EVALUATING THE IMPACT OF PETROPHYSICAL IMAGES PARAMETERIZATION IN DATA ASSIMILATION FOR UNCERTAINTY REDUCTION

Ricardo Vasconcellos Soares, H. Formentin, C. Maschio, D. Schiozer
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Abstract

Parameterization is a crucial step during uncertainty reduction of reservoir properties using dynamic data. It establishes the search space based on prior knowledge of the model and can have a significant influence on the final response. A less-appropriate parameterization might fail to have a reasonable representation of the reservoir and lead to models unable to predict the correct reservoir characteristics. Parameterization of petrophysical images (as facies, porosities, and permeabilities) plays an essential role during data assimilation processes due to the strong influence in fluid flow in the porous media. This work shows how important the parameterization of petrophysical images is and how a less-appropriate parameterization can affect history-matching and uncertainty reduction process. Using a benchmark case, we compare two parameterization techniques, one capable of treating all blocks in the model (distance-dependent covariance localization), which is considered more appropriate, and one that considers a group of blocks under the same update rule (zonation) (less-appropriate). Results show that parameterization of petrophysical images has a high impact on the final response, and a less-appropriate parameterization, as the zonation, can generate higher data mismatches and fail to represent the real reservoir response. The analysis carried in this work quantifies and qualifies the impact of the parameterization of the petrophysical images in the data assimilation for the uncertainty reduction process.
评价岩石物理图像参数化在数据同化中降低不确定性的影响
参数化是利用动态数据降低储层物性不确定性的关键步骤。它根据模型的先验知识建立搜索空间,对最终的响应有很大的影响。不适当的参数化可能无法合理地表示储层,并导致模型无法预测正确的储层特征。岩石物性图像(如相、孔隙度和渗透率)的参数化在数据同化过程中起着至关重要的作用,因为多孔介质中的流体流动具有很强的影响。这项工作表明了岩石物理图像参数化的重要性,以及不合适的参数化如何影响历史匹配和减少不确定性的过程。使用基准测试案例,我们比较了两种参数化技术,一种能够处理模型中的所有块(距离相关协方差定位),这被认为是更合适的,另一种能够考虑相同更新规则下的一组块(分区)(不太合适)。结果表明,岩石物理图像的参数化对最终响应有很大的影响,而参数化不当(如分带)会产生更高的数据不匹配,不能代表真实的储层响应。本工作中进行的分析量化和定性了岩石物理图像参数化在数据同化过程中对不确定性降低过程的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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