Mohammadi Milad, Niri Mohammad Emami, Bahroudi Abbas, Soleymanzadeh Aboozar, Kord Shahin
School of Mining Engineering, College of Engineering, University of Tehran, Tehran, Iran.
Institute of Petroleum Engineering, School of Chemical Engineering, College of Engineering, University of Tehran, Tehran, Iran.
Sci Rep. 2025 Aug 22;15(1):30823. doi: 10.1038/s41598-025-16576-3.
The complex pore structure of carbonate rocks often results in scattered data in the relationship between formation resistivity factor (FRF) and porosity, posing significant challenges for accurate reservoir characterization. Although traditional methods have been useful, they exhibit limitations in reducing data variability particularly in capturing the critical interaction between the cementation factor and porosity. The Electrical Zone Indicator (EZI) represents a methodological advancement; however, greater precision is needed to achieve comprehensive rock typing resolution. In this study, Multi Resolution Graph-Based Clustering (MRGC) was integrated with the EZI rock typing method to improve FRF prediction accuracy in carbonate reservoirs. Well log data from three wells (A, B, and C) in a geologically complex carbonate reservoir in southwestern Iran were analyzed. To optimize data quality and consistency, rigorous preprocessing steps were applied, including depth shifting, data purification, and Principal Component Analysis (PCA). Using the MRGC method, five distinct electrofacies were identified and systematically incorporated into the refined EZI framework. Key petrophysical parameters tortuosity factor (a) and cementation exponent (m) were recalculated, yielding values in close agreement with established ranges for carbonate formations. The integration of MRGC with EZI led to substantial improvements in model performance, increasing the coefficient of determination (R²) for FRF estimation from 0.924 to 0.974. This enhanced workflow offers more accurate representation of petrophysical variability, improved precision in rock classification, and a robust framework for characterizing subsurface heterogeneities. The integration of advanced clustering techniques with electrical rock typing establishes a new benchmark for the classification of complex carbonate reservoirs, contributing to optimized hydrocarbon recovery strategies and more reliable reservoir management and fluid flow prediction.
碳酸盐岩复杂的孔隙结构常常导致地层电阻率因数(FRF)与孔隙度之间的数据分散,给准确的储层表征带来重大挑战。尽管传统方法曾发挥过作用,但它们在降低数据变异性方面存在局限性,尤其是在捕捉胶结因数与孔隙度之间的关键相互作用方面。电层指示器(EZI)代表了一种方法上的进步;然而,需要更高的精度来实现全面的岩石类型划分分辨率。在本研究中,基于多分辨率图的聚类(MRGC)与EZI岩石类型划分方法相结合,以提高碳酸盐岩储层中FRF预测的准确性。对伊朗西南部一个地质复杂的碳酸盐岩储层中三口井(A、B和C)的测井数据进行了分析。为了优化数据质量和一致性,应用了严格的预处理步骤,包括深度校正、数据净化和主成分分析(PCA)。使用MRGC方法,识别出了五个不同的电相,并系统地纳入了改进后的EZI框架。重新计算了关键岩石物理参数曲折度因数(a)和胶结指数(m),得到的值与碳酸盐岩地层的既定范围密切吻合。MRGC与EZI的结合使模型性能有了显著提升,将FRF估计的决定系数(R²)从0.924提高到了0.974。这种改进的工作流程能更准确地反映岩石物理变异性,提高岩石分类的精度,并为表征地下非均质性提供一个强大的框架。先进的聚类技术与电岩石类型划分的结合为复杂碳酸盐岩储层的分类建立了新的基准,有助于优化油气采收策略以及更可靠的储层管理和流体流动预测。