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Prediction of total organic carbon at Rumaila oil field, Southern Iraq using conventional well logs and machine learning algorithms

机译:使用传统井日志和机器学习算法预测Rumaila油田总有机碳。

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Total organic carbon (TOC) is an important parameter for assessing the hydrocarbon potential of source rocks. The standard method for analysis of TOC is the Rock-Eval pyrolysis on cutting and core samples. The coring process is always expensive and time consuming. Therefore, researchers around the world focused on developing techniques to estimate TOC and other organic parameters from readily available well logs data that are almost available in all wells. In this study, we evaluated the use of three machine learning models namely, random forest (RF), rotation forest (rF), k nearest neighbors (KNN) to estimate TOC based on conventional well logs data. The well logs involved gamma ray, acoustic, density, neutron, and deep resistivity. The efficacy of the models was tested against the most widely used backpropagation artificial neutral network (BPANN) and support vector regression (SVR) models. North Rumaila oilfield in southern Iraq was taken as a case study. The models were trained and tested using data from two wells in the field, namely R-167 and R-172. The number of TOC measurements used for training and testing were 40 (R-167) and 18 (R-172), respectively. The efficacy of the used algorithms was evaluated using mean absolute error (MAE), root mean squared error (RMSE), and correlation of determination (R-2). The models are also visually compared using Taylor diagram and violin plot to distinguish the best performance model. Results indicated the KNN was the best followed by RF and then rF. The worst performance models were BPANN and SVR models. This study confirmed the ability of machine learning models for building efficient model for estimating TOC from readily available borehole logs data without the need for very expensive coring process.
机译:总有机碳(TOC)是评估源岩的烃潜力的重要参数。 TOC分析的标准方法是切割和核心样品上的岩石醇热解。取芯过程总是昂贵且耗时的。因此,世界各地的研究人员专注于开发从容易获得的井和其他有机参数的技能,几乎可以在所有井中获得几乎可用的数据。在这项研究中,我们评估了三种机器学习模型的使用即,随机森林(RF),旋转林(RF),K最近邻居(knn)基于传统的井日志数据来估算TOC。井原木涉及伽马射线,声学,密度,中子和深电阻率。测试模型的功效对最广泛使用的BackProjagation人工中性网络(BPANN)和支持向量回归(SVR)模型进行了测试。伊拉克南部的北方Rumaila油田是案例研究。使用来自字段中的两个井的数据进行培训并测试模型,即R-167和R-172。用于训练和测试的TOC测量的数量分别为40(R-167)和18(R-172)。使用平均绝对误差(MAE),根均方误差(RMSE)和确定的相关性评估二手算法的效果,并进行相关性(R-2)。使用泰勒图和小提琴图,在视觉上还可以在视觉上进行比较,以区分最佳性能模型。结果表明KNN是最佳的,然后是RF,然后是RF。最糟糕的性能模型是BPANN和SVR模型。本研究证实了机器学习模型的能力,用于构建高效模型,用于估计可用的钻孔日志数据,无需非常昂贵的芯片。

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