Statistical distribution of geomechanical properties and ‘Sweet Spots’ identification in part of the upper Bakken

Q1 Earth and Planetary Sciences Petroleum Research Pub Date : 2023-09-01 DOI:10.1016/j.ptlrs.2022.10.005
Nelson R.K. Tatsipie, James J. Sheng
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引用次数: 1

Abstract

Completions and Reservoir Quality are two key attributes that are used to characterize nonconventional hydrocarbon assets. This is because, for optimum exploitation of these unconventional assets, horizontal wells need to be drilled in “Sweet Spots” (i.e., regions where Completions and Reservoir Quality are both superior). One way to quantify these qualities is to use reservoir and geomechanical properties. These properties can be estimated on a location basis from well logs, and then mapped over terrain using geostatistical modeling. This study presents a ‘Sweet Spots’ identification workflow based on three performance indexes (Storage Potential Index, Brittleness Index, and Horizontal Stress Index) that can be used to quantify CQ and RQ. The performance indexes are computed from petrophysical property volumes (of Young's Modulus, Bulk Modulus, Shear Modulus, Poisson's Ratio, Minimum Horizontal Stress, Volume of Shale, Total Organic Carbon, Thickness, and Porosity) which are in turn computed from well logs and geostatistical simulation. In the end, the study offers a method to compare the predicted “Sweet Spots” against available production data via their correlation coefficient. The resulting reasonable formation property maps, the successful identification of ‘Sweet Spots’, and a correlation coefficient of 0.88 (between the predicted “Sweet Spots” and well production data) point to the potential of the proposed effort.

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巴肯上部部分地区地质力学性质的统计分布和“甜点”识别
完井和储层质量是用于表征非常规碳氢化合物资产的两个关键属性。这是因为,为了优化开发这些非常规资产,需要在“最佳点”(即完井和储层质量都很好的区域)钻探水平井。量化这些质量的一种方法是利用储层和地质力学特性。这些特性可以根据测井记录在位置基础上进行估计,然后使用地质统计建模绘制地形图。本研究提出了一个基于三个性能指数(存储潜力指数、脆性指数和水平应力指数)的“最佳点”识别工作流程,可用于量化CQ和RQ。性能指标是根据岩石物理性质体积(杨氏模量、体积模量、剪切模量、泊松比、最小水平应力、页岩体积、总有机碳、厚度和孔隙度)计算的,这些体积又是根据测井和地质统计模拟计算的。最后,该研究提供了一种方法,通过相关系数将预测的“甜蜜点”与可用的生产数据进行比较。由此产生的合理地层性质图、“甜蜜点”的成功识别以及0.88的相关系数(预测的“甜蜜点“和油井产量数据之间)表明了拟议工作的潜力。
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来源期刊
Petroleum Research
Petroleum Research Earth and Planetary Sciences-Geology
CiteScore
7.10
自引率
0.00%
发文量
90
审稿时长
35 weeks
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