基于深度学习方法的致密砂岩储层孔隙结构表征及其有效性

Gao-ren Li, Wei Zhang, Die Liu, Jing Li, Cheng Li, Jiaqi Li, Liang Xiao
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Hence, once we predicted mercury content under every Pc, pseudo-Pc curve can be synthetized by combining predicted mercury content and known Pc. Constructing pseudo-Pc curve was translated as predicting mercury content. To establish a reasonable model that can be used in development wells, where only conventional logging data was available, we analyzed relationships among mercury contents under every mercury injection pressure and geophysical logging data. This analysis was raised based on heat map of decision tree technique, and the experimental data of 115 core samples that drilled from Triassic Chang 8 Formation in Shunning Region was used. Finally, we found that SHg under 15th capillary pressure was heavily related to porosity and deep and shallow resistivity. Based on this perfect relationship, we established a model to predict 15thSHg from porosity and deep and shallow resistivity by using deep learning method of XGBoost. In this deep learning method, 92 clusters of core analysis data (accounting for 80.0% of the total), were used as training samples, and the rest 20.0% was retained as samples for verification. Meanwhile, relationship between SHgs under two adjacent mercury injection pressures was also closely related. Hence, after SHg under 15th Pc was predicted from conventional logging data, the other SHgs can be calculated by using step iterative method. In addition, considering the used input porosity in XGBoost was also difficult to be estimated based on statistical method, neutron, density, interval transit time (Δt) and delta natural gamma ray (ΔGR) were chosen as input parameters, and XGBoost was used to predict porosity from well logging data. Based on predicted porosity and deep and shallow resistivity, pseudo-Pc curves were consecutively synthetized to characterize pore structure of tight Chang 8 sandstone reservoirs. 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引用次数: 1

摘要

孔隙结构描述了宏观孔隙大小和微观孔隙连通性。它在很大程度上决定了地层质量和渗流能力,从而与渗透率有关。致密砂岩储层超低渗透通常受孔隙结构复杂、非均质性强的影响。孔隙结构表征对提高致密砂岩储层评价和有效性预测具有重要意义。由于在重点井中获得了大量的核磁共振测井资料,因此认为只有在探井中核磁共振测井才具有孔隙结构预测的价值。然而,由于核磁共振数据量的限制,在探井中建立的方法不能直接推广到开发井中。此外,核磁共振测井仅适用于含水层的孔隙结构表征,不能直接用于含油气储层。为了建立一种既适用于探井又适用于开发井的孔隙结构表征方法,以提高鄂尔多斯盆地东部顺宁地区三叠系长8组储层有效性评价和高质量储层识别,建立了一种基于深度学习方法的物探测井拟pc曲线合成技术。该技术是在对压汞毛细管压力曲线形态特征分析的基础上提出的。我们发现,在压汞实验中,所有岩心样品的压汞压力是相同的,在相同的Pc条件下,所有岩心样品的孔隙结构差异是由注入汞含量(SHg)决定的。因此,一旦我们预测了每个剖面下的汞含量,就可以将预测的汞含量与已知的剖面相结合,合成伪剖面曲线。拟pc曲线的构造转化为汞含量的预测。为了建立一个合理的模型,适用于只有常规测井资料的开发井,我们分析了各压汞压力下汞含量与地球物理测井资料之间的关系。基于决策树技术的热图,利用顺宁地区三叠系长8组115个岩心样品的实验数据,提出了上述分析。最后发现,15毛管压力下的SHg与孔隙度、深、浅电阻率密切相关。基于这种完美的关系,我们利用XGBoost的深度学习方法,建立了从孔隙度和深、浅电阻率两方面预测15thSHg的模型。在该深度学习方法中,核心分析数据的92个聚类(占总数的80.0%)作为训练样本,剩余的20.0%作为样本进行验证。同时,相邻两个压汞压力下SHgs的关系也密切相关。因此,在常规测井资料预测出15 Pc以下的地下震源后,可采用阶跃迭代法计算出其他地下震源。此外,考虑到XGBoost使用的输入孔隙度也难以用统计方法估计,选择中子、密度、层间传递时间(Δt)和δ自然伽马(ΔGR)作为输入参数,利用测井数据对孔隙度进行预测。在预测孔隙度和深、浅电阻率的基础上,连续合成拟pc曲线,表征长8致密砂岩储层孔隙结构。同时,计算了孔喉半径分布和孔结构评价参数,预测孔结构评价参数与岩心推导结果的对比表明,计算精度达到86.4%。此外,我们确定了两个孔喉半径截断点,将孔喉半径分为小、中、大孔喉三部分。分别计算了各孔喉尺寸的相对含量。提出了评价地层孔隙结构的有效性指标。建立了地层有效性指标与日产油量的关系,并将地层划分为3种类型。第一类和第二类地层是具有大量油气生产能力的有效地层,第三类地层是干燥地层。该方法和技术在改善顺宁地区长8组致密储层的表征和评价方面具有较好的应用价值,对类似性质储层的有效致密砂岩分布指示也具有一定的参考价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterization of Tight Sandstone Reservoir Pore Structure and Validity from Geophysical Logging Data by Using Deep Learning Method
Pore structure described the macroscopic pore size and microscopic pore connectivity. It heavily determined formation quality and seepage capacity, and thus associated with permeability. Generally, ultra-low permeability to tight sandstone reservoirs were always affected by complicated pore structure and strong heterogeneity. Characterizing pore structure was of great importance in improving tight sandstone reservoir evaluation and validity prediction. Nuclear magnetic resonance (NMR) logging was considered to be valuable in pore structure prediction only in exploration wells because plenty of NMR logging data was acquired in key wells. However, methods that established in exploration wells cannot be directly extended into development wells due to the limitation of quantity of NMR data. In addition, NMR logging was only usable in pore structure characterization in water saturated layers, it cannot be directly used in hydrocarbon-bearing reservoirs. In this study, to establish a widely applicable pore structure characterization method that can be used not only in exploration wells, but also available in development wells to improve formation validity evaluation and high-quality formation identification in Triassic Chang 8 Formation of Shunning Region, Eastern Ordos Basin, we established a technique to synthetize pseudo-Pc curve from geophysical logging data by using deep learning method. This technique was raised based on the morphological feature analysis of mercury injection capillary pressure curves. We found that the applied mercury injection pressures were the same for all core samples during mercury injection experiments, the pore structure difference for all core samples was determined by injected mercury content (SHg) under the same Pc. Hence, once we predicted mercury content under every Pc, pseudo-Pc curve can be synthetized by combining predicted mercury content and known Pc. Constructing pseudo-Pc curve was translated as predicting mercury content. To establish a reasonable model that can be used in development wells, where only conventional logging data was available, we analyzed relationships among mercury contents under every mercury injection pressure and geophysical logging data. This analysis was raised based on heat map of decision tree technique, and the experimental data of 115 core samples that drilled from Triassic Chang 8 Formation in Shunning Region was used. Finally, we found that SHg under 15th capillary pressure was heavily related to porosity and deep and shallow resistivity. Based on this perfect relationship, we established a model to predict 15thSHg from porosity and deep and shallow resistivity by using deep learning method of XGBoost. In this deep learning method, 92 clusters of core analysis data (accounting for 80.0% of the total), were used as training samples, and the rest 20.0% was retained as samples for verification. Meanwhile, relationship between SHgs under two adjacent mercury injection pressures was also closely related. Hence, after SHg under 15th Pc was predicted from conventional logging data, the other SHgs can be calculated by using step iterative method. In addition, considering the used input porosity in XGBoost was also difficult to be estimated based on statistical method, neutron, density, interval transit time (Δt) and delta natural gamma ray (ΔGR) were chosen as input parameters, and XGBoost was used to predict porosity from well logging data. Based on predicted porosity and deep and shallow resistivity, pseudo-Pc curves were consecutively synthetized to characterize pore structure of tight Chang 8 sandstone reservoirs. Meanwhile, pore throat radius distribution, and pore structure evaluation parameters were also calculated, comparison of predicted pore structure evaluation parameters and core derived results illustrated that calculation accuracy reached to 86.4%. In addition, we determined two pore throat radius cutoffs to classify pore throat radius into three parts, which represented small, intermediate and large pore throat sizes, separately. The relative contents of each type of pore throat sizes were calculated, separately. A parameter of formation validity indication was raised to evaluate formation pore structure. Relationship between formation validity indication and daily liquid production per meter was established, and formations were classified into three types. The first and second types of formations were effective formations that contained substantial hydrocarbon production capacity, and the third type of formation was dry. Our raised method and technique were well used to improve tight reservoirs characterization and evaluation in Chang 8 Formation of Shunning Region, and it would also be valuable in indicating the distribution of effective tight sandstones for formations with similar properties.
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