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Main Authors: Aina, Kehinde O., Avinery, Ram, Kuan, Hui-Shun, Betterton, Meredith D., Goodisman, Michael A. D., Goldman, Daniel I.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.15033
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author Aina, Kehinde O.
Avinery, Ram
Kuan, Hui-Shun
Betterton, Meredith D.
Goodisman, Michael A. D.
Goldman, Daniel I.
author_facet Aina, Kehinde O.
Avinery, Ram
Kuan, Hui-Shun
Betterton, Meredith D.
Goodisman, Michael A. D.
Goldman, Daniel I.
contents Social organisms which construct nests consisting of tunnels and chambers necessarily navigate confined and crowded conditions. Unlike low-density collectives like bird flocks and insect swarms, in which hydrodynamic and statistical phenomena dominate, the physics of glasses and supercooled fluids is important to understand clogging behaviors in high-density collectives. Our previous work revealed that fire ants flowing in confined tunnels utilize diverse behaviors like unequal workload distributions, spontaneous direction reversals, and limited interaction times to mitigate clogging and jamming and thus maintain functional flow; implementation of similar rules in a small robophysical swarm led to high performance through spontaneous dissolution of clogs and clusters. However, how the insects learn such behaviors, and how we can develop "task capable" active matter in such regimes, remains a challenge in part because interaction dynamics are dominated by local, time-consuming collisions and no single agent can guide the entire collective. Here, we hypothesized that effective flow and clog mitigation could emerge purely through local learning. We tasked small groups of robots with pellet excavation in a narrow tunnel, allowing them to modify reversal probabilities over time. Initially, robots had equal probabilities and clogs were common. Reversals improved flow. When reversal probabilities adapted via collisions and noisy tunnel length estimates, workload inequality and performance improved. Our robophysical study of an excavating swarm shows that, despite the seeming complexity and difficulty of the task, simple learning rules can mitigate or leverage unavoidable features in task-capable dense active matter, leading to hypotheses for dense biological and robotic swarms.
format Preprint
id arxiv_https___arxiv_org_abs_2505_15033
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Toward Task Capable Active Matter: Learning to Avoid Clogging in Confined Collectives via Collisions
Aina, Kehinde O.
Avinery, Ram
Kuan, Hui-Shun
Betterton, Meredith D.
Goodisman, Michael A. D.
Goldman, Daniel I.
Robotics
Artificial Intelligence
Multiagent Systems
Social organisms which construct nests consisting of tunnels and chambers necessarily navigate confined and crowded conditions. Unlike low-density collectives like bird flocks and insect swarms, in which hydrodynamic and statistical phenomena dominate, the physics of glasses and supercooled fluids is important to understand clogging behaviors in high-density collectives. Our previous work revealed that fire ants flowing in confined tunnels utilize diverse behaviors like unequal workload distributions, spontaneous direction reversals, and limited interaction times to mitigate clogging and jamming and thus maintain functional flow; implementation of similar rules in a small robophysical swarm led to high performance through spontaneous dissolution of clogs and clusters. However, how the insects learn such behaviors, and how we can develop "task capable" active matter in such regimes, remains a challenge in part because interaction dynamics are dominated by local, time-consuming collisions and no single agent can guide the entire collective. Here, we hypothesized that effective flow and clog mitigation could emerge purely through local learning. We tasked small groups of robots with pellet excavation in a narrow tunnel, allowing them to modify reversal probabilities over time. Initially, robots had equal probabilities and clogs were common. Reversals improved flow. When reversal probabilities adapted via collisions and noisy tunnel length estimates, workload inequality and performance improved. Our robophysical study of an excavating swarm shows that, despite the seeming complexity and difficulty of the task, simple learning rules can mitigate or leverage unavoidable features in task-capable dense active matter, leading to hypotheses for dense biological and robotic swarms.
title Toward Task Capable Active Matter: Learning to Avoid Clogging in Confined Collectives via Collisions
topic Robotics
Artificial Intelligence
Multiagent Systems
url https://arxiv.org/abs/2505.15033