Swarm Modelling with Dynamic Mode Decomposition
April 08, 2022 ยท Declared Dead ยท ๐ IEEE Access
"No code URL or promise found in abstract"
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Authors
Emma Hansen, Steven L. Brunton, Zhuoyuan Song
arXiv ID
2204.06335
Category
cs.NE: Neural & Evolutionary
Cross-listed
cs.RO,
math.DS,
nlin.AO,
physics.bio-ph
Citations
11
Venue
IEEE Access
Last Checked
4 months ago
Abstract
Modelling biological or engineering swarms is challenging due to the inherently high dimension of the system, despite the often low-dimensional emergent dynamics. Most existing swarm modelling approaches are based on first principles and often result in swarm-specific parameterizations that do not generalize to a broad range of applications. In this work, we apply a purely data-driven method to (1) learn local interactions of homogeneous swarms through observation data and to (2) generate similar swarming behaviour using the learned model. In particular, a modified version of dynamic mode decomposition with control, called swarmDMD, is developed and tested on the canonical Vicsek swarm model. The goal is to use swarmDMD to learn inter-agent interactions that give rise to the observed swarm behaviour. We show that swarmDMD can faithfully reconstruct the swarm dynamics, and the model learned by swarmDMD provides a short prediction window for data extrapolation with a trade-off between prediction accuracy and prediction horizon. We also provide a comprehensive analysis on the efficacy of different observation data types on the modelling, where we find that inter-agent distance yields the most accurate models. We believe the proposed swarmDMD approach will be useful for studying multi-agent systems found in biology, physics, and engineering.
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