Rate of penetration prediction with uncertainty assessment: Case study of a middle-east oil field

To increase drilling operation efficiency, attempts have been made to increase the rate of bit penetration into the formations, which is a function of controllable and uncontrollable parameters. Several mathematical models are available for penetration rate estimation. However, these models are not...

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Main Authors: Reza Jalakani, Seyyed Shahab Tabatabaee Moradi
Format: Article
Language:English
Published: Elsevier 2024-03-01
Series:Results in Engineering
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S259012302400046X
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author Reza Jalakani
Seyyed Shahab Tabatabaee Moradi
author_facet Reza Jalakani
Seyyed Shahab Tabatabaee Moradi
author_sort Reza Jalakani
collection DOAJ
description To increase drilling operation efficiency, attempts have been made to increase the rate of bit penetration into the formations, which is a function of controllable and uncontrollable parameters. Several mathematical models are available for penetration rate estimation. However, these models are not applicable in all circumstances. The most used model for rate of penetration is the one proposed by Bourgoyne and Young and the model has shown reliable results in different oil and gas provinces. However, the model performance significantly depends on the quantity and quality of input data. When the input data are subjected to different types of errors, some extent of uncertainty may propagate to the model. In this work, a Monte Carlo approach was followed to model the uncertainty in the predicted rates of penetrations. For this purpose, input data from an Iranian oil field were acquired and processed to check their quality. After fitting a probability distribution to each input data, the level of uncertainty in the predicted rates of penetration was quantified. Results showed that with an uncertain space of input data, a probabilistic rate of penetration was predicted. For a specific depth point, i.e. 8158.6 ft, rate of penetration range was narrowed to 1.16–1.23 ft/h with a certainty of 10 % and a mean value of 1.23 ft/h. However, for higher certainty levels a wider range of rate of penetration was obtained. Therefore, at each depth point, the certainty bands related to the predicted rate of penetration should also be stated as the model output.
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spelling doaj.art-bac9df9a895e4007bc936e900fb485652024-03-24T07:00:40ZengElsevierResults in Engineering2590-12302024-03-0121101793Rate of penetration prediction with uncertainty assessment: Case study of a middle-east oil fieldReza Jalakani0Seyyed Shahab Tabatabaee Moradi1Faculty of Petroleum and Natural Gas Engineering, Sahand University of Technology, Tabriz, IranCorresponding author.; Faculty of Petroleum and Natural Gas Engineering, Sahand University of Technology, Tabriz, IranTo increase drilling operation efficiency, attempts have been made to increase the rate of bit penetration into the formations, which is a function of controllable and uncontrollable parameters. Several mathematical models are available for penetration rate estimation. However, these models are not applicable in all circumstances. The most used model for rate of penetration is the one proposed by Bourgoyne and Young and the model has shown reliable results in different oil and gas provinces. However, the model performance significantly depends on the quantity and quality of input data. When the input data are subjected to different types of errors, some extent of uncertainty may propagate to the model. In this work, a Monte Carlo approach was followed to model the uncertainty in the predicted rates of penetrations. For this purpose, input data from an Iranian oil field were acquired and processed to check their quality. After fitting a probability distribution to each input data, the level of uncertainty in the predicted rates of penetration was quantified. Results showed that with an uncertain space of input data, a probabilistic rate of penetration was predicted. For a specific depth point, i.e. 8158.6 ft, rate of penetration range was narrowed to 1.16–1.23 ft/h with a certainty of 10 % and a mean value of 1.23 ft/h. However, for higher certainty levels a wider range of rate of penetration was obtained. Therefore, at each depth point, the certainty bands related to the predicted rate of penetration should also be stated as the model output.http://www.sciencedirect.com/science/article/pii/S259012302400046XROPUncertaintyMonte CarloCertainty bandDrilling
spellingShingle Reza Jalakani
Seyyed Shahab Tabatabaee Moradi
Rate of penetration prediction with uncertainty assessment: Case study of a middle-east oil field
Results in Engineering
ROP
Uncertainty
Monte Carlo
Certainty band
Drilling
title Rate of penetration prediction with uncertainty assessment: Case study of a middle-east oil field
title_full Rate of penetration prediction with uncertainty assessment: Case study of a middle-east oil field
title_fullStr Rate of penetration prediction with uncertainty assessment: Case study of a middle-east oil field
title_full_unstemmed Rate of penetration prediction with uncertainty assessment: Case study of a middle-east oil field
title_short Rate of penetration prediction with uncertainty assessment: Case study of a middle-east oil field
title_sort rate of penetration prediction with uncertainty assessment case study of a middle east oil field
topic ROP
Uncertainty
Monte Carlo
Certainty band
Drilling
url http://www.sciencedirect.com/science/article/pii/S259012302400046X
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