Abstract
Slow slip events (SSEs) have been observed in many subduction zones and are understood to result from frictional unstable slip on the plate interface. The diversity of their characteristics and the fact that interplate slip can also be seismic suggest that frictional properties are heterogeneous. We are however lacking methods to determine spatial variations of frictional properties. In this paper, we employ a Physics-Informed Neural Network (PINN) to achieve this goal using a synthetic model inspired by the long-term SSEs observed in the Bungo channel. PINN is a deep learning technique that can be used to solve the differential equations representing the physics of the problem and determine the model parameters from observations. We start with an idealized case where it is assumed that fault slip is directly observed. We next move to a more realistic case where the observations consist of synthetic surface displacement velocity data measured by virtual GNSS stations. We find that the geometry and friction properties of the velocity weakening region, where the slip instability develops, are well estimated, especially if surface displacement velocity above the velocity weakening region is observed. Our PINN-based method can be seen as an inversion technique with the regularization constraint that fault slip obeys a particular friction law. This approach remediates the issue that standard regularization techniques are based on non-physical constraints. Our results show that the PINN-based method is a promising approach for estimating the spatial distribution of friction parameters from GNSS observations.
| Original language | English |
|---|---|
| Article number | e2024JB030256 |
| Pages (from-to) | 1-19 |
| Number of pages | 19 |
| Journal | Solid Earth |
| Volume | 130 |
| Issue number | 5 |
| Early online date | 9 May 2025 |
| DOIs | |
| Publication status | Published (in print/issue) - 31 May 2025 |
Bibliographical note
Publisher Copyright:© 2025. The Author(s).
Data Availability Statement
The data and code used in this study are available upon request from the corresponding author. The deep learning models and synthetic GNSS data used to train and validate the physics-informed neural networks (PINNs) are described in detail in the Methods section. The numerical solvers for rate-and-state friction and inverse modeling scripts may be shared under academic use agreements.Funding
This work was supported by the MEXT Project for Seismology toward Research Innovation with Data of Earthquake (STAR-E) [Grant JPJ010217] and by the JSPS KAKENHI [Grant Number 23K03552, 24K02951, 24H01019, 23H00466, and 21K03694]. The travel of Rikuto Fukushima to the California Institute of Technology was supported by the Summer Undergraduate Research Fellowship (SURF) program of the California Institute of Technology.
| Funders | Funder number |
|---|---|
| California Institute of Technology | |
| Japan Society for the Promotion of Science | 21H05203, 21K03694, 23K03552, 24H01019, 24K02951, 23H00466 |
| JPJ010217 |
UN SDGs
This output contributes to the following UN Sustainable Development Goals (SDGs)
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SDG 9 Industry, Innovation, and Infrastructure
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SDG 11 Sustainable Cities and Communities
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SDG 13 Climate Action
Keywords
- Physics-informed deep learning
- Frictional parameters
- Slow slip events (SSEs)
- Physics-informed neural network (PINN)
- Rate-and-state friction
- Synthetic GNSS displacement velocity
- Fault slip inversion
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