posted on 2025-05-23, 16:01authored byGuoxiang Tong
Owing to their strong expressive power and great flexibility, deep neural network-based surrogate models have tremendously advanced the development of digital twins across a wide spectrum of physics-based systems. Apart from traditional architectures, modern artificial intelligence techniques such as normalizing flows and variational auto-encoder further equip the data-driven modeling with probabilistic perspectives and generative capabilities. However, among diverse aspects of studying a physical system, emulating the forward problem has been a primary interest, while other crucial components, like inverse problem and parameter identifiability analysis receive relatively less attention. In this work, we propose InVAErt networks, a data-driven framework that comprehensively synthesizes physics-based systems, including input-to-output forward emulation, probabilistic modeling of outputs, solving inverse problem in an amortized fashion, as well as addressing input parameter non-identifiability. In particular, the augmentation of a latent space constructed through a variational network facilitates the discovery of the structurally non-identifiable manifold embedded in the input space that maps to a common output. In addition, several approaches of dealing with practical identifiability induced by missing observations in the outputs, measurement noise and mis-specification error are also proposed, including a physics-based missing data imputation method and artificial noise injection during network training. For validation, a series of numerical experiments are carried out, starting from simple maps, to nonlinear dynamical systems, space-time PDEs and large scale hemodynamic models used for real-time inference of physiological states from real electronic health records (EHR).
History
Date Created
2025-05-20
Date Modified
2025-05-21
Defense Date
2025-05-01
CIP Code
27.9999
Research Director(s)
Daniele Schiavazzi
Committee Members
Fang Liu
Guosheng Fu
Zhiliang Xu
Carlos A. Sing-Long
Degree
Doctor of Philosophy
Degree Level
Doctoral Dissertation
Language
English
Library Record
006707497
OCLC Number
1520428571
Publisher
University of Notre Dame
Additional Groups
Applied and Computational Mathematics and Statistics
Program Name
Applied and Computational Mathematics and Statistics