Permeability Prediction using multivariant structural regression

A novel method for permeability prediction is presented using multivariant structural regression. A machine learning based model is trained using a large number (2,190, extrapolated to 219,000) of synthetic datasets constructed using a variety of object-based techniques. Permeability, calculated on...

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Main Author: Andrew Matthew
Format: Article
Language:English
Published: EDP Sciences 2020-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/06/e3sconf_sca2019_04001.pdf
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spelling doaj-3590d89bda0d427d851013a5920d1ec42021-04-02T14:47:17ZengEDP SciencesE3S Web of Conferences2267-12422020-01-011460400110.1051/e3sconf/202014604001e3sconf_sca2019_04001Permeability Prediction using multivariant structural regressionAndrew MatthewA novel method for permeability prediction is presented using multivariant structural regression. A machine learning based model is trained using a large number (2,190, extrapolated to 219,000) of synthetic datasets constructed using a variety of object-based techniques. Permeability, calculated on each of these networks using traditional digital rock approaches, was used as a target function for a multivariant description of the pore network structure, created from the statistics of a discrete description of grains, pores and throats, generated through image analysis. A regression model was created using an Extra-Trees method with an error of <4% on the target set. This model was then validated using a composite series of data created both from proprietary datasets of carbonate and sandstone samples and open source data available from the Digital Rocks Portal (www.digitalrocksporta.org) with a Root Mean Square Fractional Error of <25%. Such an approach has wide applicability to problems of heterogeneity and scale in pore scale analysis of porous media, particularly as it has the potential of being applicable on 2D as well as 3D data.https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/06/e3sconf_sca2019_04001.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Andrew Matthew
spellingShingle Andrew Matthew
Permeability Prediction using multivariant structural regression
E3S Web of Conferences
author_facet Andrew Matthew
author_sort Andrew Matthew
title Permeability Prediction using multivariant structural regression
title_short Permeability Prediction using multivariant structural regression
title_full Permeability Prediction using multivariant structural regression
title_fullStr Permeability Prediction using multivariant structural regression
title_full_unstemmed Permeability Prediction using multivariant structural regression
title_sort permeability prediction using multivariant structural regression
publisher EDP Sciences
series E3S Web of Conferences
issn 2267-1242
publishDate 2020-01-01
description A novel method for permeability prediction is presented using multivariant structural regression. A machine learning based model is trained using a large number (2,190, extrapolated to 219,000) of synthetic datasets constructed using a variety of object-based techniques. Permeability, calculated on each of these networks using traditional digital rock approaches, was used as a target function for a multivariant description of the pore network structure, created from the statistics of a discrete description of grains, pores and throats, generated through image analysis. A regression model was created using an Extra-Trees method with an error of <4% on the target set. This model was then validated using a composite series of data created both from proprietary datasets of carbonate and sandstone samples and open source data available from the Digital Rocks Portal (www.digitalrocksporta.org) with a Root Mean Square Fractional Error of <25%. Such an approach has wide applicability to problems of heterogeneity and scale in pore scale analysis of porous media, particularly as it has the potential of being applicable on 2D as well as 3D data.
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/06/e3sconf_sca2019_04001.pdf
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