Time Series Foundation Models and Deep Learning Architectures for Earthquake Temporal and Spatial Nowcasting
Alireza Jafari, Geoffrey Fox, John B. Rundle, Andrea Donnellan, Lisa, Grant Ludwig

TL;DR
This paper evaluates deep learning architectures, including foundation models and novel approaches, for earthquake nowcasting as a time series forecasting task, demonstrating improved performance in spatial-temporal seismic prediction.
Contribution
It introduces MultiFoundationQuake and GNNCoder architectures, and a new MultiFoundationPattern approach, to enhance earthquake nowcasting accuracy using deep learning.
Findings
Our models outperform existing architectures in seismic prediction.
Performance varies significantly with pre-training datasets.
MultiFoundationQuake achieves the best overall results.
Abstract
Advancing the capabilities of earthquake nowcasting, the real-time forecasting of seismic activities remains a crucial and enduring objective aimed at reducing casualties. This multifaceted challenge has recently gained attention within the deep learning domain, facilitated by the availability of extensive, long-term earthquake datasets. Despite significant advancements, existing literature on earthquake nowcasting lacks comprehensive evaluations of pre-trained foundation models and modern deep learning architectures. These architectures, such as transformers or graph neural networks, uniquely focus on different aspects of data, including spatial relationships, temporal patterns, and multi-scale dependencies. This paper addresses the mentioned gap by analyzing different architectures and introducing two innovation approaches called MultiFoundationQuake and GNNCoder. We formulate…
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Taxonomy
TopicsSeismology and Earthquake Studies
MethodsSoftmax · Attention Is All You Need · Focus
