Local approximate Gaussian process regression for data-driven constitutive models: development and comparison with neural networks

被引:56
作者
Fuhg, Jan N. [1 ]
Marino, Michele [3 ]
Bouklas, Nikolaos [1 ,2 ]
机构
[1] Cornell Univ, Sibley Sch Mech & Aerosp Engn, Ithaca, NY 14853 USA
[2] Cornell Univ, Ctr Appl Math, Ithaca, NY 14853 USA
[3] Univ Roma Tor Vergata, Dept Civil Engn & Comp Sci, Rome, Italy
关键词
Numerical homogenization; Machine learning; Gaussian process regression; Data-driven constitutive models; HOMOGENIZATION;
D O I
10.1016/j.cma.2021.114217
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Hierarchical computational methods for multiscale mechanics such as the FE2 and FE-FFT methods are generally accompanied by high computational costs. Data-driven approaches are able to speed the process up significantly by enabling to incorporate the effective micromechanical response in macroscale simulations without the need of performing additional computations at each Gauss point explicitly. Traditionally artificial neural networks (ANNs) have been the surrogate modeling technique of choice in the solid mechanics community. However they suffer from severe drawbacks due to their parametric nature and suboptimal training and inference properties for the investigated datasets in a three dimensional setting. These problems can be avoided using local approximate Gaussian process regression (laGPR). This method can allow the prediction of stress outputs at particular strain space locations by training local regression models based on Gaussian processes, using only a subset of the data for each local model, offering better and more reliable accuracy than ANNs. A modified Newton-Raphson approach specific to laGPR is proposed to accommodate for the local nature of the laGPR approximation when solving the global structural problem in a FE setting. Hence, the presented work offers a complete and general framework enabling multiscale calculations combining a data-driven constitutive prediction using laGPR, and macroscopic calculations using an FE scheme that we test for finite-strain three-dimensional hyperelastic problems. (C) 2021 Elsevier B.V. All rights reserved.
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页数:23
相关论文
共 58 条
[1]   AN INTRODUCTION TO KERNEL AND NEAREST-NEIGHBOR NONPARAMETRIC REGRESSION [J].
ALTMAN, NS .
AMERICAN STATISTICIAN, 1992, 46 (03) :175-185
[2]  
[Anonymous], 1999, Iterative methods for optimization
[3]   The deal .II library, Version 9.2 [J].
Arndt, Daniel ;
Bangerth, Wolfgang ;
Blais, Bruno ;
Clevenger, Thomas C. ;
Fehling, Marc ;
Grayver, Alexander, V ;
Heister, Timo ;
Heltai, Luca ;
Kronbichler, Martin ;
Maier, Matthias ;
Munch, Peter ;
Pelteret, Jean-Paul ;
Rastak, Reza ;
Tomas, Ignacio ;
Turcksin, Bruno ;
Wang, Zhuoran ;
Wells, David .
JOURNAL OF NUMERICAL MATHEMATICS, 2020, 28 (03) :131-146
[4]  
Cressie N., 1993, Statistics for Spatial Data, DOI 10.1002/9781119115151
[5]   Hierarchical Nearest-Neighbor Gaussian Process Models for Large Geostatistical Datasets [J].
Datta, Abhirup ;
Banerjee, Sudipto ;
Finley, Andrew O. ;
Gelfand, Alan E. .
JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 2016, 111 (514) :800-812
[6]  
Deisenroth MP, 2015, PR MACH LEARN RES, V37, P1481
[7]   The kriging update equations and their application to the selection of neighboring data [J].
Emery, Xavier .
COMPUTATIONAL GEOSCIENCES, 2009, 13 (03) :269-280
[8]  
Fish J., 2010, Multiscale methods: bridging the scales in science and engineering
[9]   Bridging the scales in nano engineering and science [J].
Fish, Jacob .
JOURNAL OF NANOPARTICLE RESEARCH, 2006, 8 (05) :577-594
[10]  
Franey M., 2012, ARXIV PREPRINT ARXIV