库尔德斯坦一个断裂碳酸盐岩油田的多尺度和多学科数据驱动储层特征描述

C. M. Sena, M. Musial, S. Quental, K. L. Canner, E. Funk, A. Nozari
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摘要

将传统的地下解释技术与先进的数据分析技术相结合,是更好地预测储层质量的重要基石,尤其是在异质和复杂的地质系统中。位于伊拉克库尔德斯坦地区北部、属于 Tawke 产量分成合同范围内的 Peshkabir 油气田就是这样一个异质系统。整个油气田的油井出油率差异很大,不能简单地与油井测得的裂缝密度联系起来。了解哪些裂缝重要以及哪些因素会影响储油层的出油率,对于最大限度地提高石油产量至关重要。碳酸盐岩储层除了广泛发育的裂缝网络外,还包括岩溶化的洼地带和热液白云岩。本文介绍了 Peshkabir 油田的地质概念模型,以及基于 Python 的数据科学技术的应用,以从钻井、测井和生产数据中确定储层可开采性的关键预测因素。我们证明,应用先进数据分析技术的主要优势在于,它能够在复杂的高维参数环境中识别模式和关联,而传统的解释方法通常一次只能比较两到三个参数。这种方法可以有效地整合动态和静态数据,使解释人员能够结合所有可用的见解,再加上领域知识,从而做出数据驱动的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiscale and multidisciplinary data-driven reservoir characterization of a fractured carbonate field in Kurdistan
The combination of traditional subsurface interpretation techniques with advanced data analytics is a key steppingstone for better predicting reservoir quality, especially in heterogeneous and complex geological systems. The Peshkabir oil and gas field, located in the north of the Kurdistan Region of Iraq and within the Tawke Production Sharing Contract, is one such heterogeneous system. Well oil rates vary significantly across the field and cannot be simply correlated to fracture densities measured at the wells. Understanding which fractures matter and what influences reservoir deliverability is a question of major importance for maximizing oil production. The carbonate reservoirs include karstified vuggy zones and hydrothermal dolostones, in addition to an extensively developed fractured network. This paper presents a geological conceptual model for the Peshkabir field, and an application of Python based data science techniques to identify key predictors of reservoir deliverability from drilling, logging and production data. We demonstrate that the major advantage of the application of advanced data analytics is that it can enable the recognition of patterns and associations in a complex, high-dimensional parameter environment whereas traditional interpretation methods typically only allow for the comparison of two or three parameters at a time. This method allows the integration of dynamic and static data effectively and empowers the interpreter to incorporate all the available insights which, coupled with domain knowledge, allows for data-driven decision-making.
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