TNet: A Model-Constrained Tikhonov Network Approach for Inverse Problems
Hai V. Nguyen, Tan Bui-Thanh

TL;DR
This paper introduces TNet, a deep learning approach constrained by physical models, which effectively solves inverse problems with limited data, achieving accuracy comparable to traditional methods but with significantly faster computation.
Contribution
The paper develops a novel model-constrained deep learning framework, TNet, that integrates physics-based models to improve inverse problem solving with limited data.
Findings
TNet achieves accuracy comparable to Tikhonov solutions.
TNet is several orders of magnitude faster than traditional methods.
Data randomization enhances network smoothness and generalization.
Abstract
Deep Learning (DL), in particular deep neural networks (DNN), by default is purely data-driven and in general does not require physics. This is the strength of DL but also one of its key limitations when applied to science and engineering problems in which underlying physical properties and desired accuracy need to be achieved. DL methods in their original forms are not capable of respecting the underlying mathematical models or achieving desired accuracy even in big-data regimes. However, many data-driven science and engineering problems, such as inverse problems, typically have limited experimental or observational data, and DL would overfit the data in this case. Leveraging information encoded in the underlying mathematical models, we argue, not only compensates missing information in low data regimes but also provides opportunities to equip DL methods with the underlying physics,…
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Taxonomy
TopicsModel Reduction and Neural Networks · Numerical methods in inverse problems · Gaussian Processes and Bayesian Inference
