A hybrid PSO-SVM-based model for determination of oil recovery factor in the low-permeability reservoir

Oil recovery factor is one of the most important parameters in the development process of oil reservoir, especially in the low-permeability reservoir. In general, the determination of recovery factor can be obtained either experimentally or numerically. Experimental method is often time-consuming an...

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Main Authors: Bing Han, Xiaoqiang Bian
Format: Article
Language:English
Published: KeAi Communications Co., Ltd. 2018-03-01
Series:Petroleum
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2405656116302188
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spelling doaj-f9ce0800ab0348ef949481e316685ad12021-02-02T06:01:34ZengKeAi Communications Co., Ltd.Petroleum2405-65612018-03-0141434910.1016/j.petlm.2017.06.001A hybrid PSO-SVM-based model for determination of oil recovery factor in the low-permeability reservoirBing Han0Xiaoqiang Bian1State Key Laboratory of Oil and Gas Reservoir Geology and Exploitation, Southwest Petroleum University, Chengdu 610500, ChinaState Key Laboratory of Oil and Gas Reservoir Geology and Exploitation, Southwest Petroleum University, Chengdu 610500, ChinaOil recovery factor is one of the most important parameters in the development process of oil reservoir, especially in the low-permeability reservoir. In general, the determination of recovery factor can be obtained either experimentally or numerically. Experimental method is often time-consuming and expensive, while numerical method has been always confined to narrow range of application or relatively large error. Recently, an intelligent method has been proven as an efficient tool to model the complex and nonlinear phenomena. In this work, an intelligent model based on support vector machine in combination with the particle swarm optimization (PSO-SVM) technique was established to predict oil recovery factor in the low-permeability reservoir. Input variables of the proposed PSO-SVM model with the aid of a grey correlation analysis method are permeability, well spacing density, production-injection well ratio, porosity, effective thickness, crude oil viscosity and output parameter is oil recovery factor of low-permeability reservoir. The accuracy and reliability of the proposed model were evaluated through 34 data sets collected in the open literature and compared with PSO-BP neural network, empirical method from Oil and Gas Company. The results indicated that the PSO-SVM model gives the best results with average absolute relative deviation (AARD) of 3.79%, while AARDs for the PSO-BP neural network and empirical method are 9.18% and 10.0%, respectively. Furthermore, outlier detection was used on the basis of whole data sets to definite the valid domains of PSO-SVM and PSO-BP models by detecting the probable doubtful recovery factor data in the low-permeability reservoir.http://www.sciencedirect.com/science/article/pii/S2405656116302188PSO-SVMRecovery factorLow permeabilityReservoirOutlier detection
collection DOAJ
language English
format Article
sources DOAJ
author Bing Han
Xiaoqiang Bian
spellingShingle Bing Han
Xiaoqiang Bian
A hybrid PSO-SVM-based model for determination of oil recovery factor in the low-permeability reservoir
Petroleum
PSO-SVM
Recovery factor
Low permeability
Reservoir
Outlier detection
author_facet Bing Han
Xiaoqiang Bian
author_sort Bing Han
title A hybrid PSO-SVM-based model for determination of oil recovery factor in the low-permeability reservoir
title_short A hybrid PSO-SVM-based model for determination of oil recovery factor in the low-permeability reservoir
title_full A hybrid PSO-SVM-based model for determination of oil recovery factor in the low-permeability reservoir
title_fullStr A hybrid PSO-SVM-based model for determination of oil recovery factor in the low-permeability reservoir
title_full_unstemmed A hybrid PSO-SVM-based model for determination of oil recovery factor in the low-permeability reservoir
title_sort hybrid pso-svm-based model for determination of oil recovery factor in the low-permeability reservoir
publisher KeAi Communications Co., Ltd.
series Petroleum
issn 2405-6561
publishDate 2018-03-01
description Oil recovery factor is one of the most important parameters in the development process of oil reservoir, especially in the low-permeability reservoir. In general, the determination of recovery factor can be obtained either experimentally or numerically. Experimental method is often time-consuming and expensive, while numerical method has been always confined to narrow range of application or relatively large error. Recently, an intelligent method has been proven as an efficient tool to model the complex and nonlinear phenomena. In this work, an intelligent model based on support vector machine in combination with the particle swarm optimization (PSO-SVM) technique was established to predict oil recovery factor in the low-permeability reservoir. Input variables of the proposed PSO-SVM model with the aid of a grey correlation analysis method are permeability, well spacing density, production-injection well ratio, porosity, effective thickness, crude oil viscosity and output parameter is oil recovery factor of low-permeability reservoir. The accuracy and reliability of the proposed model were evaluated through 34 data sets collected in the open literature and compared with PSO-BP neural network, empirical method from Oil and Gas Company. The results indicated that the PSO-SVM model gives the best results with average absolute relative deviation (AARD) of 3.79%, while AARDs for the PSO-BP neural network and empirical method are 9.18% and 10.0%, respectively. Furthermore, outlier detection was used on the basis of whole data sets to definite the valid domains of PSO-SVM and PSO-BP models by detecting the probable doubtful recovery factor data in the low-permeability reservoir.
topic PSO-SVM
Recovery factor
Low permeability
Reservoir
Outlier detection
url http://www.sciencedirect.com/science/article/pii/S2405656116302188
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