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Automation of Electrofacies Identification-A Case for Digitalization

机译:电涂层自动化识别 - 一种数字化的案例

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The 21st century is a period of rapid advancement in technology and the ever adapting and perhaps proactive companies will be the companies of the future.Advancement in science and in this case 3D reservoir modelling requires the automation of repetitive and mundane tasks to liberate human resources for evaluations and actual problem solving.3D reservoir modelling is the digital representation of the subsurface in other to predict the behaviour of fluids in the reservoir,and a facies model is key to building a robust 3D reservoir model,as it provides the geometry and relationship of the reservoir sub units.The identification of facies in reservoirs as an input to building reservoir models is done using several data types including core data,seismic data,and well logs.This study focuses on the use of well logs in the identification of facies(electrofacies).Electrofacies are facies defined using a set of well-log responses that characterize a lithologic unit and distinguishes it from others.Standard Industry practice has established the use of gamma ray log signature as predictors of facies and it is this relationship that is explored in this study.In 3D reservoir modelling,the process of facies identification and painting the facies into discrete logs is a repetitive and sometimes harrowing process-especially in a field with several stacked reservoirs and well penetrations.This process takes up valuable time in 3D reservoir modelling and the monotony can also lead to errors that may have a significant impact on the facies model eventually built.At present,the automation available in modelling tools is only able to identify facies using absolute log values; this only discriminates between sandstone and shale in clastic reservoirs.In this study,I present an excel-based application that can’recognize’log shapes and as such,can identify up to five distinct facies: Channel Sands,Upper Shoreface,Lower Shoreface,Heteroliths and Shale in shallow marine settings.This application has been deployed to build a 3D static model for field development planning for the Debby field,Onshore Niger Delta.Significant results were achieved with execution of facies identification and discrete log creation taking less than 5% of the time it would typically take for manual electrofacies definition.This ensured more time availability for important and productive tasks such as uncertainty analysis,sensitivity analysis,and creation of more recovery scenarios.
机译:21世纪是技术的快速进步,曾经适应的,也许积极的公司将成为未来的公司。科学中的一个和平,在这种情况下,3D储层建模需要重复和平凡的任务的自动化来解放人力资源评估和实际问题解决.3D储库建模是其他用于预测储存器中的流体的行为的地下的数字表示,以及构建鲁棒3D储存模型的关键,因为它提供了几何形状和关系水库子单元。作为建筑物储层模型的输入中的水库相对的识别是使用若干数据类型完成的,包括核心数据,地震数据和良好的日志。本研究侧重于使用井日志在识别相(电涂层).Electrofacies是使用一组良好的对数响应定义的相形,该响应表征岩性单元并将其与OTH区分开来ERS.STANDARD行业实践已经建立了使用伽马射线日志签名作为相片的预测因素,这是本研究中探索的这种关系。在3D储层建模中,相片识别和将相形绘制成离散日志的过程是重复的有时令人痛苦的过程 - 特别是在具有几个堆叠的储存器和良好的渗透的领域。这个过程在3D储层建模中占据了宝贵的时间,并且单调也可以导致可能对相反地构建的相机模型产生重大影响的错误。目前,建模工具中可用的自动化只能使用绝对日志值识别相表;这只能在砂岩和碎屑储层中的页岩之间歧视。在这项研究中,我介绍了一种基于Excel的应用程序,可以确定的缺失的形状,因此可以识别五个不同的面部:通道砂,上侧面,下侧面,下侧面,下侧面,浅海洋设置中的异常和页岩。该应用程序已部署以构建Debby Field的现场开发规划的3D静态模型,onshore尼日尔Δ.通过执行相片识别和离散日志创建的不同识别结果达到不到5%通常需要手动电缩扫定义的时间。这确保了更多时间可用性,以获得重要和生产性任务,例如不确定分析,敏感性分析和更多恢复方案的创建。

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