LGMLMar 4

Hierarchical Inference and Closure Learning via Adaptive Surrogates for ODEs and PDEs

arXiv:2603.03922v11 citationsh-index: 4
Originality Incremental advance
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This work addresses inverse problems in engineering by enabling robust parameter inference and closure learning for multiple systems, though it is incremental as it builds on existing hierarchical and surrogate methods.

The paper tackles the joint estimation of individual model parameters and shared unknown dynamics for collections of related physical systems using a hierarchical Bayesian framework and neural network closures, achieving stable and efficient sampling with ensemble MALA and computational efficiency via a bilevel optimization strategy with surrogate models like FNO and PINNs.

Inverse problems are the task of calibrating models to match data. They play a pivotal role in diverse engineering applications by allowing practitioners to align models with reality. In many applications, engineers and scientists do not have a complete picture of i) the detailed properties of a system (such as material properties, geometry, initial conditions, etc.); ii) the complete laws describing all dynamics at play (such as friction laws, complicated damping phenomena, and general nonlinear interactions). In this paper, we develop a principled methodology for leveraging data from collections of distinct yet related physical systems to jointly estimate the individual model parameters of each system, and learn the shared unknown dynamics in the form of an ML-based closure model. To robustly infer the unknown parameters for each system, we employ a hierarchical Bayesian framework, which allows for the joint inference of multiple systems and their population-level statistics. To learn the closures, we use a maximum marginal likelihood estimate of a neural network embeded within the ODE/PDE formulation of the problem. To realize this framework we utilize the ensemble Metropolis-Adjusted Langevin Algorithm (MALA) for stable and efficient sampling. To mitigate the computational bottleneck of repetitive forward evaluations in solving inverse problems, we introduce a bilevel optimization strategy to simultaneously train a surrogate forward model alongside the inference. Within this framework, we evaluate and compare distinct surrogate architectures, specifically Fourier Neural Operators (FNO) and parametric Physics-Informed Neural Network (PINNs).

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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