首页> 外文期刊>Transactions of The Institution of Chemical Engineers. Process Safety and Environmental Protection, Part B >Developing leading indicators-based decision support algorithms and probabilistic models using Bayesian network to predict kicks while drilling
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Developing leading indicators-based decision support algorithms and probabilistic models using Bayesian network to predict kicks while drilling

机译:使用贝叶斯网络制定基于领先指标的决策支持算法和概率模型,以在钻井时预测踢球

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摘要

Predicting a kick timely and efficiently is often a challenging task due to the complexities of drilling and other well intervention activities. This work proposes a leading indicators-based approach to assess drilling operations for predicting kicks and preventing blowouts. A cause-based methodology is proposed to develop sets of leading indicators for different categories and organizational levels. Leading indicators are divided into two broad sections-real-time indicators and long-term organizational safety performance indicators. With the real-time indicators, various decision support algorithms are developed which would help to understand a kick progression scenario effectively. Probabilistic barrier failure models for different stages of drilling are also developed to assess performance of primary well control barrier-hydrostatic head. To predict barrier failure events effectively, Bayesian network models are developed combining organizational, operational and real-time indicators. The probability distribution for observing changes in real-time parameters when a kick is in progression are also determined. This study would allow both predictive (causes to effects) and diagnostic (effects to causes) reasoning of kicks and blowouts for better understanding of well control system while drilling. Developed risk models enable informed decision making with a relatively clear picture of the risk of barrier failure and provide useful information on actions required to prevent escalation of well control events. (C) 2018 Institution of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:由于钻井和其他井干预活动的复杂性,及时和高效地预测踢球通常是一个具有挑战性的任务。这项工作提出了一种基于领先的指标的方法来评估钻探操作,以预测踢球和预防井喷。提出了一种基于原因的方法,为不同类别和组织级别开发一套领先指标。领先指标分为两个广泛的实时指标和长期组织安全绩效指标。通过实时指标,开发了各种决策支持算法,这将有助于有效地了解踢球进展情况。还开发了用于不同钻探阶段的概率阻隔模型,以评估初级孔控制屏障 - 静水头的性能。为了有效地预测屏障失败事件,贝叶斯网络模型是组合组织,操作和实时指标的组合。还确定了当踢进行时,观察实时参数变化的概率分布。该研究将允许预测性(导致影响)和诊断(效果导致)挖掘和井喷的推理,以便在钻井时更好地理解井控制系统。开发的风险模型使得能够有明智的决策,相对清晰地描绘了障碍失败的风险,并提供有关防止升级井控制事件升级所需的动作的有用信息。 (c)2018化学工程师机构。 elsevier b.v出版。保留所有权利。

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