Computer Generation of Disordered Networks with Targeted Structural Properties
Florin Hemmann, Vincent Glauser, Ullrich Steiner, Matthias Saba

TL;DR
This paper introduces a versatile method for generating disordered networks with specific structural properties using an extended algorithm and neural network predictions, enabling targeted design of complex networks.
Contribution
It extends the Wooten-Weaire-Winer algorithm to arbitrary coordination numbers and integrates neural networks for efficient targeted network generation.
Findings
Controlled disorder through bond-bending force adjustments.
Neural network accurately predicts structural features from algorithm parameters.
Successfully reproduced biophotonic networks with structural color.
Abstract
Disordered spatial networks describe structures and interactions across multiple length scales. The scattering and interference of waves within these networks result in structural phase transitions, localization, diffusion, and band gaps. Studying these phenomena requires efficient numerical methods for generating disordered networks with specific structural properties. The Wooten-Weaire-Winer algorithm is an established method that introduces disorder into an initial network through a series of bond switch moves. However, the strain energies that govern this evolution are conventionally limited to three-dimensional networks with coordination numbers of no more than four. We here introduce a maximum bond repulsion to produce networks with an arbitrary coordination number. We control the degree and type of disorder by adjusting the bond-bending force constant in the strain energy and the…
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