Data-Driven Analysis of Natural Gas EOR in Unconventional Shale Oils

C. Temizel, Karthik Balaji, C. H. Canbaz, Yildiray Palabiyik, Raul Moreno, M. Rabiei, Zifu Zhou, R. Ranjith
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引用次数: 4

Abstract

Due to complex characteristics of shale reservoirs, data-driven techniques offer fast and practical solutions in optimization and better management of shale assets. Developments in data-driven techniques enable robust analysis of not only the primary depletion mechanisms, but also the enhanced oil recovery in unconventionals such as natural gas injection. This study provides a comprehensive background on application of data-driven methods in the O&G industry, the process, methodology and learnings along with examples of data-driven analysis of natural gas injection in shale oil reservoirs through the use of publicly-available data. Data is obtained and organized. Patterns in production data are analyzed using data-driven methods to understand key parameters in the recovery process as well as the optimum operational strategies to improve recovery. The complete process is illustrated step-by-step for clarity and to serve as a practical guide for readers. This study also provides information on what other alternative physics-based evaluation methods will be able to offer in the current conditions of data availability and the understanding of physics of recovery in shale oil assets together with the comparison of outcomes of those methods with respect to the data-driven methods. Thereby, a thorough comparison of physics-based and data-driven methods, their advantages, drawbacks and challenges are provided. It has been observed that data organization and filtering take significant time before application of the actual data-driven method, yet data-driven methods serve as a practical solution in fields that are mature enough to bear data for analysis as long as the methodology is carefully applied. The advantages, challenges and associated risks of using data-driven methods are also included. The results of data-driven methods illustrate the advantages and disadvantages of the methods and a guideline for when to use what kind of strategy and evaluation in an asset. A comprehensive understanding of the interactions between key components of the formation and the way various elements of an EOR process impact these interactions, is of paramount importance. Among the few existing studies on the use of data-driven method for natural gas injection in shale oil, a comparative approach including the physics-based methods is included but they lack the interrelationship between physics-based and data-driven methods as a complementary and a competitor within the era of rise of unconventionals. This study closes the gap and serves as an up-to-date reference for industry professionals.
非常规页岩油天然气EOR数据驱动分析
由于页岩储层的复杂特性,数据驱动技术为优化和更好地管理页岩资产提供了快速实用的解决方案。数据驱动技术的发展不仅可以对主要的枯竭机制进行可靠的分析,还可以提高非常规油气(如天然气注入)的采收率。本研究提供了数据驱动方法在油气行业应用的全面背景、过程、方法和经验,以及通过使用公开数据对页岩油储层天然气注入进行数据驱动分析的实例。获取和组织数据。使用数据驱动的方法分析生产数据模式,以了解采收率过程中的关键参数,以及提高采收率的最佳操作策略。为了清晰,完整的过程一步一步地说明,并作为读者的实用指南。该研究还提供了在当前数据可用性条件下,其他基于物理的评估方法能够提供的信息,以及对页岩油资产开采物理的理解,以及这些方法与数据驱动方法的结果比较。因此,对基于物理的方法和数据驱动的方法进行了全面的比较,并给出了它们的优点、缺点和挑战。已经观察到,在实际应用数据驱动方法之前,数据组织和过滤需要花费大量时间,但数据驱动方法在足够成熟的领域中是一种实用的解决方案,只要仔细应用该方法,就可以承受数据进行分析。还包括使用数据驱动方法的优势、挑战和相关风险。数据驱动方法的结果说明了这些方法的优点和缺点,并为何时在资产中使用哪种策略和评估提供了指导。全面了解地层关键组分之间的相互作用,以及提高采收率过程中各种因素对这些相互作用的影响方式,是至关重要的。在现有的几项关于使用数据驱动方法在页岩油中注入天然气的研究中,包括了一种基于物理方法的比较方法,但它们缺乏物理方法和数据驱动方法之间的相互关系,在非常规技术兴起的时代,它们是互补的,也是竞争的。这项研究缩小了差距,并为行业专业人士提供了最新的参考。
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