具有工程洞察力的机器学习模型:来自石油和天然气行业的案例研究

I. Chakraborty, Daniel J Kluk, S. McNeill
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摘要

机器学习作为一种工具,在几乎所有领域的应用中都得到了迅速的普及。在石油和天然气行业,机器学习被用作解决传统方法无法解决的问题的工具,或者提供经济高效、更快的数据驱动解决方案。工程专业知识和基础知识对于从基于数据的模型中得出有意义的结论仍然是相关的和必要的。在不同的应用中提出了两个案例研究,这将说明在创建有洞察力的机器学习模型中使用工程领域知识进行特征提取和特征操作的重要性。第一个案例研究涉及泵的状态监测(CBM)。各种泵被应用于油田生命周期的各个方面,如钻井、完井(包括水力压裂)、生产和修井。由于泵的运行是基于传感器反馈的,目前还没有完善的方法来监测泵的故障状态。因此,维护要么是过早地执行,要么是被动地执行,这两种情况都会导致浪费的停机时间和不必要的费用。利用基于机器学习的神经网络模型,从压力传感器的测量数据中识别出三缸泵的不同故障状态。在第二个案例研究中,根据船舶位置数据预测海上浮式生产装置系泊线的故障。识别受损的系泊线对于浮式生产系统的结构健康至关重要。在海上浮式平台中,系缆张力与船舶运动高度相关。船舶位置数据是通过运行耦合分析模型生成的。训练k -最近邻(KNN)分类器模型来预测系缆故障。在所有的案例研究中,都强调了将对问题物理的深刻理解与机器学习工具相结合的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Models With Engineering Insight: Case Studies From the Oil and Gas Industry
Machine learning is gaining rapid popularity as a tool of choice for applications in almost every field. In the oil and gas industry, machine learning is used as a tool for solving problems which could not be solved by traditional methods or for providing a cost-effective and faster data driven solution. Engineering expertise and knowledge of fundamentals remain relevant and necessary to draw meaningful conclusions from the data-based models. Two case studies are presented in different applications that will illustrate the importance of using engineering domain knowledge for feature extraction and feature manipulation in creating insightful machine learning models. The first case study involves condition-based monitoring (CBM) of pumps. A variety of pumps are employed in all aspects of the oilfield life cycle, such as drilling, completion (including hydraulic fracturing), production, and intervention. There is no well-established method to monitor the pump fault states as they are operating based on sensor feedback. As a result, maintenance is performed either prematurely or reactively, both of which result in wasteful downtime and unnecessary expense. A machine learning based neural network model is used for identifying different fault states in a triplex pump from measured pressure sensor data. In the second case study, failures of mooring lines of an offshore floating production unit are predicted from the vessel position data. Identifying a damaged mooring line can be critical for the structural health of the floating production system. In offshore floating platforms, mooring line tension is highly correlated to a vessel’s motions. The vessel position data is created from running coupled analysis models. A K-Nearest-Neighbor (KNN) classifier model is trained to predict mooring line failures. In all the case studies, the importance of combining a deep understanding of the physics of the problem with machine learning tools is emphasized.
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