首页> 外文期刊>Environmental earth sciences >The multiplicative inverse misfit correlation approach for depth correlation of porosity in reservoir modeling
【24h】

The multiplicative inverse misfit correlation approach for depth correlation of porosity in reservoir modeling

机译:储层建模中孔隙度深度相关的乘法逆失配相关方法

获取原文
获取原文并翻译 | 示例
           

摘要

Evaluating well-log and core-plug data to understand the heterogeneity of porosity in geologic formations is of utmost importance in reservoir studies. The well-log data and core-plug data are integrated in order to generate an accurate model describing the porosity distribution; however, these data exist at different scales and resolution, which necessitates scaling of one or both sets of the data. This study looked at the efficacy of using geostatistical techniques, in particular the likelihood method, to correlate data at different scales. The result was the development of a geostatistical scaling method combining variance, skewness, kurtosis and standard deviation by means of a misfit algorithm in conjunction with correlating the depth of the core-plug data within the well-log data through a scaling process in order to integrate porosity data. The geostatistical scaling method involves basic variogram models for scaling the computerized tomography (CT) plug data to well-log scale. Variance-based statistics were calculated within CT plug-size intervals, then a best fit for depth correlation determined. A new correlation algorithm, named the multiplicative inverse misfit correlation (MIMC) method, was formulated for accurate depth correlation. The application of the MIMC method identified the sampled depth enabling higher accuracy for correlations of core plugs or CT scans to the well-log depth and porosity. The MIMC method proved it has the capacity to correlate the depths of the CT data for each well, including depths within the determined uncertainty.
机译:在储层研究中,评估测井和岩心塞数据以了解地质构造中孔隙度的非均质性至关重要。测井数据和岩心塞数据被集成在一起,以生成描述孔隙度分布的准确模型。但是,这些数据以不同的比例和分辨率存在,因此有必要对一组或两组数据进行比例缩放。这项研究探讨了使用地统计技术(尤其是似然法)关联不同规模数据的功效。结果是开发了一种地统计缩放方法,该方法通过失配算法结合方差,偏度,峰度和标准偏差,并通过缩放过程关联了测井数据中岩心塞数据的深度,以便整合孔隙率数据。地统计缩放方法涉及基本的变异函数模型,用于将计算机断层扫描(CT)塞子数据缩放到测井规模。在CT塞子尺寸范围内计算基于方差的统计数据,然后确定最适合深度相关性的数据。提出了一种新的相关算法,称为乘法逆失配相关(MIMC)方法,用于精确的深度相关。 MIMC方法的应用确定了采样深度,从而使岩心塞或CT扫描与测井深度和孔隙度的相关性更高。 MIMC方法证明了它具有关联每个井的CT数据深度的能力,包括确定的不确定度之内的深度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号