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Permeability prediction from mercury injection capillary pressure curves by partial least squares regression method in tight sandstone reservoirs

机译:近距离砂岩储层中偏最小二乘回归方法的汞注射毛细压力曲线的渗透性预测

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摘要

Permeability is an essential petrophysical parameter for reservoir modeling, reservoir classification, and productivity prediction in tight sandstone reservoirs. In this study, multiple parameters are extracted from the mercury injection capillary pressure (MICP) curves and the degree of multicollinearity between these parameters is analyzed. The partial least squares regression (PLSR) method is used for establishing the permeability prediction model and the optimal number of latent variables of the model is determined by the leave-one-out cross-validation (LOOCV) method. A comparison of the existing empirical models, the permeability prediction model by ordinary least square (OLS) method, and the permeability prediction model by PLSR method based on the MICP curves indicates that the permeability prediction model by PLSR method is superior to the other models for tight sandstone reservoirs.
机译:渗透性是用于储层建模,水库分类和紧身砂岩储层生产力预测的必要岩石物理参数。 在该研究中,从汞注射毛细管压力(MICP)曲线中提取多个参数,并分析这些参数之间的多色性度。 部分最小二乘回归(PLSR)方法用于建立渗透性预测模型,并且通过休假 - 单交叉验证(LOOCV)方法确定模型的潜变量的最佳数量。 现有经验模型的比较,普通最小二乘(OLS)方法的渗透率预测模型以及基于MICP曲线的PLSR方法的渗透预测模型表明PLSR方法的渗透预测模型优于其他模型 紧砂岩水库。

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