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A methodology to calibrate and to validate effective solid potentials of heterogeneous porous media from computed tomography scans and laboratory-measured nanoindentation data
Authors:Siavash Monfared  Hadrien Laubie  Farhang Radjai  Mija Hubler  Roland Pellenq  Franz-Josef Ulm
Institution:1.Department of Civil and Environmental Engineering,Massachusetts Institute of Technology,Cambridge,USA;2.〈MSE〉2, UMI 3466 CNRS-MIT Energy Initiative,Massachusetts Institute of Technology,Cambridge,USA;3.LMGC, UMR-5508 CNRS,Universite de Montpellier,Montpellier,France;4.Department of Civil, Environmental and Architectural Engineering,Colorado University,Boulder,USA;5.CINaM, CNRS,Aix Marseille Universite,Marseille Cedex 09,France
Abstract:Built on the framework of effective interaction potentials using lattice element method, a methodology to calibrate and to validate the elasticity of solid constituents in heterogeneous porous media from experimentally measured nanoindentation moduli and imported scans from advanced imaging techniques is presented. Applied to computed tomography (CT) scans of two organic-rich shales, spatial variations of effective interaction potentials prove instrumental in capturing the effective elastic behavior of highly heterogeneous materials via the first two cumulants of experimentally measured distributions of nanoindentation moduli. After calibration and validation steps while implicitly accounting for mesoscale texture effects via CT scans, Biot poroelastic coefficients are simulated. Analysis of stress percolation suggests contrasting pathways for load transmission, a reflection of microtextural differences in the studied cases. This methodology to calibrate elastic energy content of real materials from advanced imaging techniques and experimental measurements paves the way to study other phenomena such as wave propagation and fracture while providing a platform to fine-tune effective behavior of materials given advancements in additive manufacturing and machine learning algorithms.
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