Micro-mechanical insights into the stress transmission in strongly aggregating colloidal gel
Divas Singh Dagur, Yezaz Ahmed Gadi Man, Saikat Roy

TL;DR
This study uses numerical simulations to explore stress transmission in colloidal gels, revealing universal force distributions, percolating force networks, and proposing constitutive relations that connect internal parameters to stress response.
Contribution
It provides new microscopic insights into stress transmission mechanisms in colloidal gels, especially at high packing fractions, and introduces simple constitutive models linking internal states to stress.
Findings
Existence of two percolating force networks near gel point
Universal force distribution behavior independent of interaction details
Proposed constitutive relations accurately predict stress from internal parameters
Abstract
Predicting the mechanical response of the soft gel materials under external deformation is of paramount importance in many areas, such as foods, pharmaceuticals, solid-liquid separations, cosmetics, aerogels and drug delivery. Most of the understanding of the elasticity of gel materials is based on the concept of fractal scaling with very little microscopic insights. Previous experimental observations strongly suggest that the gel material loses the fractal correlations upon deformation and the range of packing fraction up to which the fractal scaling can be applied is very limited. Also, correctly implementing the fractal modeling requires identifying the elastic backbone, which is a formidable task. So far, there is no clear understanding of the gel elasticity at high packing fraction and the correct length scale that governs its mechanical response. In this work, we undertake…
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Taxonomy
TopicsData Management and Algorithms
