The Multi-Agent Pickup and Delivery Problem: MAPF, MARL and Its Warehouse Applications
Abstract
Two state-of-the-art approaches, conflict-based search and shared experience actor-critic, are benchmarked in a simulated warehouse environment for the multi-agent pickup and delivery problem.
We study two state-of-the-art solutions to the multi-agent pickup and delivery (MAPD) problem based on different principles -- multi-agent path-finding (MAPF) and multi-agent reinforcement learning (MARL). Specifically, a recent MAPF algorithm called conflict-based search (CBS) and a current MARL algorithm called shared experience actor-critic (SEAC) are studied. While the performance of these algorithms is measured using quite different metrics in their separate lines of work, we aim to benchmark these two methods comprehensively in a simulated warehouse automation environment.
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