Friction and Pressure-Dependence of Force Chain Communities in Granular Materials
Yuming Huang, Karen E. Daniels

TL;DR
This study applies network community detection to granular force chains, revealing how pressure and friction influence their structure and providing new mesoscale analysis tools.
Contribution
It introduces a novel application of community detection with a geographical null model to characterize force chain communities in granular materials.
Findings
Force chain community size correlates with network strength.
Pressure and friction cause crossovers in community properties.
Spatial distribution explains the observed behavioral crossovers.
Abstract
Granular materials transmit stress via a network of force chains. Despite the importance of these chains to characterizing the stress state and dynamics of the system, there is no common framework for quantifying their their properties. Recently, attention has turned to the tools of network science as a promising route to such a description. In this paper, we apply community detection techniques to numerically-generated packings of spheres over a range of interparticle friction coefficients and confining pressures. In order to extract chain-like features, we use a modularity maximization with a recently-developed geographical null model \cite{Bassett2015}, and optimize the technique to detect branched structures by minimizing the normalized convex hull of the detected communities. We characterize the force chain communities by their size (number of particles), network strength (internal…
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Taxonomy
TopicsComplex Network Analysis Techniques · Granular flow and fluidized beds · Slime Mold and Myxomycetes Research
