Uncertainty quantification for nonlinear solid mechanics using reduced order models with Gaussian process regression

被引:6
|
作者
Cicci, Ludovica [1 ,2 ]
Fresca, Stefania [1 ]
Guo, Mengwu [3 ]
Manzoni, Andrea [1 ]
Zunino, Paolo [1 ]
机构
[1] Politecn Milan, Dipartimento Matemat, MOX, Milan, Italy
[2] Kings Coll London, Sch Biomed Engn & Imaging Sci, London, England
[3] Univ Twente, Dept Appl Math, Twente, Netherlands
关键词
Uncertainty quantification; Reduced order modeling; Gaussian process regression; Nonlinear solid mechanics; Sensitivity analysis; Parameter estimation; ARTIFICIAL NEURAL-NETWORKS; SENSITIVITY-ANALYSIS; REDUCTION; EQUATIONS;
D O I
10.1016/j.camwa.2023.08.016
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
Uncertainty quantification (UQ) tasks, such as sensitivity analysis and parameter estimation, entail a huge computational complexity when dealing with input-output maps involving the solution of nonlinear differential problems, because of the need to query expensive numerical solvers repeatedly. Projection-based reduced order models (ROMs), such as the Galerkin-reduced basis (RB) method, have been extensively developed in the last decades to overcome the computational complexity of high fidelity full order models (FOMs), providing remarkable speed-ups when addressing UQ tasks related with parameterized differential problems. Nonetheless, constructing a projection-based ROM that can be efficiently queried usually requires extensive modifications to the original code, a task which is non-trivial for nonlinear problems, or even not possible at all when proprietary software is used. Non-intrusive ROMs - which rely on the FOM as a black box - have been recently developed to overcome this issue. In this work, we consider ROMs exploiting proper orthogonal decomposition to construct a reduced basis from a set of FOM snapshots, and Gaussian process regression (GPR) to approximate the RB projection coefficients. Two different approaches, namely a global GPR and a tensor-decomposition-based GPR, are explored on a set of 3D time-dependent solid mechanics examples. Finally, the non-intrusive ROM is exploited to perform global sensitivity analysis (relying on both screening and variance-based methods) and parameter estimation (through Markov chain Monte Carlo methods), showing remarkable computational speed-ups and very good accuracy compared to high-fidelity FOMs.
引用
收藏
页码:1 / 23
页数:23
相关论文
共 50 条
  • [31] INVERSE UNCERTAINTY QUANTIFICATION OF A CELL MODEL USING A GAUSSIAN PROCESS METAMODEL
    de Vries, Kevin
    Nikishova, Anna
    Czaja, Benjamin
    Zavodszky, Gabor
    Hoekstra, Alfons G.
    INTERNATIONAL JOURNAL FOR UNCERTAINTY QUANTIFICATION, 2020, 10 (04) : 333 - 349
  • [32] Uncertainty Quantification in Stochastic Economic Dispatch using Gaussian Process Emulation
    Hu, Zhixiong
    Xu, Yijun
    Korkali, Mert
    Chen, Xiao
    Mili, Lamine
    Tong, Charles H.
    2020 IEEE POWER & ENERGY SOCIETY INNOVATIVE SMART GRID TECHNOLOGIES CONFERENCE (ISGT), 2020,
  • [33] Radiation image reconstruction and uncertainty quantification using a Gaussian process prior
    Lee, Jaewon
    Joshi, Tenzing H.
    Bandstra, Mark S.
    Gunter, Donald L.
    Quiter, Brian J.
    Cooper, Reynold J.
    Vetter, Kai
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [34] Skew Gaussian Process for Nonlinear Regression
    Alodat, M. T.
    Al-Momani, E. Y.
    COMMUNICATIONS IN STATISTICS-THEORY AND METHODS, 2014, 43 (23) : 4936 - 4961
  • [35] Gaussian Process Regression Using Laplace Approximations Under Localization Uncertainty
    Jadaliha, Mahdi
    Xu, Yunfei
    Choi, Jongeun
    2012 AMERICAN CONTROL CONFERENCE (ACC), 2012, : 1394 - 1399
  • [36] STATISTICAL GUARANTEES FOR BAYESIAN UNCERTAINTY QUANTIFICATION IN NONLINEAR INVERSE PROBLEMS WITH GAUSSIAN PROCESS PRIORS
    Monard, Francois
    Nickl, Richard
    Paternain, Gabriel P.
    ANNALS OF STATISTICS, 2021, 49 (06): : 3255 - 3298
  • [37] Global Sensitivity Analysis and Uncertainty Quantification of Crude Distillation Unit Using Surrogate Model Based on Gaussian Process Regression
    Le Quang Minh
    Pham Luu Trung Duong
    Lee, Moonyong
    INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2018, 57 (14) : 5035 - 5044
  • [39] A Probabilistic Machine Learning Approach for the Uncertainty Quantification of Electronic Circuits Based on Gaussian Process Regression
    Manfredi, Paolo
    Trinchero, Riccardo
    IEEE TRANSACTIONS ON COMPUTER-AIDED DESIGN OF INTEGRATED CIRCUITS AND SYSTEMS, 2022, 41 (08) : 2638 - 2651
  • [40] Uncertainty Quantification for an Elasto-acoustic Nonlinear Reduced-Order Computational Model
    Capiez-Lernout, E.
    Soize, C.
    Ohayon, R.
    X INTERNATIONAL CONFERENCE ON STRUCTURAL DYNAMICS (EURODYN 2017), 2017, 199 : 1204 - 1209