4.7 Article

Context-aware learning of hierarchies of low-fidelity models for multi-fidelity uncertainty quantification

Journal

Publisher

ELSEVIER SCIENCE SA
DOI: 10.1016/j.cma.2023.115908

Keywords

Context -aware learning; Multi -fidelity Monte Carlo; Model reduction; Nuclear fusion; Scientific machine learning

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Multi-fidelity Monte Carlo methods leverage low-fidelity and surrogate models for variance reduction to make uncertainty quantification tractable. This work proposes a context-aware multi-fidelity Monte Carlo method that optimizes the balance between training costs and sampling costs. The method applies to hierarchies of different types of low-fidelity models and allows for optimal trade-offs between training and sampling to minimize mean-squared errors of estimators.
Multi-fidelity Monte Carlo methods leverage low-fidelity and surrogate models for variance reduction to make tractable uncertainty quantification even when numerically simulating the physical systems of interest with high-fidelity models is computationally expensive. This work proposes a context-aware multi-fidelity Monte Carlo method that optimally balances the costs of training low-fidelity models with the costs of Monte Carlo sampling. It generalizes the previously developed context -aware bi-fidelity Monte Carlo method to hierarchies of multiple models and to more general types of low-fidelity models. When training low-fidelity models, the proposed approach takes into account the context in which the learned low-fidelity models will be used, namely for variance reduction in Monte Carlo estimation, which allows it to find optimal trade-offs between training and sampling to minimize upper bounds of the mean-squared errors of the estimators for given computational budgets. This is in stark contrast to traditional surrogate modeling and model reduction techniques that construct low-fidelity models with the primary goal of approximating well the high-fidelity model outputs and typically ignore the context in which the learned models will be used in upstream tasks. The proposed context-aware multi-fidelity Monte Carlo method applies to hierarchies of a wide range of types of low-fidelity models such as sparse-grid and deep-network models. Numerical experiments with the gyrokinetic simulation code GENE show speedups of up to two orders of magnitude compared to standard estimators when quantifying uncertainties in small-scale fluctuations in confined plasma in fusion reactors. This corresponds to a runtime reduction from 72 days to four hours on one node of the Lonestar6 supercomputer at the Texas Advanced Computing Center.(c) 2023 Elsevier B.V. All rights reserved.

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