Deep-learning seismology
SM Mousavi, GC Beroza - Science, 2022 - science.org
Seismic waves from earthquakes and other sources are used to infer the structure and
properties of Earth's interior. The availability of large-scale seismic datasets and the …
properties of Earth's interior. The availability of large-scale seismic datasets and the …
Machine learning in earthquake seismology
SM Mousavi, GC Beroza - Annual Review of Earth and …, 2023 - annualreviews.org
Machine learning (ML) is a collection of methods used to develop understanding and
predictive capability by learning relationships embedded in data. ML methods are becoming …
predictive capability by learning relationships embedded in data. ML methods are becoming …
Which picker fits my data? A quantitative evaluation of deep learning based seismic pickers
J Münchmeyer, J Woollam, A Rietbrock… - Journal of …, 2022 - Wiley Online Library
Seismic event detection and phase picking are the base of many seismological workflows. In
recent years, several publications demonstrated that deep learning approaches significantly …
recent years, several publications demonstrated that deep learning approaches significantly …
The magmatic web beneath Hawai 'i
The deep magmatic architecture of the Hawaiian volcanic system is central to understanding
the transport of magma from the upper mantle to the individual volcanoes. We leverage …
the transport of magma from the upper mantle to the individual volcanoes. We leverage …
Seismic intensity estimation for earthquake early warning using optimized machine learning model
MS Abdalzaher, MS Soliman… - IEEE Transactions on …, 2023 - ieeexplore.ieee.org
The need for an earthquake early-warning system (EEWS) is unavoidable to save lives. In
terms of managing earthquake disasters and achieving effective risk mitigation, the quick …
terms of managing earthquake disasters and achieving effective risk mitigation, the quick …
EQCCT: A production-ready earthquake detection and phase-picking method using the compact convolutional transformer
We propose to implement a compact convolutional transformer (CCT) for picking the
earthquake phase arrivals (EQCCT). The proposed method consists of two branches, with …
earthquake phase arrivals (EQCCT). The proposed method consists of two branches, with …
Seismic arrival-time picking on distributed acoustic sensing data using semi-supervised learning
Abstract Distributed Acoustic Sensing (DAS) is an emerging technology for earthquake
monitoring and subsurface imaging. However, its distinct characteristics, such as unknown …
monitoring and subsurface imaging. However, its distinct characteristics, such as unknown …
SeisBench—A toolbox for machine learning in seismology
J Woollam, J Münchmeyer… - Seismological …, 2022 - pubs.geoscienceworld.org
Abstract Machine‐learning (ML) methods have seen widespread adoption in seismology in
recent years. The ability of these techniques to efficiently infer the statistical properties of …
recent years. The ability of these techniques to efficiently infer the statistical properties of …
A mitigation strategy for the prediction inconsistency of neural phase pickers
Neural phase pickers—neural networks designed and trained to pick seismic phase arrivals—
have proven to be a powerful tool for developing earthquake catalogs. However, these …
have proven to be a powerful tool for developing earthquake catalogs. However, these …
[HTML][HTML] DiTing: A large-scale Chinese seismic benchmark dataset for artificial intelligence in seismology
In recent years, artificial intelligence technology has exhibited great potential in seismic
signal recognition, setting off a new wave of research. Vast amounts of high-quality labeled …
signal recognition, setting off a new wave of research. Vast amounts of high-quality labeled …