Memory of jamming - multiscale models for soft and granular matter
Nishant Kumar, Stefan Luding

TL;DR
This paper introduces a multiscale, predictive model for soft and granular materials that incorporates a history-dependent jamming density as a new state-variable, explaining diverse phenomena near jamming.
Contribution
It presents a novel, quantitative model linking microstructure memory to macroscopic response, unifying various jamming behaviors through a variable jamming density.
Findings
Jamming density increases logarithmically with gentle compression.
Shear deformations cause exponential changes in packing efficiency.
The microstatistical model links microscopic energy landscapes to macroscopic flow behavior.
Abstract
Soft, disordered, micro-structured materials are ubiquitous in nature and industry, and are different from ordinary fluids or solids, with unusual, interesting static and flow properties. The transition from fluid to solid -at the so-called jamming density- features a multitude of complex mechanisms, but there is no unified theoretical framework that explains them all. In this study, a simple yet quantitative and predictive model is presented, which allows for a variable, changing jamming density, encompassing the memory of the deformation history and explaining a multitude of phenomena at and around jamming. The jamming density, now introduced as a new state-variable, changes due to the deformation history and relates the system's macroscopic response to its microstructure. The packing efficiency can increase logarithmically slow under gentle repeated (isotropic) compression, leading…
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