Performance Improvement of Wells Augmented Stuck Pipe Indicator via Model Evaluations

M. M. M. Hashim, M. H. Yusoff, M. Arriffin, A. Mohamad, Tengku Ezharuddin Tengku Bidin, Dalila Gomes
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引用次数: 2

Abstract

The advancement of technology in this era has long profited the oil and gas industry by means of shrinking non-productive time (NPT) events and reducing drilling operational costs via real-time monitoring and intervention. Nevertheless, stuck pipe incidents have been a big concern and pain point for any drilling operations. Real-time monitoring with the aid of dynamic roadmaps of drilling parameters is useful in recognizing potential downhole issues but the initial stuck pipe symptoms are often minuscule in a short time frame hence it is a challenge to identify it in time. Wells Augmented Stuck Pipe Indicator (WASP) is a data-driven method leveraging historical drilling data and auxiliary engineering information to provide an impartial trend detection of impending stuck pipe incidents. WASP is a solution set to tackle the challenge. The solution is anchored on Machine Learning (ML) models which assess real-time drilling data and compute the risk of potential stuck pipe based on drilling activities, probable stuck pipe mechanisms, and operation time. The output of the analysis is built on a warning and alarm system that can be utilized by the engineers to refine and optimize the well construction activities; tackling the stuck pipe issue before it manifests. This solution is evaluated by comparing historical and real-time drilling parameters with the prediction data to generate an error analysis. On top of that, a confusion matrix is tabulated based on the analysis of warnings and alarms raised by the solution to rule out Type 1 and Type 2 errors. The WASP solution has demonstrated tolerably accurate predictions of drilling parameters with minimal warnings and alarms error. With the solution, the stuck pipe issue can be identified hours earlier before the actual stuck pipe was reported in the historical well. It is a powerful tool with the capability to pinpoint possible stuck pipe mechanisms for engineer's immediate analysis and intervention. Value creation from the WASP solution has been massive with a reduction in manhours of analysis, potential NPT events, and unexpected operational costs. Data-driven techniques are effective in preventing stuck pipe incidents and will be scalable to tackle other downhole issues such as loss of circulation, well control, and borehole instability.
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基于模型评价的油井加强型卡钻指示器性能改进
在这个时代,技术的进步通过实时监测和干预减少了非生产时间(NPT)事件,降低了钻井作业成本,使油气行业长期受益。然而,卡钻事故一直是钻井作业的一个大问题和痛点。借助钻井参数动态路线图的实时监测有助于识别潜在的井下问题,但最初的卡钻症状通常在短时间内微乎其微,因此及时识别是一个挑战。油井增强卡钻指示器(WASP)是一种数据驱动的方法,利用历史钻井数据和辅助工程信息,为即将发生的卡钻事故提供公正的趋势检测。WASP是应对这一挑战的一种解决方案。该解决方案基于机器学习(ML)模型,该模型可评估实时钻井数据,并根据钻井活动、可能的卡钻机制和作业时间计算潜在卡钻风险。分析结果建立在一个警告和报警系统上,工程师可以利用该系统来改进和优化建井活动;在卡管问题出现之前解决它。通过将历史和实时钻井参数与预测数据进行比较来评估该解决方案,从而生成误差分析。在此基础上,根据对解决方案发出的警告和警报的分析,生成混淆矩阵,以排除类型1和类型2错误。WASP解决方案对钻井参数的预测相当准确,预警和报警误差最小。通过该解决方案,可以在历史井中报告实际卡钻之前数小时识别出卡钻问题。它是一种功能强大的工具,能够精确定位可能的卡钻机制,以便工程师立即进行分析和干预。WASP解决方案创造了巨大的价值,减少了分析工时、潜在的NPT事件和意外的运营成本。数据驱动技术可以有效防止卡钻事故,并可扩展到解决其他井下问题,如漏失、井控和井眼不稳定。
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