The increase of available seismic data prompts the need for automatic processing procedures to fully exploit them. A good example is aftershock sequences recorded by temporary seismic networks, whose thorough analysis is challenging because of the high seismicity rate and station density. Here, we test the performance of two recent Deep Learning algorithms, the Generalized Phase Detection and Earthquake Transformer, for automatic seismic phases identification. We use data from the December 2019 Mugello basin (Northern Apennines, Italy) swarm, recorded on 13 permanent and nine temporary stations, applying these automatic procedures under different network configurations. As a benchmark, we use a catalog of 279 manually repicked earthquakes r...
Reliable earthquake forecasting methods have long been sought after, and so the rise of modern data ...
International audienceSUMMARY In the recent years, the seismological community has adopted deep lear...
We review previous approaches to nowcasting earthquakes and introduce new approaches based on deep l...
14 pages, 9 figures, 3 tablesPicking arrival times of P and S phases is a fundamental and time‐consu...
Over the past two decades, the amount of available seismic data has increased significantly, fueling...
Since March 2016 a small network of 11 seismic stations, deployed by Istituto Nazionale di Geofisica...
To optimally monitor earthquake‐generating processes, seismologists have sought to lower detection s...
International audienceAbstract Seismology is one of the main sciences used to monitor volcanic activ...
Over recent years, frequent earthquakes have caused huge losses in human life and property. Rapid an...
Seismic event detection and phase picking are the base of many seismological workflows. In recent ye...
Seismic data has often missing traces due to technical acquisition or economical constraints. A comp...
A major goal of installing seismic arrays is to detect and locate earthquakes. Earthquake detection ...
The dataset published here is the cetral-western Italy dataset used in the paper "Transfer learning:...
In the recent period, machine learning approaches have been widely used in many different fields. Fo...
Data and figures for the manuscript “Performance of Deep Learning pickers in routine network process...
Reliable earthquake forecasting methods have long been sought after, and so the rise of modern data ...
International audienceSUMMARY In the recent years, the seismological community has adopted deep lear...
We review previous approaches to nowcasting earthquakes and introduce new approaches based on deep l...
14 pages, 9 figures, 3 tablesPicking arrival times of P and S phases is a fundamental and time‐consu...
Over the past two decades, the amount of available seismic data has increased significantly, fueling...
Since March 2016 a small network of 11 seismic stations, deployed by Istituto Nazionale di Geofisica...
To optimally monitor earthquake‐generating processes, seismologists have sought to lower detection s...
International audienceAbstract Seismology is one of the main sciences used to monitor volcanic activ...
Over recent years, frequent earthquakes have caused huge losses in human life and property. Rapid an...
Seismic event detection and phase picking are the base of many seismological workflows. In recent ye...
Seismic data has often missing traces due to technical acquisition or economical constraints. A comp...
A major goal of installing seismic arrays is to detect and locate earthquakes. Earthquake detection ...
The dataset published here is the cetral-western Italy dataset used in the paper "Transfer learning:...
In the recent period, machine learning approaches have been widely used in many different fields. Fo...
Data and figures for the manuscript “Performance of Deep Learning pickers in routine network process...
Reliable earthquake forecasting methods have long been sought after, and so the rise of modern data ...
International audienceSUMMARY In the recent years, the seismological community has adopted deep lear...
We review previous approaches to nowcasting earthquakes and introduce new approaches based on deep l...