The impact of catastrophic collisions and collision avoidance on a swarming behavior
Chris Taylor, Cameron Nowzari

TL;DR
This paper investigates how physical constraints and collision avoidance affect the emergent behavior of autonomous agent swarms, highlighting challenges and the need for improved algorithms.
Contribution
It demonstrates that collision avoidance can disrupt swarming behavior and compares four algorithms, emphasizing the need for further research in this area.
Findings
Collision avoidance can interfere with swarming behavior.
Significant parameter tuning is required for effective collision avoidance.
Existing algorithms may not be sufficient for non-negligible agent sizes.
Abstract
Swarms of autonomous agents are useful in many applications due to their ability to accomplish tasks in a decentralized manner, making them more robust to failures. Due to the difficulty in running experiments with large numbers of hardware agents, researchers often make simplifying assumptions and remove constraints that might be present in a real swarm deployment. While simplifying away some constraints is tolerable, we feel that two in particular have been overlooked: one, that agents in a swarm take up physical space, and two, that agents might be damaged in collisions. Many existing works assume agents have negligible size or pass through each other with no added penalty. It seems possible to ignore these constraints using collision avoidance, but we show using an illustrative example that this is easier said than done. In particular, we show that collision avoidance can interfere…
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