Data-Augmented Deep Learning for Downhole Depth Sensing and Validation
Si-Yu Xiao, Xin-Di Zhao, Tian-Hao Mao, Yi-Wei Wang, Yu-Qiao Chen, Hong-Yun Zhang, Jian Wang, Jun-Jie Wang, Shuang Liu, Tu-Pei Chen, Yang Liu

TL;DR
This paper introduces data augmentation techniques for neural network-based collar recognition in downhole depth sensing, significantly improving model accuracy and generalization with limited real well data.
Contribution
It develops comprehensive data augmentation methods tailored for CCL data, enhancing neural network training and performance in depth sensing applications.
Findings
Data augmentation improves F1 scores by up to 0.057.
Standardization and label smoothing are essential for training.
Proposed methods outperform prior approaches.
Abstract
Accurate downhole depth measurement is essential for oil and gas well operations, directly influencing reservoir contact, production efficiency, and operational safety. Collar correlation using a casing collar locator (CCL) is fundamental for precise depth calibration. While neural network has achieved significant progress in collar recognition, preprocessing methods for such applications remain underdeveloped. Moreover, the limited availability of real well data poses substantial challenges for training neural network models that require extensive datasets. This paper presents a system integrated into a downhole toolstring for CCL log acquisition to facilitate dataset construction. Comprehensive preprocessing methods for data augmentation are proposed, and their effectiveness is evaluated using baseline neural network models. Through systematic experimentation across diverse…
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