Earthquake transformer—an attentive deep-learning model for simultaneous earthquake detection and phase picking SM Mousavi, WL Ellsworth, W Zhu, LY Chuang, GC Beroza Nature communications 11 (1), 3952, 2020 | 845 | 2020 |
Seismic signal denoising and decomposition using deep neural networks W Zhu, SM Mousavi, GC Beroza IEEE Transactions on Geoscience and Remote Sensing 57 (11), 9476-9488, 2019 | 451 | 2019 |
CRED: A deep residual network of convolutional and recurrent units for earthquake signal detection SM Mousavi, W Zhu, Y Sheng, GC Beroza Scientific reports 9 (1), 1-14, 2018 | 370 | 2018 |
STanford EArthquake Dataset (STEAD): A global data set of seismic signals for AI SM Mousavi, Y Sheng, W Zhu, GC Beroza IEEE Access 7, 179464-179476, 2019 | 353 | 2019 |
Automatic microseismic denoising and onset detection using the synchrosqueezed continuous wavelet transform SM Mousavi, CA Langston, SP Horton Geophysics 81 (4), V341-V355, 2016 | 316 | 2016 |
Deep-learning seismology SM Mousavi, GC Beroza Science 377 (6607), eabm4470, 2022 | 315 | 2022 |
A machine‐learning approach for earthquake magnitude estimation SM Mousavi, GC Beroza Geophysical Research Letters 47 (1), e2019GL085976, 2019 | 279 | 2019 |
Hybrid seismic denoising using higher‐order statistics and improved wavelet block thresholding SM Mousavi, CA Langston Bulletin of the Seismological Society of America 106 (4), 1380-1393, 2016 | 204 | 2016 |
Unsupervised clustering of seismic signals using deep convolutional autoencoders SM Mousavi, W Zhu, W Ellsworth, G Beroza IEEE Geoscience and Remote Sensing Letters 16 (11), 1693-1697, 2019 | 189 | 2019 |
A review of earth artificial intelligence Z Sun, L Sandoval, R Crystal-Ornelas, SM Mousavi, J Wang, C Lin, ... Computers & Geosciences 159, 105034, 2022 | 165 | 2022 |
Seismic features and automatic discrimination of deep and shallow induced-microearthquakes using neural network and logistic regression SM Mousavi, SP Horton, CA Langston, B Samei Geophysical Journal International 207 (1), 29-46, 2016 | 157 | 2016 |
Automatic noise-removal/signal-removal based on general cross-validation thresholding in synchrosqueezed domain and its application on earthquake data SM Mousavi, CA Langston Geophysics 82 (4), V211-V227, 2017 | 146 | 2017 |
Bayesian-deep-learning estimation of earthquake location from single-station observations SM Mousavi, GC Beroza IEEE Transactions on Geoscience and Remote Sensing, 1 - 14, 2019 | 141 | 2019 |
Machine learning and earthquake forecasting—next steps GC Beroza, M Segou, S Mostafa Mousavi Nature communications 12 (1), 4761, 2021 | 134 | 2021 |
Machine learning in earthquake seismology SM Mousavi, GC Beroza Annual Review of Earth and Planetary Sciences 51 (1), 105-129, 2023 | 131 | 2023 |
Earthquake phase association using a Bayesian Gaussian mixture model W Zhu, IW McBrearty, SM Mousavi, WL Ellsworth, GC Beroza Journal of Geophysical Research: Solid Earth 127 (5), e2021JB023249, 2022 | 111 | 2022 |
Adaptive noise estimation and suppression for improving microseismic event detection SM Mousavi, CA Langston Journal of Applied Geophysics 132, 116-124, 2016 | 109 | 2016 |
Machine‐learning‐based analysis of the Guy‐Greenbrier, Arkansas earthquakes: A tale of two sequences Y Park, SM Mousavi, W Zhu, WL Ellsworth, GC Beroza Geophysical Research Letters 47 (6), e2020GL087032, 2020 | 77 | 2020 |
An end‐to‐end earthquake detection method for joint phase picking and association using deep learning W Zhu, KS Tai, SM Mousavi, P Bailis, GC Beroza Journal of Geophysical Research: Solid Earth 127 (3), e2021JB023283, 2022 | 68 | 2022 |
Seismic signal augmentation to improve generalization of deep neural networks W Zhu, SM Mousavi, GC Beroza Advances in geophysics 61, 151-177, 2020 | 67 | 2020 |