Preview

Vestnik NSU. Series: Information Technologies

Advanced search

Oil Reservoir Classification by Geological and Production Data Using Unsupervised Machine Learning Algorithm

https://doi.org/10.25205/1818-7900-2020-18-1-27-35

Abstract

In machine learning, k -means unsupervised model is used for classification analysis. In this paper k-means model is applied for productivity prediction of giant Western Siberian oilfield. An essential condition for method’s application is availability of digital databases with representative results. Complex method allows combine different reservoir and production parameters: rates, porosity, saturation, frac parameters etc. The method can be particularly useful in complicated reservoirs, e.g. in dual porosity ones, where the relationship between formation parameters (permeability, porosity, saturation) and production rates is unclear and cannot be set by traditional development analysis, particularly in frac environment.

About the Author

D. V. Kurganov
Smara State Technical University
Russian Federation


Review

For citations:


Kurganov D.V. Oil Reservoir Classification by Geological and Production Data Using Unsupervised Machine Learning Algorithm. Vestnik NSU. Series: Information Technologies. 2020;18(1):27-35. (In Russ.) https://doi.org/10.25205/1818-7900-2020-18-1-27-35

Views: 55


Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 License.


ISSN 1818-7900 (Print)
ISSN 2410-0420 (Online)