ArXiv TLDR

Assessing the Potential of Masked Autoencoder Foundation Models in Predicting Downhole Metrics from Surface Drilling Data

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2604.15169

Aleksander Berezowski, Hassan Hassanzadeh, Gouri Ginde

cs.LG

TLDR

This study assesses Masked Autoencoder Foundation Models (MAEFMs) for predicting downhole metrics from surface drilling data.

Key contributions

  • Systematically reviewed 13 papers on downhole metric prediction from surface data.
  • Identified 8 common surface metrics and 7 target downhole metrics in drilling.
  • Found current methods use ANNs/LSTMs, but no studies explore MAEFMs.
  • Highlights MAEFMs' potential for self-supervised pre-training and multi-task prediction.

Why it matters

Accurate downhole metric prediction is vital but challenging due to scarce labeled data. This paper identifies MAEFMs as a technically feasible, yet unexplored, opportunity to leverage abundant unlabeled surface data. This could significantly advance drilling analytics and operational efficiency.

Original Abstract

Oil and gas drilling operations generate extensive time-series data from surface sensors, yet accurate real-time prediction of critical downhole metrics remains challenging due to the scarcity of labelled downhole measurements. This systematic mapping study reviews thirteen papers published between 2015 and 2025 to assess the potential of Masked Autoencoder Foundation Models (MAEFMs) for predicting downhole metrics from surface drilling data. The review identifies eight commonly collected surface metrics and seven target downhole metrics. Current approaches predominantly employ neural network architectures such as artificial neural networks (ANNs) and long short-term memory (LSTM) networks, yet no studies have explored MAEFMs despite their demonstrated effectiveness in time-series modeling. MAEFMs offer distinct advantages through self-supervised pre-training on abundant unlabeled data, enabling multi-task prediction and improved generalization across wells. This research establishes that MAEFMs represent a technically feasible but unexplored opportunity for drilling analytics, recommending future empirical validation of their performance against existing models and exploration of their broader applicability in oil and gas operations.

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