Cuttings Lifting Coefficient Model: A Criteria for Cuttings Lifting and Hole Cleaning Quality of Mud in Drilling Optimization

D. Jimmy, E. Wami, Michael Ifeanyi Ogba
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引用次数: 4

Abstract

In this study, the hole cleaning qualities of mud samples formulated with tigernut derivatives – starch and fibre – as additives were determined by adding drill cuttings as impurities and evaluating the Carrying Capacity Index (CCI) as well as Transport Index (TI) of the muds. Results of the analysis conducted for the mud properties showed that all the different mud properties but the pH of the mud evaluated of mud samples B, C1, C2, and C3 were slightly higher (albeit within the recommended values) than those of the control (standard) mud sample A. Using the results obtained from mud properties analysis and drilling operations data for the evaluation of the hole cleaning qualities, the following new expressions for optimum cuttings lifting ability (β) and cuttings lifting coefficient (β1), which gives criteria for cutting lifting in a wellbore were developed: β1 = 0.11519 [(1 − Cf)]−1(dp)−2.014. The higher the value of β1 greater than one, the better the hole cleaning ability of the mud and the lower the mud flowrate needed to achieve better hole cleaning for a given cutting particle size.
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岩屑举升系数模型:钻井中岩屑举升和井眼清洁质量优化的一种准则
在本研究中,通过加入钻屑作为杂质,并评估泥浆的承载指数(CCI)和输运指数(TI),确定了以虎坚果衍生物淀粉和纤维为添加剂配制的泥浆样品的井眼清洁质量。泥浆性质分析结果表明,泥浆样品B、C1、C2和C3除pH值外,其他泥浆性质均略高于对照(标准)泥浆样品a(尽管在推荐值范围内)。建立了最佳岩屑举升能力(β)和岩屑举升系数(β1)的新表达式:β1 = 0.11519[(1−Cf)]−1(dp)−2.014,给出了井筒中岩屑举升的标准。β1值越高(大于1),泥浆的井眼清洁能力越好,在一定切削粒度下,达到较好井眼清洁所需的泥浆流量越低。
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