A Visitation Grid for Complete Coverage Foraging in Robot Swarms
Qi Arturo Gonzalez, Yifeng Gao, Li Zhang, Qi Lu

TL;DR
This paper introduces a grid-based stochastic foraging strategy for robot swarms that improves late-stage resource collection efficiency and reduces total collection time in unknown environments.
Contribution
The paper presents a scalable, memory-efficient grid-based method that biases exploration toward under-visited areas, outperforming traditional algorithms in simulation.
Findings
Reduces total collection time by up to 33%
Improves collection efficiency by over 48% during the final stage
Demonstrates robustness and scalability in simulations
Abstract
The complete collection of sparse resources in large, unknown environments remains a challenging problem for autonomous robot swarms. Previous studies have shown that a substantial portion of total mission time is consumed during the final stage of collection, where only a small fraction of randomly scattered resources remain. Consequently, many existing swarm foraging algorithms (search and collection) focus on collecting most resources within a limited time window, rather than improving end-stage efficiency for collecting all resources. We propose a grid-based stochastic foraging strategy that explicitly reduces redundant visits and accelerates late-stage collection. The unknown search area is partitioned into a grid map, which is maintained by a lightweight central server. To maintain scalability, both robots and the server operate within limited memory and computational constraints.…
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