Hearing the shape of an arena with spectral swarm robotics
Swarm robotics promises adaptability to unknown situations and robustness against failures. However, it still struggles with global tasks that require understanding the broader context in which the robots operate, such as identifying the shape of the arena in which the robots are embedded. Biologica...
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Zusammenfassung: | Swarm robotics promises adaptability to unknown situations and robustness
against failures. However, it still struggles with global tasks that require
understanding the broader context in which the robots operate, such as
identifying the shape of the arena in which the robots are embedded. Biological
swarms, such as shoals of fish, flocks of birds, and colonies of insects,
routinely solve global geometrical problems through the diffusion of local
cues. This paradigm can be explicitly described by mathematical models that
could be directly computed and exploited by a robotic swarm. Diffusion over a
domain is mathematically encapsulated by the Laplacian, a linear operator that
measures the local curvature of a function. Crucially the geometry of a domain
can generally be reconstructed from the eigenspectrum of its Laplacian. Here we
introduce spectral swarm robotics where robots diffuse information to their
neighbors to emulate the Laplacian operator - enabling them to "hear" the
spectrum of their arena. We reveal a universal scaling that links the optimal
number of robots (a global parameter) with their optimal radius of interaction
(a local parameter). We validate experimentally spectral swarm robotics under
challenging conditions with the one-shot classification of arena shapes using a
sparse swarm of Kilobots. Spectral methods can assist with challenging tasks
where robots need to build an emergent consensus on their environment, such as
adaptation to unknown terrains, division of labor, or quorum sensing. Spectral
methods may extend beyond robotics to analyze and coordinate swarms of agents
of various natures, such as traffic or crowds, and to better understand the
long-range dynamics of natural systems emerging from short-range interactions. |
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DOI: | 10.48550/arxiv.2403.17147 |