Most seismological analysis methods require knowledge of the geographic location of the stations comprising a seismic network. However, common machine learning tools used in seismology do not account for this spatial information, and so there is an underutilised potential for improving the performance of machine learning models. In this work, we propose a Graph Neural Network (GNN) approach that explicitly incorporates and leverages spatial information for the task of seismic source characterisation (specifically, location and magnitude estimation), based on multi-station waveform recordings. Even using a modestly-sized GNN, we achieve model prediction accuracy that outperforms methods that are agnostic to station locations. Moreover, the p...
International audienceMachine learning is becoming increasingly important in scientific and technolo...
Neural networks are powerful and elegant computational tools that can be used in the analysis of geo...
We designed a convolutional neural network application to detect seismic precursors in geomagnetic f...
International audienceMost seismological analysis methods require knowledge of the geographic locati...
Most seismological analysis methods require knowledge of the geographic location of the stations com...
We solve the traditional problems of earthquake location and magnitude estimation through a supervis...
AbstractAnalyzing seismic data to get information about earthquakes has always been a major task for...
Despite advanced seismological techniques, automatic source characterization for microseismic earthq...
The Tenth Symposium on Polar Science/Ordinary sessions: [OG] Polar Geosciences, Wed. 4 Dec. / Entran...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
As seismic networks continue to spread and monitoring sensors become more ef¿cient, the abundance of...
Machine learning, with its advances in deep learning has shown great potential in analyzing time ser...
Over the past two decades, the amount of available seismic data has increased significantly, fueling...
Abstract In the present study, we propose a new approach for determining earthquake hypocentral para...
Earthquakes threaten people, homes, and infrastructure. Early warning systems provide prior warning ...
International audienceMachine learning is becoming increasingly important in scientific and technolo...
Neural networks are powerful and elegant computational tools that can be used in the analysis of geo...
We designed a convolutional neural network application to detect seismic precursors in geomagnetic f...
International audienceMost seismological analysis methods require knowledge of the geographic locati...
Most seismological analysis methods require knowledge of the geographic location of the stations com...
We solve the traditional problems of earthquake location and magnitude estimation through a supervis...
AbstractAnalyzing seismic data to get information about earthquakes has always been a major task for...
Despite advanced seismological techniques, automatic source characterization for microseismic earthq...
The Tenth Symposium on Polar Science/Ordinary sessions: [OG] Polar Geosciences, Wed. 4 Dec. / Entran...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
As seismic networks continue to spread and monitoring sensors become more ef¿cient, the abundance of...
Machine learning, with its advances in deep learning has shown great potential in analyzing time ser...
Over the past two decades, the amount of available seismic data has increased significantly, fueling...
Abstract In the present study, we propose a new approach for determining earthquake hypocentral para...
Earthquakes threaten people, homes, and infrastructure. Early warning systems provide prior warning ...
International audienceMachine learning is becoming increasingly important in scientific and technolo...
Neural networks are powerful and elegant computational tools that can be used in the analysis of geo...
We designed a convolutional neural network application to detect seismic precursors in geomagnetic f...