Minimising the longest travel distance for a group of mobile robots with interchangeable goals requires knowledge of the shortest length paths between all robots and goal destinations. Determining the exact length of the shortest paths in an environment with obstacles is challenging and cannot be guaranteed in a finite time. We propose an algorithm in which the accuracy of the path planning is iteratively increased. The approach provides a certificate when the uncertainties on estimates of the shortest paths become small enough to guarantee the optimality of the goal assignment. To this end, we apply results from assignment sensitivity assuming upper and lower bounds on the length of the shortest paths. We then provide polynomial-time methods to find such bounds by applying sampling-based path planning. The upper bounds are given by feasible paths, the lower bounds are obtained by expanding the sample set and leveraging knowledge of the sample dispersion. We demonstrate the application of the proposed method with a multi-robot path-planning case study.
翻译:最小化具有可互换目标的一组移动机器人最长的旅行距离需要了解所有机器人和目标目的地之间的最短路径。 确定在有障碍的环境中最短路径的准确长度具有挑战性,无法在有限时间内保证。 我们建议一种算法,即路径规划的准确性会迭代增加。 当最短路径估计数的不确定性变得足够小,足以保证目标任务的最佳性时,该方法提供了一个证书。 为此,我们应用分配敏感度的结果,即假定最短路径的长度具有上下限。 然后,我们提供多种时间方法,通过采用基于取样的路径规划来找到这些界限。 上限是可行的路径,通过扩大样本集和利用样本分布的知识而获得较低的界限。 我们用多机器人路径规划案例研究来演示拟议方法的应用。