Geomodelling of a fluvial system with semi-supervised support vector regression
Details
Serval ID
serval:BIB_9AB4DBB9E13A
Type
Inproceedings: an article in a conference proceedings.
Collection
Publications
Institution
Title
Geomodelling of a fluvial system with semi-supervised support vector regression
Title of the conference
Proceedings of the 8th International Geostatistics Congress, Santiago, Chile
Publisher
Gecamin Ltd.
Publication state
Published
Issued date
2008
Volume
2
Pages
627-636
Language
english
Notes
Demyanov2008
Abstract
Fluvial deposits are a challenge for modelling flow in sub-surface
reservoirs. Connectivity and continuity of permeable bodies have
a major impact on fluid flow in porous media. Contemporary object-based
and multipoint statistics methods face a problem of robust representation
of connected structures. An alternative approach to model petrophysical
properties is based on machine learning algorithm ? Support Vector
Regression (SVR). Semi-supervised SVR is able to establish spatial
connectivity taking into account the prior knowledge on natural similarities.
SVR as a learning algorithm is robust to noise and captures dependencies
from all available data. Semi-supervised SVR applied to a synthetic
fluvial reservoir demonstrated robust results, which are well matched
to the flow performance
reservoirs. Connectivity and continuity of permeable bodies have
a major impact on fluid flow in porous media. Contemporary object-based
and multipoint statistics methods face a problem of robust representation
of connected structures. An alternative approach to model petrophysical
properties is based on machine learning algorithm ? Support Vector
Regression (SVR). Semi-supervised SVR is able to establish spatial
connectivity taking into account the prior knowledge on natural similarities.
SVR as a learning algorithm is robust to noise and captures dependencies
from all available data. Semi-supervised SVR applied to a synthetic
fluvial reservoir demonstrated robust results, which are well matched
to the flow performance
Create date
25/11/2013 17:18
Last modification date
20/08/2019 15:01