This study proposes a deep neural network- (DNN-) based prediction model for creating synthetic log. Unlike previous studies, it focuses on building a reliable prediction model based on two criteria: fit-for-purpose of a target field (the Golden field in Alberta) and compliance with domain knowledge. First, in the target field, the density log has advantages over the sonic log for porosity analysis because of the carbonate depositional environment. Considering the correlation between the density and sonic logs, we determine the sonic log as input and the density log as output for the DNN. Although only five wells have a pair of training data in the field (i.e., sonic and density logs), we obtain, based on geological knowledge, 29 additional...
The objective of this research is to forecast petrophysical trends at the Teapot Dome field, Wyoming...
Automatic classifications of well logs using machine learning techniques has gained improved attenti...
Lithology identification by using well log data is an initial and fundamental step within petroleum ...
Artificially intelligent and predictive modelling of geomechanical properties is performed by creati...
Exploration and production wells in the oil and gas industry produce a vast amount of logging data. ...
of gas from approximately 2600 wells from a 60-meter interval at depths of 800-1,000 meters since it...
Estimation of reservoir parameters is important in reservoir evaluation and estimation of petroleum ...
The use of machine learning algorithms for predictive analytics is making a growing impact in the fi...
Density log data is one of the key physical attributes used for reservoir characterization by quanti...
This study proposes a deep-learning-based model to generate synthetic compressional wave velocity (V...
Borehole-log data acquisition accounts for a significant proportion of exploration, appraisal and fi...
The article describes the use of an artificial neural network to calculate porosity in the West Sibe...
Machine learning has been used in the petroleum industry for a long time, but its usage was limited ...
Finding the information of the hydrocarbon reservoirs from well logs is one of the main objectives o...
Facies analysis is crucial for reservoir evaluation because the distribution of facies has significa...
The objective of this research is to forecast petrophysical trends at the Teapot Dome field, Wyoming...
Automatic classifications of well logs using machine learning techniques has gained improved attenti...
Lithology identification by using well log data is an initial and fundamental step within petroleum ...
Artificially intelligent and predictive modelling of geomechanical properties is performed by creati...
Exploration and production wells in the oil and gas industry produce a vast amount of logging data. ...
of gas from approximately 2600 wells from a 60-meter interval at depths of 800-1,000 meters since it...
Estimation of reservoir parameters is important in reservoir evaluation and estimation of petroleum ...
The use of machine learning algorithms for predictive analytics is making a growing impact in the fi...
Density log data is one of the key physical attributes used for reservoir characterization by quanti...
This study proposes a deep-learning-based model to generate synthetic compressional wave velocity (V...
Borehole-log data acquisition accounts for a significant proportion of exploration, appraisal and fi...
The article describes the use of an artificial neural network to calculate porosity in the West Sibe...
Machine learning has been used in the petroleum industry for a long time, but its usage was limited ...
Finding the information of the hydrocarbon reservoirs from well logs is one of the main objectives o...
Facies analysis is crucial for reservoir evaluation because the distribution of facies has significa...
The objective of this research is to forecast petrophysical trends at the Teapot Dome field, Wyoming...
Automatic classifications of well logs using machine learning techniques has gained improved attenti...
Lithology identification by using well log data is an initial and fundamental step within petroleum ...