FT-MSTC*: An Efficient Fault Tolerance Algorithm for Multi-robot Coverage Path Planning

Chun Sun, Jing Tang, Xinyu Zhang
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引用次数: 4

Abstract

Fault tolerance is very important for multi-robot systems, especially for those operated in remote environments. The ability to tolerate failures, allows robots effectively to continue performing tasks without the need for immediate human intervention. In this paper, we present a new efficient fault tolerance algorithm for multi-robot coverage path planning (mCPP). The entire coverage path is considered as a topological task loop. The ideal mCPP problem is handled by partitioning this task loop and assign each partition to individual robot. When a faulty robot is detected, we use an optimization method to minimize the overall maximum coverage cost while considering both the tasks accomplished before robot failures and the remaining tasks. We perform various experiments for regular grid maps and real field terrains. We compare our algorithm against other coverage path planning algorithms and our algorithm outperforms existing spiral-STC-based methods in terms of the overall maximum coverage cost.
FT-MSTC*:一种高效的多机器人覆盖路径规划容错算法
对于多机器人系统来说,容错是非常重要的,特别是对于那些在远程环境中运行的系统。容忍故障的能力,允许机器人有效地继续执行任务,而不需要立即人为干预。针对多机器人覆盖路径规划问题,提出了一种新的高效容错算法。整个覆盖路径被认为是一个拓扑任务循环。理想的mCPP问题是通过划分任务循环并将每个分区分配给单个机器人来解决的。当检测到机器人故障时,我们在考虑机器人故障前完成的任务和剩余任务的情况下,使用优化方法最小化总体最大覆盖成本。我们对规则网格地图和真实的野外地形进行了各种实验。我们将我们的算法与其他覆盖路径规划算法进行了比较,我们的算法在总体最大覆盖成本方面优于现有的基于螺旋stc的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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