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Autori principali: Chung, Seung Whan, Miller, Christopher, Choi, Youngsoo, Tranquilli, Paul, Springer, H. Keo, Sullivan, Kyle
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2507.10647
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author Chung, Seung Whan
Miller, Christopher
Choi, Youngsoo
Tranquilli, Paul
Springer, H. Keo
Sullivan, Kyle
author_facet Chung, Seung Whan
Miller, Christopher
Choi, Youngsoo
Tranquilli, Paul
Springer, H. Keo
Sullivan, Kyle
contents Capturing sharp, evolving interfaces remains a central challenge in reduced-order modeling, especially when data is limited and the system exhibits localized nonlinearities or discontinuities. We propose LaSDI-IT (Latent Space Dynamics Identification for Interface Tracking), a data-driven framework that combines low-dimensional latent dynamics learning with explicit interface-aware encoding to enable accurate and efficient modeling of physical systems involving moving material boundaries. At the core of LaSDI-IT is a revised auto-encoder architecture that jointly reconstructs the physical field and an indicator function representing material regions or phases, allowing the model to track complex interface evolution without requiring detailed physical models or mesh adaptation. The latent dynamics are learned through linear regression in the encoded space and generalized across parameter regimes using Gaussian process interpolation with greedy sampling. We demonstrate LaSDI-IT on the problem of shock-induced pore collapse in high explosives, a process characterized by sharp temperature gradients and dynamically deforming pore geometries. The method achieves relative prediction errors below 9% across the parameter space, accurately recovers key quantities of interest such as pore area and hot spot formation, and matches the performance of dense training with only half the data. This latent dynamics prediction was 106 times faster than the conventional high-fidelity simulation, proving its utility for multi-query applications. These results highlight LaSDI-IT as a general, data-efficient framework for modeling discontinuity-rich systems in computational physics, with potential applications in multiphase flows, fracture mechanics, and phase change problems.
format Preprint
id arxiv_https___arxiv_org_abs_2507_10647
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Latent Space Dynamics Identification for Interface Tracking with Application to Shock-Induced Pore Collapse
Chung, Seung Whan
Miller, Christopher
Choi, Youngsoo
Tranquilli, Paul
Springer, H. Keo
Sullivan, Kyle
Computational Physics
35L67, 68T07, 37M99
Capturing sharp, evolving interfaces remains a central challenge in reduced-order modeling, especially when data is limited and the system exhibits localized nonlinearities or discontinuities. We propose LaSDI-IT (Latent Space Dynamics Identification for Interface Tracking), a data-driven framework that combines low-dimensional latent dynamics learning with explicit interface-aware encoding to enable accurate and efficient modeling of physical systems involving moving material boundaries. At the core of LaSDI-IT is a revised auto-encoder architecture that jointly reconstructs the physical field and an indicator function representing material regions or phases, allowing the model to track complex interface evolution without requiring detailed physical models or mesh adaptation. The latent dynamics are learned through linear regression in the encoded space and generalized across parameter regimes using Gaussian process interpolation with greedy sampling. We demonstrate LaSDI-IT on the problem of shock-induced pore collapse in high explosives, a process characterized by sharp temperature gradients and dynamically deforming pore geometries. The method achieves relative prediction errors below 9% across the parameter space, accurately recovers key quantities of interest such as pore area and hot spot formation, and matches the performance of dense training with only half the data. This latent dynamics prediction was 106 times faster than the conventional high-fidelity simulation, proving its utility for multi-query applications. These results highlight LaSDI-IT as a general, data-efficient framework for modeling discontinuity-rich systems in computational physics, with potential applications in multiphase flows, fracture mechanics, and phase change problems.
title Latent Space Dynamics Identification for Interface Tracking with Application to Shock-Induced Pore Collapse
topic Computational Physics
35L67, 68T07, 37M99
url https://arxiv.org/abs/2507.10647