Stochastic Inversion of Wellbore Stability Models Calibrated With Hard and Soft Data

R. Birchwood, Evangelia Nicolaidou, A. Rodriguez-herrera, R. Prioul
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引用次数: 1

Abstract

Wellbore stability models are used in well-planning to determine the safe mud-weight window for drilling. More generally, calibration of wellbore stability models against observations (such as image logs, caliper measurements, and generaldrilling observations) is an essential step in constructing reliable 1D and 3D Mechanical Earth Models (MEMs) which are used to design safe drilling, completion, and production strategies. However, such calibration usually produces non-unique results, partly because most common types of calibration data impose only soft (inequality) constraints on wellbore stability models. Such nonuniqueness can be represented using probability density functions (PDFs). In this paper we show the results of stochastic inversion for stress parameters performed by drawing samples from these PDFs using a Markov Chain Monte Carlo procedure. Most types of calibration data (e.g., breakouts, drilling-induced fractures) produce a wide range of possible solutions for the stress parameters. However, the uncertainty reduces dramatically as data from an increasing number of depth locations is simultaneously inverted. The results also illustrate how including depths where breakouts and drilling-induced fractures are absent produces a powerful constraint on inferred stress parameters.
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用硬、软数据标定井筒稳定性模型的随机反演
井筒稳定性模型用于井规划,以确定钻井的安全泥浆密度窗口。更一般地说,根据观测数据(如图像测井、卡尺测量和一般钻井观测数据)校准井筒稳定性模型是构建可靠的1D和3D机械地球模型(MEMs)的重要步骤,MEMs可用于设计安全的钻井、完井和生产策略。然而,这种校准通常会产生非唯一的结果,部分原因是大多数常见类型的校准数据仅对井筒稳定性模型施加软(不平等)约束。这种非唯一性可以用概率密度函数(pdf)来表示。在本文中,我们展示了应力参数随机反演的结果,通过使用马尔可夫链蒙特卡罗程序从这些pdf中绘制样本。大多数类型的校准数据(例如,突围,钻井引起的裂缝)产生了各种可能的应力参数解。然而,随着越来越多的深度位置的数据同时被反演,不确定性大大降低。结果还表明,包括没有突发性裂缝和钻井诱发裂缝的深度如何对推断的应力参数产生强大的约束。
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