STUDY OF PERMEABILITY PREDICTION USING HYDRAULIC FLOW UNIT (HFU) AND MACHINE LEARNING METHOD IN “BSH” FIELD

Babas Samudera Hafwandi, D. Irawan, A. Yasutra
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Abstract

In this study, Decision Tree, Gradient Boosting, AdaBoost, Random Forest, Support Vector Machines, and K-Nearest Neighbor Machine Learning model are presented that use log and core data available as the basis for permeability prediction. The results were then compared to previously available method, namely Hydraulic Flow Unit (HFU) based on MAE and RMSE Value. The approach was taken by considering correlation relationships between existing log data in predicting permeability values. Three correlations, namely Spearman, Pearson, and Kendall, will be used to determine the relationship between existing log data and permeability. The machine learning model is then compared with the Hydraulic Flow Unit (HFU) Method in predicting the permeability value. The Novelty of this Machine Learning Model is to be able to predict permeability value, to solve the problem of accuracy using the existing method, and to save reasonable time to obtain permeability value by coring in the laboratory by utilizing standard computer available.
基于水力流量单元(hfu)和机器学习方法的bsh领域渗透率预测研究
在这项研究中,提出了决策树、梯度增强、AdaBoost、随机森林、支持向量机和k -最近邻机器学习模型,这些模型使用可用的测井和岩心数据作为渗透率预测的基础。然后将结果与先前可用的方法进行比较,即基于MAE和RMSE值的水力流量单元(HFU)。该方法在预测渗透率时考虑了现有测井资料之间的相关关系。将使用Spearman、Pearson和Kendall三种相关性来确定现有测井数据与渗透率之间的关系。然后将机器学习模型与水力流量单元(HFU)方法在预测渗透率值方面进行了比较。该机器学习模型的新颖之处在于能够预测渗透率值,解决了现有方法的精度问题,并且利用现有的标准计算机节省了实验室取心获得渗透率值的合理时间。
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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