This is a Preprint and has not been peer reviewed. This is version 1 of this Preprint.

Data Assimilation in Reduced-order Model of Chaotic Earthquake Sequences
Downloads
Authors
Abstract
Realistic models of earthquake sequences can be simulated by assuming faults governed by rate-and-state friction embedded in an elastic medium. Exploring the possibility of using such models for earthquake forecasting is challenging due to the difficulty of integrating Partial Differential Equation (PDE) models with sparse, low-resolution observational data. This paper presents a machine-learning-based reduced-order model (ROM) for earthquake sequences that addresses this limitation. The proposed ROM captures the slow/fast chaotic dynamics of earthquake sequences using a low-dimensional representation, enabling computational efficiency and robustness to high-frequency noise in observational data. The ROM's efficiency facilitates effective data assimilation using the Ensemble Kalman Filter (EnKF), even with low-resolution, noisy observations. Results demonstrate the ROM's ability to replicate key scaling properties of the sequence and to estimate the distributions of fault slip rate and state variable, enabling predictions of large events in time and space with uncertainty quantification. These findings underscore the ROM's potential for forecasting and for addressing challenges in inverse problems for nonlinear geophysical systems.
DOI
https://doi.org/10.31223/X5XJ09
Subjects
Applied Mathematics, Earth Sciences, Physical Sciences and Mathematics
Keywords
Reduced-order model, machine learning, ensemble Kalman filter, complex time-series, machine learning, data assimilation, Seismic cycle, Forecasting, and pre- diction, and prediction, numerical modeling
Dates
Published: 2025-07-22 19:40
Last Updated: 2025-07-22 19:40
There are no comments or no comments have been made public for this article.