Automatic identification of macroscopic constitutive parameters for polycrystalline materials based on computational homogenisation

Author:

Fonseca Gonçalves GuilhermeORCID,Cardoso Coelho Rui PedroORCID,Rodrigues Lopes Igor AndréORCID

Abstract

PurposeThe purpose of this research is to establish a robust numerical framework for the calibration of macroscopic constitutive parameters, based on the analysis of polycrystalline RVEs with computational homogenisation.Design/methodology/approachThis framework is composed of four building-blocks: (1) the multi-scale model, consisting of polycrystalline RVEs, where the grains are modelled with anisotropic crystal plasticity, and computational homogenisation to link the scales, (2) a set of loading cases to generate the reference responses, (3) the von Mises elasto-plastic model to be calibrated, and (4) the optimisation algorithms to solve the inverse identification problem. Several optimisation algorithms are assessed through a reference identification problem. Thereafter, different calibration strategies are tested. The accuracy of the calibrated models is evaluated by comparing their results against an FE2 model and experimental data.FindingsIn the initial tests, the LIPO optimiser performs the best. Good results accuracy is obtained with the calibrated constitutive models. The computing time needed by the FE2 simulations is 5 orders of magnitude larger, compared to the standard macroscopic simulations, demonstrating how this framework is suitable to obtain efficient micro-mechanics-informed constitutive models.Originality/valueThis contribution proposes a numerical framework, based on FE2 and macro-scale single element simulations, where the calibration of constitutive laws is informed by multi-scale analysis. The most efficient combination of optimisation algorithm and definition of the objective function is studied, and the robustness of the proposed approach is demonstrated by validation with both numerical and experimental data.

Publisher

Emerald

Reference77 articles.

1. The arithmetic optimization algorithm;Computer Methods in Applied Mechanics and Engineering,2021

2. Large-strain viscoelastic–viscoplastic constitutive modeling of semi-crystalline polymers and model identification by deterministic/evolutionary approach;Computational Materials Science,2014

3. Andrade, F.X.C. (2011), “Non-local modelling of ductile damage: formulation and numerical issues”, Ph.D. Thesis, Faculdade de Engenharia da Universidade do Porto.

4. On the determination of material parameters for internal variable thermoelastic-viscoplastic constitutive models;International Journal of Plasticity,2007

5. Crystal plasticity;Journal of Applied Mechanics,1983

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