The dataset published here is the cetral-western Italy dataset used in the paper "Transfer learning: Improving neural network based prediction of earthquake ground shaking for an area with insufficient training data" (https://arxiv.org/abs/2105.05075). The abstract of the paper: In a recent study (Jozinović et al, 2020) we showed that convolutional neural networks (CNNs) applied to network seismic traces can be used for rapid prediction of earthquake peak ground motion intensity measures (IMs) at distant stations using only recordings from stations near the epicenter. The predictions are made without any previous knowledge concerning the earthquake location and magnitude. This approach differs from the standard procedure adopted by earthq...
Although convolutional neural networks (CNN) have been applied successfully to many fields, the onsi...
The occurrence of earthquakes has been studied from many aspects. Apparently, earthquakes occur with...
Ground-motion models have gained foremost attention during recent years for being capable of predict...
The dataset published here is the central-western Italy dataset used in the paper "Transfer learning...
The dataset available here is the dataset used in the paper "Rapid Prediction of Earthquake Ground S...
Earthquakes can do great harm to the environment and people's daily lives. Being able to predict an ...
International audienceSUMMARY In the recent years, the seismological community has adopted deep lear...
Abstract Point processes have been dominant in modeling the evolution of seismicity for decades, wit...
The increase of available seismic data prompts the need for automatic processing procedures to fully...
Earthquakes threaten people, homes, and infrastructure. Early warning systems provide prior warning ...
The occurrence of earthquakes has been studied from many aspects. Apparently, earthquakes occur with...
The analysis of site seismic amplification characteristics is one of the important tasks of seismic ...
International audienceWith the deployment of high quality and dense permanent seismic networks over ...
Since March 2016 a small network of 11 seismic stations, deployed by Istituto Nazionale di Geofisica...
Earthquakes are one of the most dangerous natural disasters that occur worldwide. Predicting them is...
Although convolutional neural networks (CNN) have been applied successfully to many fields, the onsi...
The occurrence of earthquakes has been studied from many aspects. Apparently, earthquakes occur with...
Ground-motion models have gained foremost attention during recent years for being capable of predict...
The dataset published here is the central-western Italy dataset used in the paper "Transfer learning...
The dataset available here is the dataset used in the paper "Rapid Prediction of Earthquake Ground S...
Earthquakes can do great harm to the environment and people's daily lives. Being able to predict an ...
International audienceSUMMARY In the recent years, the seismological community has adopted deep lear...
Abstract Point processes have been dominant in modeling the evolution of seismicity for decades, wit...
The increase of available seismic data prompts the need for automatic processing procedures to fully...
Earthquakes threaten people, homes, and infrastructure. Early warning systems provide prior warning ...
The occurrence of earthquakes has been studied from many aspects. Apparently, earthquakes occur with...
The analysis of site seismic amplification characteristics is one of the important tasks of seismic ...
International audienceWith the deployment of high quality and dense permanent seismic networks over ...
Since March 2016 a small network of 11 seismic stations, deployed by Istituto Nazionale di Geofisica...
Earthquakes are one of the most dangerous natural disasters that occur worldwide. Predicting them is...
Although convolutional neural networks (CNN) have been applied successfully to many fields, the onsi...
The occurrence of earthquakes has been studied from many aspects. Apparently, earthquakes occur with...
Ground-motion models have gained foremost attention during recent years for being capable of predict...