AbstractUnderbalanced drilling is one of the drilling methods for better drilling according to its advantages. Cuttings transport effects on cost, time, and quality of oil/gas wells in drilling operation. Inefficient cleaning of wellbore may cause many drilling problems. Prediction and measuring of the cleaning efficiency in the wellbore annulus is a complex problem according to many effective factors. The field and experimental measurements of this parameter are time consuming and costly. This paper presents the radial basis function network (RBFN) method for prediction of cuttings concentration in underbalanced drilling condition to avoid the high cost experimental and field measurements. The average absolute percent relative error (AAPE)...
Equivalent circulation density (ECD) is vital in drilling operations. Poor management of ECD can lea...
Predictive models have been widely used in different engineering fields, as well as in petroleum eng...
This paper aims to study the applicability of machine-learning algorithms, specifically neural netwo...
AbstractUnderbalanced drilling is one of the drilling methods for better drilling according to its a...
International audienceThe petroleum industry today has no choice, but to explore new and ever more d...
Obtaining the maximum Rate of Penetration (ROP) by optimization drilling parameters is the aim of ev...
Obtaining the maximum Rate of Penetration (ROP) by optimization drilling parameters is the aim of ev...
The petroleum industry today has no choice, but to explore new and ever more deep and challenging pa...
The petroleum industry today has no choice, but to explore new and ever more deep and challenging pa...
Obtaining the maximum Rate of Penetration (ROP) by optimization drilling parameters is the aim of ev...
The petroleum industry today has no choice, but to explore new and ever more deep and challenging pa...
According to field data, there are several methods to reduce the drilling cost of new wells. One of ...
Drilling performance monitoring and optimization are crucial in increasing the overall NPV of an oil...
Achieving the highest Rate of Penetration (ROP) with the least possible Bit Tooth Wear Rate (BTWR) i...
Various efforts have been made to reduce drilling costs in the oil and gas upstream industry. One of...
Equivalent circulation density (ECD) is vital in drilling operations. Poor management of ECD can lea...
Predictive models have been widely used in different engineering fields, as well as in petroleum eng...
This paper aims to study the applicability of machine-learning algorithms, specifically neural netwo...
AbstractUnderbalanced drilling is one of the drilling methods for better drilling according to its a...
International audienceThe petroleum industry today has no choice, but to explore new and ever more d...
Obtaining the maximum Rate of Penetration (ROP) by optimization drilling parameters is the aim of ev...
Obtaining the maximum Rate of Penetration (ROP) by optimization drilling parameters is the aim of ev...
The petroleum industry today has no choice, but to explore new and ever more deep and challenging pa...
The petroleum industry today has no choice, but to explore new and ever more deep and challenging pa...
Obtaining the maximum Rate of Penetration (ROP) by optimization drilling parameters is the aim of ev...
The petroleum industry today has no choice, but to explore new and ever more deep and challenging pa...
According to field data, there are several methods to reduce the drilling cost of new wells. One of ...
Drilling performance monitoring and optimization are crucial in increasing the overall NPV of an oil...
Achieving the highest Rate of Penetration (ROP) with the least possible Bit Tooth Wear Rate (BTWR) i...
Various efforts have been made to reduce drilling costs in the oil and gas upstream industry. One of...
Equivalent circulation density (ECD) is vital in drilling operations. Poor management of ECD can lea...
Predictive models have been widely used in different engineering fields, as well as in petroleum eng...
This paper aims to study the applicability of machine-learning algorithms, specifically neural netwo...