Viscosity–Temperature–Pressure Relationship of Extra-Heavy Oil (Bitumen): Empirical Modelling versus Artificial Neural Network (ANN)

The viscosity data of two heavy oil samples X and Y, with asphaltene contents 24.8% w/w and 18.5% w/w, respectively, were correlated with temperature and pressure using empirical models and the artificial neural network (ANN) approach. The viscosities of the samples were measured over a range of tem...

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Main Authors: Olalekan Alade, Dhafer Al Shehri, Mohamed Mahmoud, Kyuro Sasaki
Format: Article
Language:English
Published: MDPI AG 2019-06-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/12/12/2390
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spelling doaj-f60421e5bb6941ad8985bcfb396a43642020-11-24T23:54:50ZengMDPI AGEnergies1996-10732019-06-011212239010.3390/en12122390en12122390Viscosity–Temperature–Pressure Relationship of Extra-Heavy Oil (Bitumen): Empirical Modelling versus Artificial Neural Network (ANN)Olalekan Alade0Dhafer Al Shehri1Mohamed Mahmoud2Kyuro Sasaki3Department of Petroleum Engineering, College of Petroleum and Geosciences, King Fahd University of Minerals &amp; Petroleum, Dhahran 3225, Saudi ArabiaDepartment of Petroleum Engineering, College of Petroleum and Geosciences, King Fahd University of Minerals &amp; Petroleum, Dhahran 3225, Saudi ArabiaDepartment of Petroleum Engineering, College of Petroleum and Geosciences, King Fahd University of Minerals &amp; Petroleum, Dhahran 3225, Saudi ArabiaResources Production and Safety Engineering Laboratory, Department of Earth Resources Engineering, Kyushu University, Fukuoka 812-0053, JapanThe viscosity data of two heavy oil samples X and Y, with asphaltene contents 24.8% w/w and 18.5% w/w, respectively, were correlated with temperature and pressure using empirical models and the artificial neural network (ANN) approach. The viscosities of the samples were measured over a range of temperatures between 70 &#176;C and 150 &#176;C; and from atmospheric pressure to 7 MPa. It was found that the viscosity of sample X, at 85 &#176;C and atmospheric pressure (0.1 MPa), was 1894 cP and that it increased to 2787 cP at 7 MPa. At 150 &#176;C, the viscosity increased from 28 cP (at 0.1 MPa) to 33 cP at 7 MPa. For sample Y, the viscosity at 70 &#176;C and 0.1 MPa increased from 2260 cP to 3022 cP at 7 MPa. At 120 &#176;C, the viscosity increased from 65 cP (0.1 MPa) to 71 cP at 7 MPa. Notably, using the three-parameter empirical models (Mehrotra and Svrcek, 1986 and 1987), the correlation constants obtained in this study are very close to those that were previously obtained for the Canadian heavy oil samples. Moreover, compared to other empirical models, statistical analysis shows that the ANN model has a better predictive accuracy (R<sup>2</sup> &#8776; 1) for the viscosity data of the heavy oil samples used in this study.https://www.mdpi.com/1996-1073/12/12/2390heavy oilviscosityartificial neural networkpressuretemperature
collection DOAJ
language English
format Article
sources DOAJ
author Olalekan Alade
Dhafer Al Shehri
Mohamed Mahmoud
Kyuro Sasaki
spellingShingle Olalekan Alade
Dhafer Al Shehri
Mohamed Mahmoud
Kyuro Sasaki
Viscosity–Temperature–Pressure Relationship of Extra-Heavy Oil (Bitumen): Empirical Modelling versus Artificial Neural Network (ANN)
Energies
heavy oil
viscosity
artificial neural network
pressure
temperature
author_facet Olalekan Alade
Dhafer Al Shehri
Mohamed Mahmoud
Kyuro Sasaki
author_sort Olalekan Alade
title Viscosity–Temperature–Pressure Relationship of Extra-Heavy Oil (Bitumen): Empirical Modelling versus Artificial Neural Network (ANN)
title_short Viscosity–Temperature–Pressure Relationship of Extra-Heavy Oil (Bitumen): Empirical Modelling versus Artificial Neural Network (ANN)
title_full Viscosity–Temperature–Pressure Relationship of Extra-Heavy Oil (Bitumen): Empirical Modelling versus Artificial Neural Network (ANN)
title_fullStr Viscosity–Temperature–Pressure Relationship of Extra-Heavy Oil (Bitumen): Empirical Modelling versus Artificial Neural Network (ANN)
title_full_unstemmed Viscosity–Temperature–Pressure Relationship of Extra-Heavy Oil (Bitumen): Empirical Modelling versus Artificial Neural Network (ANN)
title_sort viscosity–temperature–pressure relationship of extra-heavy oil (bitumen): empirical modelling versus artificial neural network (ann)
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2019-06-01
description The viscosity data of two heavy oil samples X and Y, with asphaltene contents 24.8% w/w and 18.5% w/w, respectively, were correlated with temperature and pressure using empirical models and the artificial neural network (ANN) approach. The viscosities of the samples were measured over a range of temperatures between 70 &#176;C and 150 &#176;C; and from atmospheric pressure to 7 MPa. It was found that the viscosity of sample X, at 85 &#176;C and atmospheric pressure (0.1 MPa), was 1894 cP and that it increased to 2787 cP at 7 MPa. At 150 &#176;C, the viscosity increased from 28 cP (at 0.1 MPa) to 33 cP at 7 MPa. For sample Y, the viscosity at 70 &#176;C and 0.1 MPa increased from 2260 cP to 3022 cP at 7 MPa. At 120 &#176;C, the viscosity increased from 65 cP (0.1 MPa) to 71 cP at 7 MPa. Notably, using the three-parameter empirical models (Mehrotra and Svrcek, 1986 and 1987), the correlation constants obtained in this study are very close to those that were previously obtained for the Canadian heavy oil samples. Moreover, compared to other empirical models, statistical analysis shows that the ANN model has a better predictive accuracy (R<sup>2</sup> &#8776; 1) for the viscosity data of the heavy oil samples used in this study.
topic heavy oil
viscosity
artificial neural network
pressure
temperature
url https://www.mdpi.com/1996-1073/12/12/2390
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