Conventional machine learning approaches predominantly focus on macroscopic stress–strain correlations, neglecting crucial microstructural descriptors of granular systems. This study proposes a fabric-informed neural network (FINN) that innovatively incorporates fabric evolution as a physical constraint and synergistically combines it with scientific discovery techniques to identify governing equations without prior physical assumptions. An oscillatory simple shear flow of granular materials with different shear amplitudes is simulated separately using the discrete-element method to create the dataset for model training and equation discovery. Systematic validations are conducted to examine the generalisation ability of the discovered evolution law across diverse particle properties and boundary conditions, including variations in shear protocols, confining pressures and model dimensions. Remarkably, the equation discovered from the training sets successfully predicts the evolution of the fabric in complex oscillatory shear loading scenarios. Furthermore, the fabric evolution law is extended by establishing a quantitative relationship between rolling friction coefficients and equation parameters, enabling accurate prediction of fabric anisotropy for previously unseen particle angularities. The study also extends to two-phase composite materials, demonstrating that the discovered laws accurately represent the reduced anisotropy and distinct kinetics induced by varying fractions of soft particles. This framework provides a general solution for discovering the evolution law governing granular microstructures, advancing the continuum constitutive modelling of granular materials.
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Research Article|
June 23 2026
FINN: fabric-informed neural network for data-driven discovery of constitutive relations for granular materials
T. Y. Han;
T. Y. Han
*School of Aeronautics and Astronautics,
Sun Yat-sen University
, Guangzhou, P. R. China
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X. Han;
X. Han
†Department of Civil Engineering,
The University of Hong Kong
, Hong Kong, P. R. China
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G. C. Yang;
‡School of Aeronautics and Astronautics,
Sun Yat-sen University
, Guangzhou, P. R. China
Corresponding author G. C. Yang (yanggch8@mail.sysu.edu.cn)
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C. Y. Kwok;
C. Y. Kwok
†Department of Civil Engineering,
The University of Hong Kong
, Hong Kong, P. R. China
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L. Jing;
L. Jing
§Institute for Ocean Engineering, Shenzhen International Graduate School,
Tsinghua University
, Shenzhen, P. R. China
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Y. D. Sobral
Y. D. Sobral
‖Departamento de Matemática,
Universidade de Brasília
, Brasília, Brazil
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Corresponding author G. C. Yang (yanggch8@mail.sysu.edu.cn)
Publisher: Emerald Publishing
Received:
September 03 2025
Accepted:
February 27 2026
Online ISSN: 1751-7656
Print ISSN: 0016-8505
© 2026 Emerald Publishing Limited
2026
Emerald Publishing Limited
Licensed re-use rights only
Geotechnique 1–15.
Article history
Received:
September 03 2025
Accepted:
February 27 2026
Citation
Han TY, Han X, Yang GC, Kwok CY, Jing L, Sobral YD (2026;), "FINN: fabric-informed neural network for data-driven discovery of constitutive relations for granular materials". Geotechnique, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1680/jgeot.25.00657
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