Predicting the rate of penetration (ROP) is critical for drilling optimization because maximization of ROP can greatly reduce expensive drilling costs. In this work, the typical extreme learning machine (ELM) and an efficient learning model, upper-layer-solution-aware (USA), have been used in ROP prediction. Because formation type, rock mechanical properties, hydraulics, bit type and properties (weight on the bit and rotary speed), and mud properties are the most important parameters that affect ROP, they have been considered to be the input parameters to predict ROP. The prediction model has been constructed using industrial reservoir data sets that are collected from an oil reservoir at the Bohai Bay, China. The prediction accuracy of the...
Predictive data‐driven analytics has the potential to successfully predict the downhole environment ...
ROP (Rate of Penetration) is a comprehensive indicator of the rock drilling process and how efficien...
International audienceThis work describes an implementation of a oil drilling data mining project ap...
Obtaining the maximum Rate of Penetration (ROP) by optimization drilling parameters is the aim of ev...
Rate of penetration (ROP) prediction is critical for the optimization of drilling parameters and ROP...
Drilling wells in challenging oil/gas environments implies in large capital expenditure on wellbore'...
Application of artificial intelligence in the accurate prediction of the rate of penetration (ROP), ...
According to field data, there are several methods to reduce the drilling cost of new wells. One of ...
Optimum drilling penetration rate, known as the rate of penetration (ROP) has played a big role in d...
Achieving the highest Rate of Penetration (ROP) with the least possible Bit Tooth Wear Rate (BTWR) i...
Setting up a drilling plan and efficiently drilling a new well requires analysis of offset well data...
Various efforts have been made to reduce drilling costs in the oil and gas upstream industry. One of...
Master's thesis in Petroleum EngineeringIncreasing the drilling speed in wells while maintaining the...
Predictive models have been widely used in different engineering fields, as well as in petroleum eng...
International audienceThis work presents the prediction of the rate of progression in oil drilling b...
Predictive data‐driven analytics has the potential to successfully predict the downhole environment ...
ROP (Rate of Penetration) is a comprehensive indicator of the rock drilling process and how efficien...
International audienceThis work describes an implementation of a oil drilling data mining project ap...
Obtaining the maximum Rate of Penetration (ROP) by optimization drilling parameters is the aim of ev...
Rate of penetration (ROP) prediction is critical for the optimization of drilling parameters and ROP...
Drilling wells in challenging oil/gas environments implies in large capital expenditure on wellbore'...
Application of artificial intelligence in the accurate prediction of the rate of penetration (ROP), ...
According to field data, there are several methods to reduce the drilling cost of new wells. One of ...
Optimum drilling penetration rate, known as the rate of penetration (ROP) has played a big role in d...
Achieving the highest Rate of Penetration (ROP) with the least possible Bit Tooth Wear Rate (BTWR) i...
Setting up a drilling plan and efficiently drilling a new well requires analysis of offset well data...
Various efforts have been made to reduce drilling costs in the oil and gas upstream industry. One of...
Master's thesis in Petroleum EngineeringIncreasing the drilling speed in wells while maintaining the...
Predictive models have been widely used in different engineering fields, as well as in petroleum eng...
International audienceThis work presents the prediction of the rate of progression in oil drilling b...
Predictive data‐driven analytics has the potential to successfully predict the downhole environment ...
ROP (Rate of Penetration) is a comprehensive indicator of the rock drilling process and how efficien...
International audienceThis work describes an implementation of a oil drilling data mining project ap...