Cheng Qian, Yulun Zhang, Varun Bhatt, Matthew Christopher Fontaine, Stefanos Nikolaidis, Jiaoyang Li
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A Quality Diversity Approach to Automatically Generate Multi-Agent Path Finding Benchmark Maps
We use the Quality Diversity (QD) algorithm with Neural Cellular Automata
(NCA) to generate benchmark maps for Multi-Agent Path Finding (MAPF)
algorithms. Previously, MAPF algorithms are tested using fixed, human-designed
benchmark maps. However, such fixed benchmark maps have several problems.
First, these maps may not cover all the potential failure scenarios for the
algorithms. Second, when comparing different algorithms, fixed benchmark maps
may introduce bias leading to unfair comparisons between algorithms. In this
work, we take advantage of the QD algorithm and NCA with different objectives
and diversity measures to generate maps with patterns to comprehensively
understand the performance of MAPF algorithms and be able to make fair
comparisons between two MAPF algorithms to provide further information on the
selection between two algorithms. Empirically, we employ this technique to
generate diverse benchmark maps to evaluate and compare the behavior of
different types of MAPF algorithms such as bounded-suboptimal algorithms,
suboptimal algorithms, and reinforcement-learning-based algorithms. Through
both single-planner experiments and comparisons between algorithms, we identify
patterns where each algorithm excels and detect disparities in runtime or
success rates between different algorithms.