A robust solution of a statistical inverse problem in multiscale computational mechanics using an artificial neural network
Florent Pled (MSME), Christophe Desceliers (MSME), Tianyu Zhang (MSME)

TL;DR
This paper presents a neural network-based method for robustly identifying elastic properties of heterogeneous materials from multiscale computational models, effectively handling uncertainties and validated with synthetic and experimental data.
Contribution
It introduces a novel approach combining database conditioning and neural networks to solve inverse problems in multiscale mechanics with robustness to uncertainties.
Findings
Neural networks accurately predict material properties with low error.
The method effectively incorporates uncertainty analysis.
Validated on both synthetic and real experimental data.
Abstract
This work addresses the inverse identification of apparent elastic properties of random heterogeneous materials using machine learning based on artificial neural networks. The proposed neural network-based identification method requires the construction of a database from which an artificial neural network can be trained to learn the nonlinear relationship between the hyperparameters of a prior stochastic model of the random compliance field and some relevant quantities of interest of an ad hoc multiscale computational model. An initial database made up with input and target data is first generated from the computational model, from which a processed database is deduced by conditioning the input data with respect to the target data using the nonparametric statistics. Two-and three-layer feedforward artificial neural networks are then trained from each of the initial and processed…
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Taxonomy
MethodsLinear Regression
