Remote Sensing and Geological/Geophysical Data Integration for Oil and Gas Prospecting

Main Article Content

Sergey A. Stankevich
Olga V. Titarenko

Abstract

Model for remote sensing and geological/geophysical data integration based on Bayesian probabilistic inference is described. The proposed model has been tested on example of the Khukhra oil and gas condensate field territory in Ukraine. The results of testing are accorded well with previous geological forecasts.

Keywords:
oil and gas prospectively, geospatial data integration, Bayesian probabilistic inference, Khukhra oil and gas condensate field.
Published: Mar 27, 2015

Article Details

How to Cite
Stankevich, S. A., & Titarenko, O. V. (2015). Remote Sensing and Geological/Geophysical Data Integration for Oil and Gas Prospecting. Journals of Georgian Geophysical Society, 17(A). Retrieved from https://ggs.openjournals.ge/index.php/GGS/article/view/1637
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