Deep neural network enabled corrective source term approach to hybrid analysis and modeling
Sindre Stenen Blakseth, Adil Rasheed, Trond Kvamsdal, Omer, San

TL;DR
This paper introduces CoSTA, a hybrid modeling approach combining physics-based models with neural network-generated corrections, significantly improving accuracy and interpretability in PDE-governed systems.
Contribution
The paper presents CoSTA, a novel, modular framework that enhances physics-based models with neural network corrections, ensuring better accuracy, generalization, and explainability.
Findings
CoSTA reduces predictive errors by several orders of magnitude.
CoSTA outperforms pure data-driven and physics-based models in accuracy.
CoSTA improves model interpretability and generalization.
Abstract
In this work, we introduce, justify and demonstrate the Corrective Source Term Approach (CoSTA) -- a novel approach to Hybrid Analysis and Modeling (HAM). The objective of HAM is to combine physics-based modeling (PBM) and data-driven modeling (DDM) to create generalizable, trustworthy, accurate, computationally efficient and self-evolving models. CoSTA achieves this objective by augmenting the governing equation of a PBM model with a corrective source term generated using a deep neural network. In a series of numerical experiments on one-dimensional heat diffusion, CoSTA is found to outperform comparable DDM and PBM models in terms of accuracy -- often reducing predictive errors by several orders of magnitude -- while also generalizing better than pure DDM. Due to its flexible but solid theoretical foundation, CoSTA provides a modular framework for leveraging novel developments within…
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