The integration of different data in reservoir understanding and characterization is of prime importance in petroleum geology. The large amount of data for each well and the presence of new unknown wells to be analyzed make this task complex and time consuming. Therefore it is important to develop reliable prediction methods in order to help the geologist reducing the subjectivity and time used in data interpretation. In this paper, we propose a novel prediction method based on the integration of unsupervised and supervised learning techniques. This method uses an unsupervised learning algorithm to evaluate in an objective and fast way a large dataset made of subsurface data from different wells in the same field. Then it uses a supervised...
As petroleum geosciences enter the era of big data, this field of study encompass difficult optimiza...
Seismic interpretation is a fundamental process for hydrocarbon exploration. This activity comprises...
Manual interpretation of massive well log data is time-consuming and prone to human bias. Machine Le...
The need for integration of different data in the understanding and characterization of reservoirs i...
Cascade of unsupervised and supervised learning algorithms are suitable in all those problems where ...
Significant amounts of information are rapidly increasing in bulk as a consequence of the rapid deve...
Large databases of legacy hydrocarbon reservoir and well data provide an opportunity to use modern d...
In this paper, we present a detailed analysis of the possibility of using unsupervised machine learn...
Scientific progress over the last decade has been significantly facilitated by the evolution of a ne...
Scientific progress over the last decade has been significantly facilitated by the evolution of a ne...
The objective of this research is to forecast petrophysical trends at the Teapot Dome field, Wyoming...
Significant volumes of data sets are fast expanding in quantity as a result of the rapid development...
Abstract Shale reservoirs are characterized by low porosity and strong anisotropy. Conventional geop...
Intelligent predictive methods have the power to reliably estimate water saturation (Sw) compared to...
Computational Intelligence (CI) techniques have been applied in the prediction of various petroleum...
As petroleum geosciences enter the era of big data, this field of study encompass difficult optimiza...
Seismic interpretation is a fundamental process for hydrocarbon exploration. This activity comprises...
Manual interpretation of massive well log data is time-consuming and prone to human bias. Machine Le...
The need for integration of different data in the understanding and characterization of reservoirs i...
Cascade of unsupervised and supervised learning algorithms are suitable in all those problems where ...
Significant amounts of information are rapidly increasing in bulk as a consequence of the rapid deve...
Large databases of legacy hydrocarbon reservoir and well data provide an opportunity to use modern d...
In this paper, we present a detailed analysis of the possibility of using unsupervised machine learn...
Scientific progress over the last decade has been significantly facilitated by the evolution of a ne...
Scientific progress over the last decade has been significantly facilitated by the evolution of a ne...
The objective of this research is to forecast petrophysical trends at the Teapot Dome field, Wyoming...
Significant volumes of data sets are fast expanding in quantity as a result of the rapid development...
Abstract Shale reservoirs are characterized by low porosity and strong anisotropy. Conventional geop...
Intelligent predictive methods have the power to reliably estimate water saturation (Sw) compared to...
Computational Intelligence (CI) techniques have been applied in the prediction of various petroleum...
As petroleum geosciences enter the era of big data, this field of study encompass difficult optimiza...
Seismic interpretation is a fundamental process for hydrocarbon exploration. This activity comprises...
Manual interpretation of massive well log data is time-consuming and prone to human bias. Machine Le...