A New Adaptive Deep Learning based Reduced Order Model for Hybrid-Type Parabolic PDEs: Rigorous Error Analysis and ApplicationsOpen Access

Kotowski, Dawid; Ohlberger, Mario

Research article in digital collection | Preprint

Abstract

This contribution proposes novel data-driven surrogate modeling approaches for parameterized parabolic PDEs, where the parameter dependence can be split into two parts with different decay behavior of the Kolmogorov N-width. Such problems naturally arise in many industrial flow processes with dominant advection or traveling fronts in the solution trajectories. To tackle this challenge, we extend the Deep Orthogonal Decomposition (DOD) method, recently introduced for related stationary problems, to the time-dependent setting. We introduce and rigorously analyze two DOD based approaches: Our approach is based on two novel adaptive deep learning-based surrogate models: The DOD-DL-ROM method which is a Reduced Order Model (ROM) that leverages the adaptive nature of DOD, and the DOD+DFNN method, which combines DOD with a generic Deep Feed-Forward Neural Network (DFNN). On the theory side, we generalize data-driven POD-based ROM arguments to the DOD setting, establishing a quantitative link between online performance and the regularity of an associated optimal map. Furthermore, we identify specific problem size and error tolerance requirements for DOD-based ROMs to outperform POD-based ROMs in hybrid-type problem classes, which is crucial for efficient computation. The significance of this work lies in its potential to accelerate the solution of complex PDEs, enabling faster design and optimization of industrial processes. The proposed approaches are demonstrated on a catalyst filter benchmark problem, showcasing their effectiveness and comparing favorably to traditional POD-based methods.

Details about the publication

Name of the repositoryarXiv
Article number2604.22512
Statussubmitted / under review
Release year2026 (24/04/2026)
Language in which the publication is writtenEnglish
DOI10.48550/arXiv.2604.22512
Link to the full texthttps://doi.org/10.48550/arXiv.2604.22512
Keywordsparametric partial differential equations; reduced order modeling; scientific machine learning; error decomposition; approximation theory

Authors from the University of Münster

Ohlberger, Mario
Professorship of Applied Mathematics, especially Numerics (Prof. Ohlberger)
Center for Data Science and Complexity (CDSC)
Center for Multiscale Theory and Computation (CMTC)