通过岩石性质分析与评价进行高效井筒优化

Joshua Oluwayomi Ogunrinde
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引用次数: 0

摘要

在钻井过程中会遇到许多问题,如井筒不稳定、钻井泥浆重量估计以及为钻井作业选择良好的套管和钻头等。因此,了解和准确确定岩石的强度是非常重要的,以避免在钻井作业中经常遇到的这些常见的钻井问题。从岩心和声波测井数据中确定岩石的单轴抗压强度(UCS),以便准确预测岩石强度,从而更好地规划井眼。在这项工作中,我们能够利用回归分析方法,从尼日尔三角洲陆上不同位置的10口井的数据中获得相关性,以确定UCS。UCS与泊松比的相关R2值为90.0%。R2-值趋于1(1)表明该模型可以可靠地预测ND-UCS, p<0.05表明ND-UCS与泊松比之间存在显著关系。该模型用完全不同的井数据进行了验证,与实际岩石UCS数据相比,该模型预测的岩石UCS数据超过89%。该研究还为有效的岩石性质分析和评价提供了UCS和泊松比随深度变化的认识。这些相关性将帮助工程师在井规划和作业过程中做出明智的岩石强度预测决策,并最佳地管理井筒稳定性。
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Efficient Wellbore Optimization Through Rock Property Analysis and Evaluation
There are numerous problems encountered during drilling such as wellbore instability, drilling mud weight estimation, as well as selecting good casing and bit for the drilling operations. It is therefore important to understand and accurately determine the strength of the rock in order to avoid these common drilling problems which are mostly encountered during well operations. It is of paramount importance to determine uniaxial compressive strength (UCS) from core and sonic log data so as to accurately predict rock strength for better well planning. In this work, we were able to obtain a correlation to determine UCS from data obtained from ten (10) wells in different locations in onshore Niger Delta using the regression analysis method. The correlation of UCS versus Poisson's ratio gave R2 value of 90.0%. The R2- value tending towards one (1) indicates that this model can be reliably used to predict ND-UCS and the p<0.05 shows that there is significant relationship between ND-UCS and Poisson's ratio. The model was validated with an entirely different well data and it predicted over 89% rock UCS data when compared to the actual rock UCS data. This study also provides an understanding of the variation in UCS and Poisson's ratio with depth for effective rock property analysis and evaluation. These correlations will help well engineers to make informed decisions on rock strength predictions during well planning and operations as well as manage wellbore stability optimally.
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