Efficient scientific machine learning algorithms for surrogate modeling and inverse problems
Abstract
Details
- Title: Subtitle
- Efficient scientific machine learning algorithms for surrogate modeling and inverse problems
- Creators
- Chuan Lu
- Contributors
- Xueyu Zhu (Advisor)Weimin Han (Committee Member)Mathews Jacob (Committee Member)David Stewart (Committee Member)
- Resource Type
- Dissertation
- Degree Awarded
- Doctor of Philosophy (PhD), University of Iowa
- Degree in
- Applied Mathematical and Computational Sciences
- Date degree season
- Spring 2022
- Publisher
- University of Iowa
- DOI
- 10.25820/etd.006531
- Number of pages
- xix, 139 pages
- Copyright
- Copyright 2022 Chuan Lu
- Comment
This thesis has been optimized for improved web viewing. If you require the original version, contact the University Archives at the University of Iowa: https://www.lib.uiowa.edu/sc/contact/.
- Language
- English
- Description illustrations
- illustrations (some color)
- Description bibliographic
- Includes bibliographical references (pages 124-139).
- Public Abstract (ETD)
Deep learning plays a dominant role in modern artificial intelligence systems and it has a significant impact on people’s lives. Up until recently, most applications of deep learning are confined to the “big-data” territory of image, video, language processing and social dynamics. The question of how to efficiently deploy deep learning models in scientific and engineering applications efficiently remains unsolved.
In this thesis we present several methodologies of scientific machine learning, including a feature-augmented approach, a physics-informed approach and a physics-based approach. We demonstrate the efficiency of proposed scientific machine learning algorithms through applications in surrogate modeling and inverse problems including epidemic spread modeling and magnetic resonance imaging (MRI) fingerprinting.
- Academic Unit
- Interdisciplinary Graduate Program in Applied Mathematical & Computational Sciences
- Record Identifier
- 9984271355802771