Data-Driven Fault Diagnostics for Neutron Generator Systems in Multifunction Logging-While-Drilling Service

A. Mosallam, Jinlong Kang, Fares Ben Youssef, L. Laval, James L. Fulton
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Abstract

This paper presents a data-driven fault diagnosis method for neutron generator systems in logging-while-drilling tools. Specifically, the nuclear system’s main failure modes and associated electronic boards are first identified, and then statistical features of the selected boards are extracted based on expert knowledge. The extracted features discriminate between healthy and faulty behavior for each board. Finally, machine learning models are used to map the relationship between the extracted features and the labels of the corresponding sensor data for each board. This method is validated using data collected from actual oil well drilling operations, and the experimental results show that the method is effective. This work is part of a long-term project aiming to construct a digital fleet management system for drilling tools.
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多功能随钻测井中子发生器系统的数据驱动故障诊断
提出了随钻测井中子发生器系统的数据驱动故障诊断方法。具体而言,首先识别核系统的主要故障模式和相关电子板,然后根据专家知识提取所选板的统计特征。提取的特征区分每个板的健康和错误行为。最后,使用机器学习模型映射提取的特征与每个板对应传感器数据的标签之间的关系。利用实际钻井数据对该方法进行了验证,实验结果表明该方法是有效的。这项工作是一项长期项目的一部分,该项目旨在构建钻井工具的数字化车队管理系统。
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