Fluvial deposits create significant hydrocarbon reservoirs, although their characterisation can be difficult due to their differing scales of heterogeneity. Whilst numerical modelling methods have advanced to statistically honour fluvial input datasets, geologically realistic features are often lost, impacting hydrocarbon recovery predictions. Two dimensional training images are often used to dictate what heterogeneity is inputted into multi-point statistics based reservoir. In this study, a three dimensional training image is built, based upon depositional conditions derived from outcrop and modern satellite imagery data of a fluvial system. The aims of this study are to: identify the heterogeneity within the modern and outcrop data and to...
Sedimentary facies are a key control on the distribution of spatial heterogeneity and geological fac...
Most studies about the application of geostatistical simulations based on multiple-point statistics ...
Current standard geostatistical approaches to characterizing subsurface heterogeneity may not captur...
This research aims to develop new workflows that enable the generation of model outputs with improve...
Facies modelling seeks to reproduce the geometry and distribution of the reservoir forming sedimenta...
This research aims to develop new workflows that enable the generation of model outputs with improve...
This research aims to develop new workflows that enable the generation of model outputs with improve...
Fluvial sandstones deposited by high-sinuosity fluvial systems are one of the most complex reservoir...
The lack of a suitable training image is one of the main limitations of the application of multiple-...
none5siFirst Online: 03 December 2013The lack of a suitable training image is one of the main limita...
The lack of a suitable training image is one of the main limitations of the application of multiple-...
In the generation of static reservoir models, it is common to apply quantitative information derived...
The lack of a suitable training image is one of the main limitations of the application of multiple-...
As an important modeling parameter in multi-point geostatistics, training images determine the model...
Accurate characterization of subsurface oil reservoirs is an essential prerequisite ...
Sedimentary facies are a key control on the distribution of spatial heterogeneity and geological fac...
Most studies about the application of geostatistical simulations based on multiple-point statistics ...
Current standard geostatistical approaches to characterizing subsurface heterogeneity may not captur...
This research aims to develop new workflows that enable the generation of model outputs with improve...
Facies modelling seeks to reproduce the geometry and distribution of the reservoir forming sedimenta...
This research aims to develop new workflows that enable the generation of model outputs with improve...
This research aims to develop new workflows that enable the generation of model outputs with improve...
Fluvial sandstones deposited by high-sinuosity fluvial systems are one of the most complex reservoir...
The lack of a suitable training image is one of the main limitations of the application of multiple-...
none5siFirst Online: 03 December 2013The lack of a suitable training image is one of the main limita...
The lack of a suitable training image is one of the main limitations of the application of multiple-...
In the generation of static reservoir models, it is common to apply quantitative information derived...
The lack of a suitable training image is one of the main limitations of the application of multiple-...
As an important modeling parameter in multi-point geostatistics, training images determine the model...
Accurate characterization of subsurface oil reservoirs is an essential prerequisite ...
Sedimentary facies are a key control on the distribution of spatial heterogeneity and geological fac...
Most studies about the application of geostatistical simulations based on multiple-point statistics ...
Current standard geostatistical approaches to characterizing subsurface heterogeneity may not captur...