This is training and validation datasets used in manuscript "Three-Dimensional Implicit Structural Modeling Using Convolutional Neural Network". In this manuscript, we propose an efficient deep learning method using a Convolutional Neural Network (CNN) to predict a scalar field from sparse structural data associated with multiple distinct stratigraphic layers and faults. The CNN architecture is beneficial for the flexible incorporation of empirical geological knowledge when trained with numerous and realistic structural models that are automatically generated from a data simulation workflow. It also presents an expressive characteristic of integrating various types of structural constraints by optimally minimizing a hybrid loss function to...
Imaging-type monitoring techniques are used in monitoring dynamic processes in many domains, includi...
This is the synthetic and field siesmic dataset used in manuscript "Three-Dimensional Implicit Struc...
Trying to localize structural damages, starting from online acquired data, is a complex task hamper...
Implicit structural modeling using sparse and unevenly distributed data is essential for various sci...
Gravity prospecting is an important geophysical method for mineral resource exploration and investig...
Deep excavations are today mainly designed by manually optimising the wall’s geometry, stiffness and...
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning ...
Gravity surveys in regional geophysical research can be used to estimate the depth of the sediment-b...
Automating geobodies using insufficient labeled training data as input for structural prediction may...
To train our deep convolutional neural network for Relative Geologic Time (RGT) estimation and fault...
Identifying the geological structures in seismic volumes is of great importance for oil and gas expl...
It is meaningful to study the geological structures exposed on the Earth’s surface, which is p...
This study introduces an efficient deep-learning model based on convolutional neural networks with j...
The identification and characterization of faults is an important process that provides necessary kn...
Machine learning has been used in the petroleum industry for a long time, but its usage was limited ...
Imaging-type monitoring techniques are used in monitoring dynamic processes in many domains, includi...
This is the synthetic and field siesmic dataset used in manuscript "Three-Dimensional Implicit Struc...
Trying to localize structural damages, starting from online acquired data, is a complex task hamper...
Implicit structural modeling using sparse and unevenly distributed data is essential for various sci...
Gravity prospecting is an important geophysical method for mineral resource exploration and investig...
Deep excavations are today mainly designed by manually optimising the wall’s geometry, stiffness and...
The task of seismic data interpretation is a time-consuming and uncertain process. Machine learning ...
Gravity surveys in regional geophysical research can be used to estimate the depth of the sediment-b...
Automating geobodies using insufficient labeled training data as input for structural prediction may...
To train our deep convolutional neural network for Relative Geologic Time (RGT) estimation and fault...
Identifying the geological structures in seismic volumes is of great importance for oil and gas expl...
It is meaningful to study the geological structures exposed on the Earth’s surface, which is p...
This study introduces an efficient deep-learning model based on convolutional neural networks with j...
The identification and characterization of faults is an important process that provides necessary kn...
Machine learning has been used in the petroleum industry for a long time, but its usage was limited ...
Imaging-type monitoring techniques are used in monitoring dynamic processes in many domains, includi...
This is the synthetic and field siesmic dataset used in manuscript "Three-Dimensional Implicit Struc...
Trying to localize structural damages, starting from online acquired data, is a complex task hamper...