
handle: 2108/329506
Computational multiscale methods for analyzing and deriving constitutive responses have been used as a tool in engineering problems because of their ability to combine information at different length scales. However, their application in a nonlinear framework can be limited by high computational costs, numerical difficulties, and/or inaccuracies. In this paper, a hybrid methodology is presented which combines classical constitutive laws (model-based), a data-driven correction component, and computational multiscale approaches. A model-based material representation is locally improved with data from lower scales obtained by means of a nonlinear numerical homogenization procedure leading to a model-data-driven approach. Therefore, macroscale simulations explicitly incorporate the true microscale response, maintaining the same level of accuracy that would be obtained with online micro-macro simulations but with a computational cost comparable to classical model-driven approaches. In the proposed approach, both model and data play a fundamental role allowing for the synergistic integration between a physics-based response and a machine learning black-box. Numerical applications are implemented in two dimensions for different tests investigating both material and structural responses in large deformation.
43 pages, 28 figures
FOS: Computer and information sciences, Computer Science - Machine Learning, [SPI] Engineering Sciences [physics], I.2.6, Computational homogenization, G.1.8, Machine Learning (stat.ML), Model-data-driven, 620, Machine Learning (cs.LG), Settore ICAR/08 - SCIENZA DELLE COSTRUZIONI, Ordinary kriging, Mathematics - Analysis of PDEs, 74B20, 68T99, Statistics - Machine Learning, G.1.8; I.2.6, FOS: Mathematics, Settore CEAR-06/A - Scienza delle costruzioni, Multiscale simulations, Machine-learning, Analysis of PDEs (math.AP)
FOS: Computer and information sciences, Computer Science - Machine Learning, [SPI] Engineering Sciences [physics], I.2.6, Computational homogenization, G.1.8, Machine Learning (stat.ML), Model-data-driven, 620, Machine Learning (cs.LG), Settore ICAR/08 - SCIENZA DELLE COSTRUZIONI, Ordinary kriging, Mathematics - Analysis of PDEs, 74B20, 68T99, Statistics - Machine Learning, G.1.8; I.2.6, FOS: Mathematics, Settore CEAR-06/A - Scienza delle costruzioni, Multiscale simulations, Machine-learning, Analysis of PDEs (math.AP)
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