Seismic events prediction is a crucial task for preventing coal mine rock burst hazards. Currently, this task attracts increasing research enthusiasms from many mining experts. Considering the temporal characteristics of monitoring data, seismic events prediction can be abstracted as a time series prediction task. This paper contributes to address the problem of long-term historical dependence on seismic time series prediction with deep temporal convolution neural networks (CNN). We propose a dilated causal temporal convolution network (DCTCNN) and a CNN long short-term memory hybrid model (CNN-LSTM) to forecast seismic events. In particular, DCTCNN is designed with dilated CNN kernels, causal strategy, and residual connections; CNN-LSTM is...
In the recent period, machine learning approaches have been widely used in many different fields. Fo...
Earthquake forecasting and prediction have long and in some cases sordid histories but recent work h...
Seismic activity prediction has been a challenging research domain: in this regard, accurate predict...
Over recent years, frequent earthquakes have caused huge losses in human life and property. Rapid an...
The prediction of a natural calamity such as earthquakes has been an area of interest for a long tim...
Earthquakes can have tremendous effects. They can result in casualties, massive damage, and hurt the...
A deep learning-based method Convolutional Neural Network (CNN) and Support Vector Machine (SVM) for...
A deep learning-based method Convolutional Neural Network (CNN) and Support Vector Machine (SVM) for...
Earthquake prediction has raised many concerns nowadays, due to the massive loss caused by earthquak...
We designed a convolutional neural network application to detect seismic precursors in geomagnetic f...
Earthquakes are one of the most dangerous natural disasters that occur worldwide. Predicting them is...
Different methods have been studied to predict earthquakes, but the results are still far from optim...
In the recent period, machine learning approaches have been widely used in many different fields. Fo...
In the recent period, machine learning approaches have been widely used in many different fields. Fo...
In the recent period, machine learning approaches have been widely used in many different fields. Fo...
In the recent period, machine learning approaches have been widely used in many different fields. Fo...
Earthquake forecasting and prediction have long and in some cases sordid histories but recent work h...
Seismic activity prediction has been a challenging research domain: in this regard, accurate predict...
Over recent years, frequent earthquakes have caused huge losses in human life and property. Rapid an...
The prediction of a natural calamity such as earthquakes has been an area of interest for a long tim...
Earthquakes can have tremendous effects. They can result in casualties, massive damage, and hurt the...
A deep learning-based method Convolutional Neural Network (CNN) and Support Vector Machine (SVM) for...
A deep learning-based method Convolutional Neural Network (CNN) and Support Vector Machine (SVM) for...
Earthquake prediction has raised many concerns nowadays, due to the massive loss caused by earthquak...
We designed a convolutional neural network application to detect seismic precursors in geomagnetic f...
Earthquakes are one of the most dangerous natural disasters that occur worldwide. Predicting them is...
Different methods have been studied to predict earthquakes, but the results are still far from optim...
In the recent period, machine learning approaches have been widely used in many different fields. Fo...
In the recent period, machine learning approaches have been widely used in many different fields. Fo...
In the recent period, machine learning approaches have been widely used in many different fields. Fo...
In the recent period, machine learning approaches have been widely used in many different fields. Fo...
Earthquake forecasting and prediction have long and in some cases sordid histories but recent work h...
Seismic activity prediction has been a challenging research domain: in this regard, accurate predict...