Purpose of Review Planning collision-free paths for multiple robots is important for real-world multi-robot systems and has been studied as an optimization problem on graphs, called Multi-Agent Path Finding (MAPF). This review surveys different categories of classic and state-of-the-art MAPF algorithms and different research attempts to tackle the challenges of generalizing MAPF techniques to real-world scenarios. Recent Findings Solving MAPF problems optimally is computationally challenging. Recent advances have resulted in MAPF algorithms that can compute collision-free paths for hundreds of robots and thousands of navigation tasks in seconds of runtime. Many variants of MAPF have been formalized to adapt MAPF techniques to different real-world requirements, such as considerations of robot kinematics, online optimization for real-time systems, and the integration of task assignment and path planning. Summary Algorithmic techniques for MAPF problems have addressed important aspects of several multi-robot applications, including automated warehouse fulfillment and sortation, automated train scheduling, and navigation of non-holonomic robots and quadcopters. This showcases their potential for real-world applications of large-scale multi-robot systems.
翻译:审查《计划规划》多机器人无碰撞路径的目的审查》审查多机器人规划的用途,对于现实世界多机器人系统十分重要,并已将其作为图表上的优化问题加以研究,称为多代理路径发现(MAPF)。本审查调查了传统和最先进的MAPF算法的不同类别,并调查了将MAPF技术推广到现实世界情景的挑战。最近的结果解决MAPF问题的最佳方法在计算上具有挑战性。最近的进展产生了MAPF算法,这些算法可以计算成数百个机器人和数千个导航任务的无碰撞路径。MAPF的许多变式已经正式化,使MAPF技术适应不同的现实世界需求,例如机器人运动学、实时系统的在线优化以及任务分配和路径规划的整合等考虑。用于MAPF问题的简要算法技术已经解决了多个多机器人应用的重要方面,包括自动化仓库的落实和分类、自动化的火车排程安排,以及非热质组机器人和四分立仪的导航。这展示了MAPFPF技术在现实世界应用大型系统方面的潜力。