The Symmetry Basis of Pattern Formation in Reaction-Diffusion Networks
Ian Hunter, Michael M. Norton, Bolun Chen, Chris Simonetti, Maria, Eleni Moustaka, Jonathan Touboul, Seth Fraden

TL;DR
This study investigates how symmetry principles predict pattern formation in reaction-diffusion networks of chemical oscillators, testing their robustness against imperfections through experiments and simulations.
Contribution
It demonstrates that symmetry-based predictions hold despite heterogeneity, revealing which states are robust or destabilized in real-world conditions.
Findings
Symmetry constrains network dynamics even with heterogeneity
Three of four predicted phase-locked states observed experimentally
Quantitative agreement achieved by accounting for heterogeneity
Abstract
In networks of nonlinear oscillators, symmetries place hard constraints on the system that can be exploited to predict universal dynamical features and steady-states, providing a rare generic organizing principle for far-from-equilibrium systems. However, the robustness of this class of theories to symmetry-disrupting imperfections is untested. Here, we develop a model experimental reaction-diffusion network of chemical oscillators to test applications of this theory in the context of self-organizing systems relevant to biology and soft robotics. The network is a ring of 4 identical microreactors containing the oscillatory Belousov-Zhabotinsky reaction coupled to nearest neighbors via diffusion. Assuming perfect symmetry, theory predicts 4 categories of stable spatiotemporal phase-locked periodic states and 4 categories of invariant manifolds that guide and structure transitions between…
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Taxonomy
TopicsNonlinear Dynamics and Pattern Formation · Gene Regulatory Network Analysis
