AI for Porosity and Permeability Prediction from Geologic Core X-Ray
Micro-Tomography
- URL: http://arxiv.org/abs/2205.13189v1
- Date: Thu, 26 May 2022 06:55:03 GMT
- Title: AI for Porosity and Permeability Prediction from Geologic Core X-Ray
Micro-Tomography
- Authors: Zangir Iklassov, Dmitrii Medvedev, Otabek Nazarov
- Abstract summary: We propose to use self-supervised pretraining of the very small CNN-transformer-based model to predict the physical properties of the rocks.
We show that this technique prevents overfitting even for extremely small datasets.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Geologic cores are rock samples that are extracted from deep under the ground
during the well drilling process. They are used for petroleum reservoirs'
performance characterization. Traditionally, physical studies of cores are
carried out by the means of manual time-consuming experiments. With the
development of deep learning, scientists actively started working on developing
machine-learning-based approaches to identify physical properties without any
manual experiments. Several previous works used machine learning to determine
the porosity and permeability of the rocks, but either method was inaccurate or
computationally expensive. We are proposing to use self-supervised pretraining
of the very small CNN-transformer-based model to predict the physical
properties of the rocks with high accuracy in a time-efficient manner. We show
that this technique prevents overfitting even for extremely small datasets.
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