Adaptive-network models of swarm dynamics
classification
❄️ cond-mat.dis-nn
nlin.AO
keywords
modeladaptive-networkdynamicsanalogyanalyticalbreakingcapturecharacteristic
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We propose a simple adaptive-network model describing recent swarming experiments. Exploiting an analogy with human decision making, we capture the dynamics of the model by a low-dimensional system of equations permitting analytical investigation. We find that the model reproduces several characteristic features of swarms, including spontaneous symmetry breaking, noise- and density-driven order-disorder transitions that can be of first or second order, and intermittency. Reproducing these experimental observations using a non-spatial model suggests that spatial geometry may have a lesser impact on collective motion than previously thought.
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