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Autori principali: Fan, Yiming, Najm, Habib, Yu, Yue, Silling, Stewart, D'Elia, Marta
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2410.20331
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author Fan, Yiming
Najm, Habib
Yu, Yue
Silling, Stewart
D'Elia, Marta
author_facet Fan, Yiming
Najm, Habib
Yu, Yue
Silling, Stewart
D'Elia, Marta
contents Nonlocal, integral operators have become an efficient surrogate for bottom-up homogenization, due to their ability to represent long-range dependence and multiscale effects. However, the nonlocal homogenized model has unavoidable discrepancy from the microscale model. Such errors accumulate and propagate in long-term simulations, making the resultant prediction unreliable. To develop a robust and reliable bottom-up homogenization framework, we propose a new framework, which we coin Embedded Nonlocal Operator Regression (ENOR), to learn a nonlocal homogenized surrogate model and its structural model error. This framework provides discrepancy-adaptive uncertainty quantification for homogenized material response predictions in long-term simulations. The method is built on Nonlocal Operator Regression (NOR), an optimization-based nonlocal kernel learning approach, together with an embedded model error term in the trainable kernel. Then, Bayesian inference is employed to infer the model error term parameters together with the kernel parameters. To make the problem computationally feasible, we use a multilevel delayed acceptance Markov chain Monte Carlo (MLDA-MCMC) method, enabling efficient Bayesian model calibration and model error estimation. We apply this technique to predict long-term wave propagation in a heterogeneous one-dimensional bar, and compare its performance with additive noise models. Owing to its ability to capture model error, the learned ENOR achieves improved estimation of posterior predictive uncertainty.
format Preprint
id arxiv_https___arxiv_org_abs_2410_20331
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Embedded Nonlocal Operator Regression (ENOR): Quantifying model error in learning nonlocal operators
Fan, Yiming
Najm, Habib
Yu, Yue
Silling, Stewart
D'Elia, Marta
Machine Learning
Materials Science
Nonlocal, integral operators have become an efficient surrogate for bottom-up homogenization, due to their ability to represent long-range dependence and multiscale effects. However, the nonlocal homogenized model has unavoidable discrepancy from the microscale model. Such errors accumulate and propagate in long-term simulations, making the resultant prediction unreliable. To develop a robust and reliable bottom-up homogenization framework, we propose a new framework, which we coin Embedded Nonlocal Operator Regression (ENOR), to learn a nonlocal homogenized surrogate model and its structural model error. This framework provides discrepancy-adaptive uncertainty quantification for homogenized material response predictions in long-term simulations. The method is built on Nonlocal Operator Regression (NOR), an optimization-based nonlocal kernel learning approach, together with an embedded model error term in the trainable kernel. Then, Bayesian inference is employed to infer the model error term parameters together with the kernel parameters. To make the problem computationally feasible, we use a multilevel delayed acceptance Markov chain Monte Carlo (MLDA-MCMC) method, enabling efficient Bayesian model calibration and model error estimation. We apply this technique to predict long-term wave propagation in a heterogeneous one-dimensional bar, and compare its performance with additive noise models. Owing to its ability to capture model error, the learned ENOR achieves improved estimation of posterior predictive uncertainty.
title Embedded Nonlocal Operator Regression (ENOR): Quantifying model error in learning nonlocal operators
topic Machine Learning
Materials Science
url https://arxiv.org/abs/2410.20331