Machine learning-based models for predicting permeability impairment due to scale deposition
Abstract Water injection is one of the robust techniques to maintain the reservoir pressure and produce trapped oil from oil reservoirs and improve an oil recovery factor. However, incompatibility between injected water and reservoir water causes an unflavored issue named “scale deposition.” Owing t...
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doaj-4074803348b84c139a49abf2fb2a97fb2021-07-04T11:32:25ZengSpringerOpenJournal of Petroleum Exploration and Production Technology2190-05582190-05662020-07-011072873288410.1007/s13202-020-00941-1Machine learning-based models for predicting permeability impairment due to scale depositionMohammadali Ahmadi0Zhangxin Chen1Department of Chemical and Petroleum Engineering, Schulich School of Engineering, University of CalgaryDepartment of Chemical and Petroleum Engineering, Schulich School of Engineering, University of CalgaryAbstract Water injection is one of the robust techniques to maintain the reservoir pressure and produce trapped oil from oil reservoirs and improve an oil recovery factor. However, incompatibility between injected water and reservoir water causes an unflavored issue named “scale deposition.” Owing to the deposited scales, effective permeability of a reservoir reduced, and pore throats might be plugged. To determine formation damage owing to scale deposition during a water injection process, two well-known machine learning methods, least squares support vector machine (LSSVM) and artificial neural network (ANN), are employed in the present paper. To improve the performance of the LSSVM method, a metaheuristic optimization algorithm, genetic algorithm (GA), is used. The constructed LSSVM model is examined using real formation damage data samples experimentally measured, which was reported in the literature. According to the obtained outputs of the above models, LSSVM has a high performance based on the correlation coefficient, and infinitesimal uncertainty based on a relative error between the model predictions and the corresponding actual data samples was less than 15%. Outcomes from this study indicate the useful application of the LSSVM approach in the prediction of permeability reduction due to scale deposition, and it can lead to a better and more reliable understanding of formation damage effects through water flooding without expensive laboratory measurements.https://doi.org/10.1007/s13202-020-00941-1Machine learningData analyticsSupport vector machinePorous mediaFormation damageScale deposition |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mohammadali Ahmadi Zhangxin Chen |
spellingShingle |
Mohammadali Ahmadi Zhangxin Chen Machine learning-based models for predicting permeability impairment due to scale deposition Journal of Petroleum Exploration and Production Technology Machine learning Data analytics Support vector machine Porous media Formation damage Scale deposition |
author_facet |
Mohammadali Ahmadi Zhangxin Chen |
author_sort |
Mohammadali Ahmadi |
title |
Machine learning-based models for predicting permeability impairment due to scale deposition |
title_short |
Machine learning-based models for predicting permeability impairment due to scale deposition |
title_full |
Machine learning-based models for predicting permeability impairment due to scale deposition |
title_fullStr |
Machine learning-based models for predicting permeability impairment due to scale deposition |
title_full_unstemmed |
Machine learning-based models for predicting permeability impairment due to scale deposition |
title_sort |
machine learning-based models for predicting permeability impairment due to scale deposition |
publisher |
SpringerOpen |
series |
Journal of Petroleum Exploration and Production Technology |
issn |
2190-0558 2190-0566 |
publishDate |
2020-07-01 |
description |
Abstract Water injection is one of the robust techniques to maintain the reservoir pressure and produce trapped oil from oil reservoirs and improve an oil recovery factor. However, incompatibility between injected water and reservoir water causes an unflavored issue named “scale deposition.” Owing to the deposited scales, effective permeability of a reservoir reduced, and pore throats might be plugged. To determine formation damage owing to scale deposition during a water injection process, two well-known machine learning methods, least squares support vector machine (LSSVM) and artificial neural network (ANN), are employed in the present paper. To improve the performance of the LSSVM method, a metaheuristic optimization algorithm, genetic algorithm (GA), is used. The constructed LSSVM model is examined using real formation damage data samples experimentally measured, which was reported in the literature. According to the obtained outputs of the above models, LSSVM has a high performance based on the correlation coefficient, and infinitesimal uncertainty based on a relative error between the model predictions and the corresponding actual data samples was less than 15%. Outcomes from this study indicate the useful application of the LSSVM approach in the prediction of permeability reduction due to scale deposition, and it can lead to a better and more reliable understanding of formation damage effects through water flooding without expensive laboratory measurements. |
topic |
Machine learning Data analytics Support vector machine Porous media Formation damage Scale deposition |
url |
https://doi.org/10.1007/s13202-020-00941-1 |
work_keys_str_mv |
AT mohammadaliahmadi machinelearningbasedmodelsforpredictingpermeabilityimpairmentduetoscaledeposition AT zhangxinchen machinelearningbasedmodelsforpredictingpermeabilityimpairmentduetoscaledeposition |
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1721320181000568832 |