Non-contrastive representation learning for intervals from well logs
Alexander Marusov, Alexey Zaytsev

TL;DR
This paper introduces non-contrastive self-supervised learning methods, specifically BYOL and Barlow Twins, for well-logging data to improve interval representation and similarity tasks without labeled data.
Contribution
First to apply non-contrastive SSL methods like BYOL and Barlow Twins to well-logging data, enhancing representation quality without supervision.
Findings
Achieved superior clustering performance.
Outperformed existing methods on classification tasks.
Validated effectiveness of augmentation strategies.
Abstract
The representation learning problem in the oil & gas industry aims to construct a model that provides a representation based on logging data for a well interval. Previous attempts are mainly supervised and focus on similarity task, which estimates closeness between intervals. We desire to build informative representations without using supervised (labelled) data. One of the possible approaches is self-supervised learning (SSL). In contrast to the supervised paradigm, this one requires little or no labels for the data. Nowadays, most SSL approaches are either contrastive or non-contrastive. Contrastive methods make representations of similar (positive) objects closer and distancing different (negative) ones. Due to possible wrong marking of positive and negative pairs, these methods can provide an inferior performance. Non-contrastive methods don't rely on such labelling and are…
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Taxonomy
TopicsReservoir Engineering and Simulation Methods · Time Series Analysis and Forecasting · Neural Networks and Applications
MethodsBarlow Twins · Bootstrap Your Own Latent
