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Fracture facies estimation utilizing machine learning algorithm and Formation Micro-Imager(FMI)log
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作者 Hassan Bagheri Reza Mohebian 《Petroleum Research》 2025年第4期764-781,共18页
Natural open fractures(NOFs) in reservoir rocks are critical factors influencing permeability. Identifying these fractures and fractured zones typically involves analyzing core samples and image logs. However,core dat... Natural open fractures(NOFs) in reservoir rocks are critical factors influencing permeability. Identifying these fractures and fractured zones typically involves analyzing core samples and image logs. However,core data are limited topecific depths within the reservoir, and image log data are confined to a small number of wells. In this study, fracture facies in a carbonate reservoir(Kangan-Dalan Formation) were predicted using Formation Micro-Imager(FMI) logs, conventional well logs, and petrophysical parameters, with a machine learning algorithm. Initially, open fractures were identified in wells A and B using the FMI log. In well A, the open fractures exhibit an average dip of 61°, an azimuth of N79E, and a strike direction of N11W/S11E. In well B, the fractures have an average dip of 69°, an azimuth of N26E, and a strike direction of N64W/S64E. Subsequently, fracture density logs for wells A and B were calculated,with average values of 0.41 and 0.33, respectively. Conventional well logs, including density(RHOB),sonic(DT), and petrophysical parameters, specifically effective porosity(PHIE), were used as input data for a Multi-Resolution Graph-Based Clustering(MRGC) algorithm, which is one of the machine learning algorithms employed in this study. Additionally, a synthetic log called FLAG, derived from the fracture density log(with values of 0 and 1 indicating the presence or absence of fractures), was incorporated into the algorithm as an associated input log. This algorithm enabled the identification of fracture facies,representing open fractures or fractured zones, in well A. To evaluate the accuracy of the algorithm, the results obtained were compared with two other clustering algorithms: Ascendant Hierarchical Clustering(AHC) and Self-Organizing Maps(SOM). Well B was used as a blind test to validate the clustering model.In this test, the clustering algorithm was applied excluding the FLAG synthetic log derived from the FMI log. The results from well B demonstrated that the developed algorithm accurately identifies fracture facies in wells lacking image log and core data. The algorithm was subsequently extended to wells C and D, which lacked core or image log data. Fractured zones in these wells were successfully identified as fracture facies. Additionally, a two-dimensional map of fracture facies thickness was generated for the study area. The developed hybrid algorithm demonstrated strong potential for generalizing to other wells in the field, enabling fracture facies modeling in both 2D and 3D. 展开更多
关键词 Open fractures Fracture facies FMI image log mrgc method
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富县地区碳酸盐岩测井岩性识别方法 被引量:3
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作者 姜龙燕 杨斌 +1 位作者 王巍 刘璐 《天然气技术与经济》 2022年第2期22-27,共6页
为了解决鄂尔多斯盆地下古生界奥陶系马家沟组碳酸盐岩储层岩性类型复杂、变化快、难识别以及部分老井无测井解释剖面,地质研究人员无法快速有效判别岩性等问题,以富县地区马家沟组马五段为研究对象,分析了目前常用的岩性识别方法,通过... 为了解决鄂尔多斯盆地下古生界奥陶系马家沟组碳酸盐岩储层岩性类型复杂、变化快、难识别以及部分老井无测井解释剖面,地质研究人员无法快速有效判别岩性等问题,以富县地区马家沟组马五段为研究对象,分析了目前常用的岩性识别方法,通过取心资料确定了主要的岩石类型,结合碳酸盐岩中主要矿物的测井响应数值,得出了可采用光电吸收截面指数曲线与补偿密度曲线、补偿密度与补偿中子曲线两两包络的包络法与聚类分析—最小临近算法实现岩性解读的认识。研究结果表明:(1)包络法操作简便,能快速识别白云岩、石灰岩、石膏,尤其在含膏地层中优势明显,适用于生产中对岩性的预判,其操作关键点在于曲线左右刻度值的调整,其判别准确与否的关键在于曲线质量是否可靠;(2)聚类分析—最小临近算法结果更精确,其预测符合率高达92.31%,更适用于后期科研所需,但是该方法需要一定量的取心数据作为支撑;(3)目前上述两种方法在坍塌角砾岩的识别中都还存在着局限性,对于坍塌角砾岩的识别还需要借助成像测井以及地质认识来实现。 展开更多
关键词 鄂尔多斯盆地 富县地区 碳酸盐岩 岩性识别 包络法 无监督聚类 mrgc方法 KNN机器学习
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