Application of variance-based sensitivity analysis in modeling oil well productivity and injectivity

Abstract Well intervention performed on oil or gas well often involves the injection of different stimulating fluids or chemical solutions that aims to increase the production rate. The main objective of this paper is to identify the effect of uncertainty in different variables and parameters used t...

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Main Authors: Quosay A. Ahmed, Hassan B. Nimir, Mohammed A. Ayoub, Mysara Eissa Mohyaldinn
Format: Article
Language:English
Published: SpringerOpen 2019-09-01
Series:Journal of Petroleum Exploration and Production Technology
Subjects:
Online Access:http://link.springer.com/article/10.1007/s13202-019-00771-w
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spelling doaj-bed114aae70641ea867352138caa86772020-11-25T02:43:21ZengSpringerOpenJournal of Petroleum Exploration and Production Technology2190-05582190-05662019-09-0110272973810.1007/s13202-019-00771-wApplication of variance-based sensitivity analysis in modeling oil well productivity and injectivityQuosay A. Ahmed0Hassan B. Nimir1Mohammed A. Ayoub2Mysara Eissa Mohyaldinn3Department of Petroleum and Natural Gas Engineering, University of KhartoumDepartment of Petroleum and Natural Gas Engineering, University of KhartoumPetroleum Engineering Department, Universiti Teknologi, PETRONAS Bandar Seri IskandarPetroleum Engineering Department, Universiti Teknologi, PETRONAS Bandar Seri IskandarAbstract Well intervention performed on oil or gas well often involves the injection of different stimulating fluids or chemical solutions that aims to increase the production rate. The main objective of this paper is to identify the effect of uncertainty in different variables and parameters used to quantify well productivity and injectivity. Monte Carlo simulation technique is used to develop probabilistic models for radial Darcy’s inflow on the one hand and near wellbore water-based chemical injection on the other hand. The probabilistic model is based on assigning probability density function for all variables and parameters used in the governing formulas. Variance-based sensitivity analysis (VBSA) was performed to quantify the contribution and the correlation between different model’s inputs and outputs. Results indicate that some rough assumptions for about 60% of injectivity model’s parameters and factors, i.e., value with considerable error/uncertainty, can still result in output with small standard deviation in comparison with other parameters. In Darcy’s law, the uncertainty in reservoir pressure value affects the calculated flow rate two times higher than the effect of the formation of permeability or produced fluid viscosity. At low drawdown condition, about 50% of Darcy’s flow variance is caused by the uncertainty in reservoir pressure input value. Throughout VBSA, it is also found that data accuracy of variables and parameters used in the injectivity model is not of importance as for formation permeability, injected fluid viscosity, pressure, and temperature of the injected fluid. Application of this methodology will focus on the cost of information needed by the decision makers and will save a lot of efforts and resources needed to apply confirmation tests or to validate different data sets.http://link.springer.com/article/10.1007/s13202-019-00771-wA probabilistic modelSensitivity analysisMonte Carlo simulationValue of informationWell injectivityWell productivity decision analysis
collection DOAJ
language English
format Article
sources DOAJ
author Quosay A. Ahmed
Hassan B. Nimir
Mohammed A. Ayoub
Mysara Eissa Mohyaldinn
spellingShingle Quosay A. Ahmed
Hassan B. Nimir
Mohammed A. Ayoub
Mysara Eissa Mohyaldinn
Application of variance-based sensitivity analysis in modeling oil well productivity and injectivity
Journal of Petroleum Exploration and Production Technology
A probabilistic model
Sensitivity analysis
Monte Carlo simulation
Value of information
Well injectivity
Well productivity decision analysis
author_facet Quosay A. Ahmed
Hassan B. Nimir
Mohammed A. Ayoub
Mysara Eissa Mohyaldinn
author_sort Quosay A. Ahmed
title Application of variance-based sensitivity analysis in modeling oil well productivity and injectivity
title_short Application of variance-based sensitivity analysis in modeling oil well productivity and injectivity
title_full Application of variance-based sensitivity analysis in modeling oil well productivity and injectivity
title_fullStr Application of variance-based sensitivity analysis in modeling oil well productivity and injectivity
title_full_unstemmed Application of variance-based sensitivity analysis in modeling oil well productivity and injectivity
title_sort application of variance-based sensitivity analysis in modeling oil well productivity and injectivity
publisher SpringerOpen
series Journal of Petroleum Exploration and Production Technology
issn 2190-0558
2190-0566
publishDate 2019-09-01
description Abstract Well intervention performed on oil or gas well often involves the injection of different stimulating fluids or chemical solutions that aims to increase the production rate. The main objective of this paper is to identify the effect of uncertainty in different variables and parameters used to quantify well productivity and injectivity. Monte Carlo simulation technique is used to develop probabilistic models for radial Darcy’s inflow on the one hand and near wellbore water-based chemical injection on the other hand. The probabilistic model is based on assigning probability density function for all variables and parameters used in the governing formulas. Variance-based sensitivity analysis (VBSA) was performed to quantify the contribution and the correlation between different model’s inputs and outputs. Results indicate that some rough assumptions for about 60% of injectivity model’s parameters and factors, i.e., value with considerable error/uncertainty, can still result in output with small standard deviation in comparison with other parameters. In Darcy’s law, the uncertainty in reservoir pressure value affects the calculated flow rate two times higher than the effect of the formation of permeability or produced fluid viscosity. At low drawdown condition, about 50% of Darcy’s flow variance is caused by the uncertainty in reservoir pressure input value. Throughout VBSA, it is also found that data accuracy of variables and parameters used in the injectivity model is not of importance as for formation permeability, injected fluid viscosity, pressure, and temperature of the injected fluid. Application of this methodology will focus on the cost of information needed by the decision makers and will save a lot of efforts and resources needed to apply confirmation tests or to validate different data sets.
topic A probabilistic model
Sensitivity analysis
Monte Carlo simulation
Value of information
Well injectivity
Well productivity decision analysis
url http://link.springer.com/article/10.1007/s13202-019-00771-w
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AT hassanbnimir applicationofvariancebasedsensitivityanalysisinmodelingoilwellproductivityandinjectivity
AT mohammedaayoub applicationofvariancebasedsensitivityanalysisinmodelingoilwellproductivityandinjectivity
AT mysaraeissamohyaldinn applicationofvariancebasedsensitivityanalysisinmodelingoilwellproductivityandinjectivity
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