随钻测井变送器数据驱动故障检测

Karolina Sobczak-Oramus, A. Mosallam, Caner Basci, Jinlong Kang
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引用次数: 2

摘要

油气行业中广泛使用的测井工具暴露在苛刻的环境条件下,可能导致更快的退化和意外故障。这些事件可能会降低产能,延迟交付,甚至导致整个钻井作业的结束。然而,使用预测和健康管理方法可以避免此类事故。提出了一种采用支持向量机分类器的随钻测井变送器数据驱动故障检测方法。运行状况分析仪可在短短几分钟内确定组件的物理状况,为现场和维护工程师展示了非凡的价值。这项工作是长期项目的一部分,旨在为井下测试工具构建数字化车队管理系统。
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Data-Driven Fault Detection for Transmitter in Logging-While-Drilling Tool
Logging tools widely used in the oil and gas industry are exposed to demanding environmental conditions that can lead to faster degradation and unexpected failures. These events can reduce productivity, delay deliverables, or even bring entire drilling operations to an end. However, such accidents can be avoided using a prognostics and health management  approach. This paper presents a data-driven fault detection method for transmitter in logging-while-drilling tool adopting a support vector machine classifier. The health analyzer determines the component’s physical condition in just a few minutes, demonstrating an exceptional value for both field and maintenance engineers. This work is part of a long-term project aimed at constructing a digital fleet management system for downhole testing tools.
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