Lithology and fluid prediction from seismic attributes using supervised Bayesian classification
Thierry Crozat. ( 2007 )
in: 27th gOcad Meeting, ASGA
Abstract
Traditional reservoir modeling combines data from various origins, which give different and complementary information. Well data give precise geological information about a very small part of the subsurface. On the other hand seismic data give information in 3D, but this information is at a lower vertical resolution and can not directly be linked to rock properties. If we want to combine these two sources of information to model a reservoir, we need to convert the seismic data into something more meaningful from a geological point of view. This paper presents a method and its implementation in the Gocad platform that can be used to make this conversion.
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BibTeX Reference
@inproceedings{CrozatRM2007, abstract = { Traditional reservoir modeling combines data from various origins, which give different and complementary information. Well data give precise geological information about a very small part of the subsurface. On the other hand seismic data give information in 3D, but this information is at a lower vertical resolution and can not directly be linked to rock properties. If we want to combine these two sources of information to model a reservoir, we need to convert the seismic data into something more meaningful from a geological point of view. This paper presents a method and its implementation in the Gocad platform that can be used to make this conversion. }, author = { Crozat, Thierry }, booktitle = { 27th gOcad Meeting }, month = { "may" }, publisher = { ASGA }, title = { Lithology and fluid prediction from seismic attributes using supervised Bayesian classification }, year = { 2007 } }