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CORE-SCALE ROCK TYPING USING CONVOLUTIONAL NEURAL NETWORKS FOR RESERVOIR CHARACTERIZATION IN THE PETROLEUM INDUSTRY

Muhammad Sarmad, Johan Phan, Leonardo C. Ruspini, Gabriel Kiss, Frank Lindseth

First published: 2023-10-01https://doi.org/10.5593/sgem2023/1.1/s06.78View metrics

Abstract

Rock typing is an essential tool for reservoir characterization and management in the petroleum industry. It is the process of grouping portions of a rock sample based on their physical and chemical properties. This process is currently done by experts in the industry, which consumes valuable industry resources. Precise and efficient rock typing can build accurate geological models, optimize exploration and production strategies, and reduce exploration and production risks. This work proposes a deep learning method to identify and classify rocks based on their pore geometry, mineralogy, and other characteristics. The proposed technique segments a micro-CT image into different rock types using a neural network for automated rock typing. We suggest using a UNet architecture for the neural network for this task. The network has been trained in a supervised manner on expert-labelled images. The method's performance has been evaluated using qualitative and quantitative metrics. The neural network takes less than 200 milliseconds to provide the rock types, which is much faster than a human expert. We perform an explainability analysis of the neural network using class activation heatmaps approach to get insight into the learned weights. Rock typing using deep learning can improve the petroleum industry's workflow.

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Publication details

Title
CORE-SCALE ROCK TYPING USING CONVOLUTIONAL NEURAL NETWORKS FOR RESERVOIR CHARACTERIZATION IN THE PETROLEUM INDUSTRY
Authors
Muhammad Sarmad, Johan Phan, Leonardo C. Ruspini, Gabriel Kiss, Frank Lindseth
Proceedings
SGEM International Multidisciplinary Scientific GeoConference- EXPO Proceedings; 23rd International Multidisciplinary Scientific GeoConference Proceedings SGEM2023, Science and Technologies in Geology, Exploration And Mining, Vol 23, Issue 1.1
Publisher
STEF92 Technology
Year
2023
Pages
653-664
SWS Citekey
Sarmad20236653664
ISSN
1314-2704
ISBN
978-619-7603-56-9
Language
en
Publication type
Conference Paper
Proceedings contents
Open official contents
Keywords
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