For hydrocarbon exploration, large volumes of data are acquired and used in physical modeling-based workflows to identify geologic features of interest such as fault networks, salt bodies, or, in general, elements of petroleum systems. The adjoint modeling step, which transforms the data into the model space, and subsequent interpretation can be very expensive, both in terms of computing resources and domain-expert time. We propose and implement a unique approach that bypasses these demanding steps, directly assisting interpretation. We do this by training a deep neural network to learn a mapping relationship between the data space and the final output (particularly, spatial points indicating fault presence). The key to obtaining accurate p...
To train our deep convolutional neural network for Relative Geologic Time (RGT) estimation and fault...
Interpretation of faults in the subsurface hinges on utilizing an optimum picking strategy, i.e. the...
Interpretation of faults in the subsurface hinges on utilizing an optimum picking strategy, i.e. the...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
The identification and characterization of faults is an important process that provides necessary kn...
Fault interpretation is an important part of seismic structural interpretation and reservoir charact...
Recognizing faults in seismic images is crucial for structural modeling, prospect delineation, reser...
Representation learning is a fascinating aspect of deep learning that is often not examined closely....
Seismic fault structures are important for the detection and exploitation of hydrocarbon resources. ...
Fault detection technique using neural networks have been successfully applied to a seismic data vol...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...
Introduction Interpretation of reflection seismic data has come a long way, from structural travel ...
Geophysical interpretation such as picking faults and geobodies, analyzing well logs, and picking ar...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...
To train our deep convolutional neural network for Relative Geologic Time (RGT) estimation and fault...
To train our deep convolutional neural network for Relative Geologic Time (RGT) estimation and fault...
Interpretation of faults in the subsurface hinges on utilizing an optimum picking strategy, i.e. the...
Interpretation of faults in the subsurface hinges on utilizing an optimum picking strategy, i.e. the...
With the ever developing data acquisition techniques, seismic processing deals with massive amount o...
The identification and characterization of faults is an important process that provides necessary kn...
Fault interpretation is an important part of seismic structural interpretation and reservoir charact...
Recognizing faults in seismic images is crucial for structural modeling, prospect delineation, reser...
Representation learning is a fascinating aspect of deep learning that is often not examined closely....
Seismic fault structures are important for the detection and exploitation of hydrocarbon resources. ...
Fault detection technique using neural networks have been successfully applied to a seismic data vol...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...
Introduction Interpretation of reflection seismic data has come a long way, from structural travel ...
Geophysical interpretation such as picking faults and geobodies, analyzing well logs, and picking ar...
Pattern recognition plays an important role in analyzing seismic reflection data, which contains val...
To train our deep convolutional neural network for Relative Geologic Time (RGT) estimation and fault...
To train our deep convolutional neural network for Relative Geologic Time (RGT) estimation and fault...
Interpretation of faults in the subsurface hinges on utilizing an optimum picking strategy, i.e. the...
Interpretation of faults in the subsurface hinges on utilizing an optimum picking strategy, i.e. the...