Scientific Machine Learning Seismology
Tomohisa Okazaki

TL;DR
This paper explores how scientific machine learning, especially physics-informed neural networks and neural operators, can enhance seismology by integrating physical laws with data-driven models to better understand earthquake phenomena.
Contribution
It provides a comprehensive overview of SciML methods like PINNs and NOs in seismology, highlighting their potential and future research directions.
Findings
PINNs can solve forward and inverse problems in seismology.
Neural operators model the evolution of complex systems over time.
Combining physics-informed learning with data improves modeling capabilities.
Abstract
Scientific machine learning (SciML) is an interdisciplinary research field that integrates machine learning, particularly deep learning, with physics theory to understand and predict complex natural phenomena. By incorporating physical knowledge, SciML reduces the dependency on observational data, which is often limited in the natural sciences. In this article, the fundamental concepts of SciML, its applications in seismology, and prospects are described. Specifically, two popular methods are mainly discussed: physics-informed neural networks (PINNs) and neural operators (NOs). PINNs can address both forward and inverse problems by incorporating governing laws into the loss functions. The use of PINNs is expanding into areas such as simultaneous solutions of differential equations, inference in underdetermined systems, and regularization based on physics. These research directions would…
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Taxonomy
TopicsSeismology and Earthquake Studies · Seismic Imaging and Inversion Techniques
