Hyungjoo Lee, Alexander M. Mitkus, Andrew Pare, Kenneth McCarthy, Marc Willerth, Paul Reynerson, Tannor Ziehm, Timothy Gee
{"title":"A New Workflow for Estimating Reservoir Properties With Gradient Boosting Model and Joint Inversion Using MWD Measurements","authors":"Hyungjoo Lee, Alexander M. Mitkus, Andrew Pare, Kenneth McCarthy, Marc Willerth, Paul Reynerson, Tannor Ziehm, Timothy Gee","doi":"10.30632/pjv65n2-2024a5","DOIUrl":null,"url":null,"abstract":"Triple-combo logs are important measurements for estimating geological, petrophysical, and geomechanical properties. Unfortunately, wireline and advanced logging-while-drilling (LWD) logs are typically dropped from the formation evaluation plan for unconventional wells due to economic constraints or borehole instability risks. Available measurements are typically measurement-while-drilling (MWD) gamma ray (GR) logs, along with surface measurements such as weight on bit (WOB), rate of penetration (ROP), torque, rotation per minute (RPM), and differential pressure. The development of a robust and rapid model for predicting reservoir properties using this limited data set would be of high value for geological evaluation. Estimating such properties is a challenging task due to the nonlinear relationship between the available log data and unknown reservoir properties. A novel workflow that combines two sequential models is presented. First is a machine-learning (ML) algorithm to predict triple-combo logs from drilling dynamics and GR logs. To train the ML algorithm, well logs obtained from multiple wells located in the Eagle Ford and Permian Basins are scrutinized to identify important features. This process includes depth shifting, outlier detection, and feature selection, which allows for strategic hyperparameter tuning. Several regression algorithms are investigated, and it is found that gradient boosting algorithms yield superior prediction performance. Unlike random forest methods, boosting algorithms train predictors sequentially, each trying to correct its predecessor. After triple-combo logs are predicted from MWD logs, a physics-based joint inversion model is applied to estimate various reservoir properties. The trained model is deployed on a blind test well, and the predicted logs show excellent agreement compared to the corresponding triple-combo measurements. The multimineral inversion using predicted triple-combo logs yields a geologic model that is validated with elemental capture spectroscopy (ECS) measurements. Additionally, reconstructed logs from the forward model closely match measured logs by minimizing the cost function. Therefore, real-time estimated geological, petrophysical, and geomechanical properties can reveal complex geologic information and be used to mitigate uncertainty related to drilling optimization, reservoir characterization, development planning, and reserve estimation. Using the MWD logs to predict triple-combo logs followed by a joint inversion is an innovative approach for geological evaluation with a limited data set. The developed workflow can successfully provide (1) geologic lithofacies identification and rock typing, (2) more confidence in real-time drilling operation, (3) reservoir properties prediction, (4) missing log imputations and pseudo-log generation with forward modeling, (5) guidance for future logging and perforation, (6) reference for seismic quantitative interpretation (QI) and well tie, and (7) potentially massive computation time saving from days to minutes.","PeriodicalId":170688,"journal":{"name":"Petrophysics – The SPWLA Journal of Formation Evaluation and Reservoir Description","volume":"504 2","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-04-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Petrophysics – The SPWLA Journal of Formation Evaluation and Reservoir Description","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.30632/pjv65n2-2024a5","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Triple-combo logs are important measurements for estimating geological, petrophysical, and geomechanical properties. Unfortunately, wireline and advanced logging-while-drilling (LWD) logs are typically dropped from the formation evaluation plan for unconventional wells due to economic constraints or borehole instability risks. Available measurements are typically measurement-while-drilling (MWD) gamma ray (GR) logs, along with surface measurements such as weight on bit (WOB), rate of penetration (ROP), torque, rotation per minute (RPM), and differential pressure. The development of a robust and rapid model for predicting reservoir properties using this limited data set would be of high value for geological evaluation. Estimating such properties is a challenging task due to the nonlinear relationship between the available log data and unknown reservoir properties. A novel workflow that combines two sequential models is presented. First is a machine-learning (ML) algorithm to predict triple-combo logs from drilling dynamics and GR logs. To train the ML algorithm, well logs obtained from multiple wells located in the Eagle Ford and Permian Basins are scrutinized to identify important features. This process includes depth shifting, outlier detection, and feature selection, which allows for strategic hyperparameter tuning. Several regression algorithms are investigated, and it is found that gradient boosting algorithms yield superior prediction performance. Unlike random forest methods, boosting algorithms train predictors sequentially, each trying to correct its predecessor. After triple-combo logs are predicted from MWD logs, a physics-based joint inversion model is applied to estimate various reservoir properties. The trained model is deployed on a blind test well, and the predicted logs show excellent agreement compared to the corresponding triple-combo measurements. The multimineral inversion using predicted triple-combo logs yields a geologic model that is validated with elemental capture spectroscopy (ECS) measurements. Additionally, reconstructed logs from the forward model closely match measured logs by minimizing the cost function. Therefore, real-time estimated geological, petrophysical, and geomechanical properties can reveal complex geologic information and be used to mitigate uncertainty related to drilling optimization, reservoir characterization, development planning, and reserve estimation. Using the MWD logs to predict triple-combo logs followed by a joint inversion is an innovative approach for geological evaluation with a limited data set. The developed workflow can successfully provide (1) geologic lithofacies identification and rock typing, (2) more confidence in real-time drilling operation, (3) reservoir properties prediction, (4) missing log imputations and pseudo-log generation with forward modeling, (5) guidance for future logging and perforation, (6) reference for seismic quantitative interpretation (QI) and well tie, and (7) potentially massive computation time saving from days to minutes.
三重组合测井是估算地质、岩石物理和地质力学属性的重要测量手段。遗憾的是,由于经济限制或井眼不稳定风险,非常规油井的地层评估计划通常不包括有线和先进的随钻测井(LWD)测井。可用的测量方法通常是边钻井边测量(MWD)伽马射线(GR)测井,以及地面测量,如钻头重量(WOB)、穿透率(ROP)、扭矩、每分钟转速(RPM)和压差。利用这些有限的数据集,开发一个稳健、快速的储层属性预测模型,对地质评估具有很高的价值。由于可用测井数据与未知储层属性之间存在非线性关系,因此估算此类属性是一项极具挑战性的任务。本文介绍了一种结合两种连续模型的新型工作流程。首先是一种机器学习(ML)算法,用于根据钻井动态和 GR 测井曲线预测三重组合测井曲线。为了训练 ML 算法,对从位于鹰福特盆地和二叠纪盆地的多口油井获得的测井曲线进行了仔细检查,以确定重要特征。这一过程包括深度移动、离群点检测和特征选择,从而对超参数进行战略性调整。对几种回归算法进行了研究,发现梯度提升算法的预测性能更优越。与随机森林方法不同的是,提升算法是按顺序训练预测器,每个预测器都会尝试修正前一个预测器。从 MWD 测井曲线预测出三重组合测井曲线后,应用基于物理的联合反演模型来估计各种储层属性。将训练有素的模型应用于盲测井,预测的测井结果与相应的三重组合测井结果显示出极好的一致性。使用预测的三重组合测井结果进行多矿物反演,可以得到一个地质模型,该模型与元素捕获光谱(ECS)测量结果进行了验证。此外,通过最小化成本函数,前向模型重建的测井与测量测井非常匹配。因此,实时估算的地质、岩石物理和地质力学属性可以揭示复杂的地质信息,并用于减轻与钻井优化、储层特征描述、开发规划和储量估算相关的不确定性。利用 MWD 测井预测三重组合测井,然后进行联合反演,是利用有限数据集进行地质评估的一种创新方法。所开发的工作流程可成功提供:(1)地质岩性识别和岩石分型;(2)增强实时钻井操作的信心;(3)储层属性预测;(4)缺失测井推算和利用前向建模生成伪测井;(5)为未来测井和射孔提供指导;(6)为地震定量解释(QI)和井系提供参考;(7)可将大量计算时间从数天节省到数分钟。