A Production-Allocation Method for Two-Zone Downhole Commingling in Semi-Intelligent Oil Wells

D. Olabimtan, K. Lawal, S. Owolabi, O. T. Mumuni, O. O. Omion, M. Jimkuta, A. M. Dimari, H. Okeke, U. Obinna-Ewuzie, B. Mmata, M. Onyekonwu
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Abstract

Downhole commingling is a production-optimization method for producing multiple reservoirs (zones) via a single wellbore. It offers cheap exploitation of small reservoirs that would have remained stranded for uneconomic offtake rates and recovery. Although this method reduces development costs and environmental footprints, production allocation is a concern, especially in the absence of intelligent completion. Here, an intelligent commingling employs active inflow control valves (ICV) across individual zones. Nevertheless, this ideal scenario of full intelligence is not always available in practice. Considering the opportunities and challenges of stranded hydrocarbon resources amid tightening global energy supply and drive for cleaner fuel, this paper considers semi-intelligent commingled production (SICP) as an enabler for production acceleration. An SICP has a permanent downhole gauge for real-time pressure and temperature measurements but, unlike its intelligent counterpart, SICP lacks ICVs for zonal surveillance and control. We develop a fit-for-purpose method and workflow for back-allocation in a two-zone SICP. It is a semi-empirical approach premised on pressure-volume-temperature (PVT) characterization. Different mixing proportions of fluid samples from target contributing zones are baselined in terms of compositions and aggregate properties. These same properties of commingled stream are monitored over time to back-allocate produced gas, oil and water phases. Unlike production logging and conventional fingerprinting that require frequent well re-entry and large spectrum of fluid components respectively, our method is cheap and minimizes well re-entry and its associated risks. Specifically, we exploit C1, C7+, and salinity (Cl−) as markers to uniquely characterize the gas, oil and water phases of individual zones, respectively. Given the challenges posed by highly biodegraded oil reservoirs and reservoirs with similar PVT properties, we propose augmenting our back-allocation method with the use of biomarkers from saturate and aromatic fractions of the oil in such cases.
半智能油井井下两层混井产量分配方法
井下混采是一种通过单井眼开采多个储层(层)的生产优化方法。它提供了小型油藏的廉价开采,这些油藏原本会因不经济的采收率和采收率而搁浅。虽然这种方法降低了开发成本和环境足迹,但生产分配是一个问题,特别是在没有智能完井的情况下。在这里,智能混合在各个层间使用主动流入控制阀(ICV)。然而,这种完全智能的理想场景在实践中并不总是可行的。考虑到在全球能源供应趋紧和清洁燃料的驱动下,搁浅碳氢化合物资源的机遇和挑战,本文认为半智能混合生产(SICP)是加速生产的推手。SICP具有用于实时压力和温度测量的永久性井下仪表,但与智能同类产品不同的是,SICP缺乏用于层间监视和控制的icv。我们开发了一种适合于两区SICP的反向分配方法和工作流程。这是一种以压力-体积-温度(PVT)表征为前提的半经验方法。对目标贡献带流体样品的不同混合比例进行了成分和团聚体性质的基线分析。随着时间的推移,对混合流的这些特性进行监测,以重新分配产出的气、油和水相。与生产测井和传统指纹识别不同,前者需要频繁回井,后者需要大量流体成分,而我们的方法成本低廉,并将回井及其相关风险降至最低。具体来说,我们利用C1、C7+和盐度(Cl−)作为标记,分别独特地表征了单个区域的气相、油相和水相。考虑到高度生物降解油藏和具有类似PVT性质的油藏所带来的挑战,我们建议在这种情况下使用来自油的饱和和芳烃馏分的生物标志物来增强我们的反向分配方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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