钻井作业中漏失事件智能实时识别的变化点检测方法

F. Cannarile, Stefano Montoli, G. Giliberto, Mauro Suardi, Benedetta Di Bari, G. Formato, D. Farina, Gianluca Magni, Luigi Mutidieri, A. Prospero, A. Fidanzi, Luca Dal Forno, Giorgio Ricci Maccarini
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引用次数: 0

摘要

在钻井作业中,漏失是一个具有挑战性的问题,因为井筒流体不受控制地流入地层会给钻井人员和环境带来风险。此外,恢复钻井液循环所需的时间通常会导致计划外的非生产时间(NPT),从而增加钻井成本。因此,为钻井监督人员提供准确有效的检测工具,以确保钻井作业的安全和经济,至关重要。在此框架下,提出了一种新的漏失智能检测系统,该系统依赖于在泥浆流入速率恒定的情况下,同时识别桨叶泥浆流出和立管压力信号的下降趋势。首先,泥浆流出和立管压力信号是基于三次样条平滑步骤的基础,以消除由测量仪器和钻井环境的内在变异性引起的背景噪声。为了识别所考虑信号的结构变化,采用了一种基于非参数核的变化点检测算法。最后,如果检测到流出和立管压力的下降趋势,并且它们的负变化低于预设的阈值,则会发出警报。根据Eni在不同国家的几口井的历史现场数据,已经验证了所提出的智能漏失检测系统。结果表明,该系统能够满意、可靠地检测出部分漏失和全部漏失。此外,它与Eni现有的NPT预测模型相结合,在正确触发事件方面取得了显着改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Change Point Detection Approach for Intelligent Real-Time Identification of Lost Circulation Events During Drilling Operations
Lost circulation is a challenging aspect during drilling operations as uncontrolled flow of wellbore fluids into formation can expose rig personnel and environment to risks. Further, the time required to regain the circulation of drilling fluid typically results in unplanned Non-Productive Time (NPT) causing undesired amplified drilling cost. Thus, it is of primary importance to support drilling supervisors with accurate and effective detection tools for safe and economic drilling operations. In this framework, a novel lost circulation intelligent detection system is proposed which relies on the simultaneous identification of decreasing trends in the paddle mud flow-out and standpipe pressure signals, at constant mud flow-in rate. First, mud flow-out and standpipe pressure signals underlie cubic-spline-based smoothing step to remove background noise caused by the measurement instrument and the intrinsic variability of the drilling environment. To identify structural changes in the considered signals, a nonparametric kernel-based change point detection algorithm is employed. Finally, an alarm is raised if flow-out and standpipe pressure decreasing trends have been detected and their negative variations are below prefixed threshold values. The proposed intelligent lost circulation detection system has been verified with respect to historical field data recorded from several Eni wells located in different countries. Results show that the proposed system satisfactorily and reliably detects both partial and total lost circulation events. Further, its integration with already existing Eni NPT prediction models has led to a significant improvement in terms of events correctly triggered.
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