Deep learning for lithological classification of carbonate rock micro-CT images
Carlos E. M. dos Anjos, Manuel R. V. Avila, Adna G. P. Vasconcelos,, Aurea M.P. Neta, Lizianne C. Medeiros, Alexandre G. Evsukoff, Rodrigo, Surmas

TL;DR
This paper applies deep learning convolutional neural networks to classify micro-CT images of Brazilian pre-salt carbonate rocks, achieving over 81% accuracy, to automate lithological identification in geological samples.
Contribution
It introduces novel CNN architectures with pooling layer modifications for lithological classification of carbonate rock micro-CT images.
Findings
Model 2 with resized images achieved 81.33% accuracy.
Deep learning workflow enables automated, non-destructive lithology classification.
Proposed models outperform baseline in classifying carbonate rock micro-CT images.
Abstract
In addition to the ongoing development, pre-salt carbonate reservoir characterization remains a challenge, primarily due to inherent geological particularities. These challenges stimulate the use of well-established technologies, such as artificial intelligence algorithms, for image classification tasks. Therefore, this work intends to present an application of deep learning techniques to identify patterns in Brazilian pre-salt carbonate rock microtomographic images, thus making possible lithological classification. Four convolutional neural network models were proposed. The first model includes three convolutional layers followed by fully connected layers and is used as a base model for the following proposals. In the next two models, we replace the max pooling layer with a spatial pyramid pooling and a global average pooling layer. The last model uses a combination of spatial pyramid…
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Taxonomy
TopicsHydrocarbon exploration and reservoir analysis · Seismic Imaging and Inversion Techniques · Enhanced Oil Recovery Techniques
MethodsAverage Pooling · Spatial Pyramid Pooling · Global Average Pooling · Max Pooling
