on different harmonic-field representations of the environment are presented. These behaviors, which all use the hill-climbing method for global path planning produce a network of trajectories for the robot that lead it to the goal from any reachable point inside the environment. For dynamic path planning the hill-climbing method of path planning is reformulated and a novel approach is proposed, using non-holonomic constraints to model obstacles. This behavior can be used to revise trajectories both off and on-line to account for new obstacles.; To address the issue of uncertainties in the environment representation a new stochastic reactive planner is developed in this work. First, an obstacle avoidance algorithm is introduced which utilizes a simple statistical tool to modify the robot heading. The change in the heading angle is optimized so that the new heading remains as close as possible to the desired one, and contact with the sensed obstacle is avoided. Second, a Markov decision making process is developed to select the robot's actual path in face of unmodeled (unexpected) obstacles. The decision making process is included in the planner for the selection of the robot's actual course, with the purpose of optimizing with respect to a measure of the risk of striking an obstacle along the path.; The effectiveness of the presented motion planning methodology is demonstrated in both simulations and experiments using an RWI-B12 mobile robot.
机译:本文提出了一种新颖的移动机器人运动规划方法。它利用马尔可夫链的性质,谐波函数和边界积分方程法来介绍一种新的两级环境表示方法。此方法将概率值分配给每个机器人状态(环境点),稍后将在计划阶段处理不确定性时使用该值。与其他环境表示方法不同,没有对边界和障碍物的形状进行几何近似,并且引入的表示方法可以考虑任意形状的几何形状。使用马尔可夫链的第一层环境表示法可得出适用于大型结构化环境的自适应且灵活的航路点选择算法。该算法建立了机器人可以访问以达到目标状态的区域的连接序列。在第二级,为了在每个区域内导航,提出了基于环境的不同谐波场表示的行为集合。所有这些行为都使用爬山方法进行全局路径规划,从而为机器人产生了一个轨迹网络,从而将机器人从环境中的任何可到达点引导至目标。对于动态路径规划,重新制定了路径规划的爬山方法,并提出了一种使用非完整约束建模障碍物的新颖方法。这种行为可用于离线和在线修改轨迹以解决新的障碍。为了解决环境表示中的不确定性问题,在这项工作中开发了一种新的随机反应计划器。首先,介绍了一种避障算法,该算法利用简单的统计工具来修改机器人的航向。优化了航向角的变化,以使新的航向保持尽可能接近所需的航向,并避免了与感应障碍物的接触。其次,开发了一个马尔可夫决策过程,以选择面对未建模(意外)障碍物的机器人的实际路径。计划程序中包含决策过程,用于选择机器人的实际路线,目的是针对沿路径撞击障碍物的风险进行优化。使用RWI-B12移动机器人在仿真和实验中都证明了所提出的运动计划方法的有效性。

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