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Priority Inheritance with Backtracking for Iterative Multi-agent Path Finding

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In the Multi-Agent Path Finding (MAPF) problem, a set of agents moving on a graph must reach their own respective destinations without inter-agent collisions. In practical MAPF applications such as navigation in automated warehouses, where occasionally there are hundreds or more agents, MAPF must be solved iteratively online on a lifelong basis. Such scenarios rule out simple adaptations of offline compute-intensive optimal approaches; and scalable sub-optimal algorithms are hence appealing for such settings. Ideal algorithms are scalable, applicable to iterative scenarios, and output plausible solutions in predictable computation time. For the aforementioned purpose, this study presents Priority Inheritance with Backtracking (PIBT), a novel sub-optimal algorithm to solve MAPF iteratively. PIBT relies on an adaptive prioritization scheme to focus on the adjacent movements of multiple agents; hence it can be applied to several domains. We prove that, regardless of their number, all agents are guaranteed to reach their destination within finite time when the environment is a graph such that all pairs of adjacent nodes belong to a simple cycle (e.g., biconnected). Experimental results covering various scenarios, including a demonstration with real robots, reveal the benefits of the proposed method. Even with hundreds of agents, PIBT yields acceptable solutions almost immediately and can solve large instances that other established MAPF methods cannot. In addition, PIBT outperforms an existing approach on an iterative scenario of conveying packages in an automated warehouse in both runtime and solution quality.

Keisuke Okumura, Manao Machida, Xavier D\'efago, Yasumasa Tamura• 2019

Related benchmarks

TaskDatasetResultRank
Multi-Agent Path FindingAmazon warehouse map
Total TP1.94e+3
6
Multi-Agent Path FindingSymbotic warehouse map
Total TP477
6
Real-Time Multi-Agent Path FindingRoom Map
Success Rate11
6
Real-Time Multi-Agent Path FindingRandom Map
Best Config Percentage12
6
Real-Time Multi-Agent Path FindingMaze Map
Percentage of Best Configurations21
6
Lifelong Multi-Agent Path FindingAmazon map N=80 agents
TPA21.19
5
Lifelong Multi-Agent Path FindingSymbotic map N=80 agents
TPA5.16
5
Lifelong Multi-Agent Path FindingSymbotic map N=100 agents
TPA3.65
5
Lifelong Multi-Agent Path FindingAmazon map N=100 agents
TPA18.62
5
Lifelong Multi-Agent Path FindingAmazon map N=120 agents
TPA16.09
5
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