Data-driven material modeling based on the Constitutive Relation Error

被引:0
|
作者
Pierre Ladevèze [1 ]
Ludovic Chamoin [1 ]
机构
[1] Université Paris-Saclay,CentraleSupélec, ENS Paris
[2] Institut Universitaire de France (IUF),Saclay, CNRS, LMPS
关键词
Data-driven modeling; Materials science; Constitutive Relation Error; Elasto-(visco-)plasticity;
D O I
10.1186/s40323-024-00279-x
中图分类号
学科分类号
摘要
Prior to any numerical development, the paper objective is to answer first to a fundamental question: what is the mathematical form of the most general data-driven constitutive model for stable materials, taking maximum account of knowledge from physics and materials science? Here we restrict ourselves to elasto-(visco-)plastic materials under the small displacement assumption. The experimental data consists of full-field measurements from a family of tested mechanical structures. In this framework, a general data-driven approach is proposed to learn the constitutive model (in terms of thermodynamic potentials) from data. A key element that defines the proposed data-driven approach is a tool: the Constitutive Relation Error (CRE); the data-driven model is then the minimizer of the CRE. A notable aspect of this procedure is that it leads to quasi-explicit formulations of the optimal constitutive model. Eventually, a modified Constitutive Relation Error is introduced to take measurement noise into account.
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