© SGEM2019. The geological modeling is an actively developing area of petroleum geoscience. One of the limiting factors for geological modeling is the processing of input data, which is a routine process and can be automatized. The paper describes the screening for an effective approach and development of the workflow allowing automatical depth matching of well logs with the use of statistical methods of data analysis basing on the real set of wells. The purpose of this work is to study the machine learning algorithms application for the well logging depth matching for the deposits of the Bobrikian horizon in one of the Tatarstan oilfields. Several alternative approaches and mathematical realizations for a set of well logs of standard, radi...
This paper considers the main aspects of Bazhenov Formation interpretation and application of machin...
Lithology identification by using well log data is an initial and fundamental step within petroleum ...
An unsupervised learning solution for selecting relevant reference wells for a new well that is to b...
© SGEM2019. The geological modeling is an actively developing area of petroleum geoscience. One of t...
Well logging, also known as a geophysical survey, is one of the main components of a nuclear fuel cy...
© SGEM2019. When constructing a geological model at the stage of 3D grid building, the problem of ve...
Exploration and production wells in the oil and gas industry produce a vast amount of logging data. ...
Accurate determination of lithology based on well logging data is an important task in the study of ...
Wireline log interpretation is a well-exercised procedure in the oil and gas industry with all its a...
In the oil and gas industry a crucial step for detecting and developing natural resources is to dril...
The oil and gas industry of today is undergoing rapid digitalization. This implies a massive effort ...
In this work we describe a machine learning pipeline for facies classification based on wireline log...
Acknowledgement This work was supported by the Scottish Funding Council, Advanced Innovation Voucher...
Defining distinctive areas of the physical properties of rocks plays an important role in reservoir ...
Technologies of real-time data measurement during drilling operation have kept the attention of petr...
This paper considers the main aspects of Bazhenov Formation interpretation and application of machin...
Lithology identification by using well log data is an initial and fundamental step within petroleum ...
An unsupervised learning solution for selecting relevant reference wells for a new well that is to b...
© SGEM2019. The geological modeling is an actively developing area of petroleum geoscience. One of t...
Well logging, also known as a geophysical survey, is one of the main components of a nuclear fuel cy...
© SGEM2019. When constructing a geological model at the stage of 3D grid building, the problem of ve...
Exploration and production wells in the oil and gas industry produce a vast amount of logging data. ...
Accurate determination of lithology based on well logging data is an important task in the study of ...
Wireline log interpretation is a well-exercised procedure in the oil and gas industry with all its a...
In the oil and gas industry a crucial step for detecting and developing natural resources is to dril...
The oil and gas industry of today is undergoing rapid digitalization. This implies a massive effort ...
In this work we describe a machine learning pipeline for facies classification based on wireline log...
Acknowledgement This work was supported by the Scottish Funding Council, Advanced Innovation Voucher...
Defining distinctive areas of the physical properties of rocks plays an important role in reservoir ...
Technologies of real-time data measurement during drilling operation have kept the attention of petr...
This paper considers the main aspects of Bazhenov Formation interpretation and application of machin...
Lithology identification by using well log data is an initial and fundamental step within petroleum ...
An unsupervised learning solution for selecting relevant reference wells for a new well that is to b...