基于钻井数据自适应预测碳酸盐岩单轴抗压强度的梯度增强优化模型

IF 4.3 3区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY
Stephen Adjei, Ahmed Gowida, Salaheldin Elkatatny* and John Ojuu Oleka, 
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引用次数: 0

摘要

单轴抗压强度(UCS)是评价地下地层力学特性的重要岩土力学指标。虽然用于UCS估计的传统实验室测试是准确的,但它们既耗时又昂贵。机器学习的进步为使用实时数据进行UCS预测提供了更有效的选择。这项工作研究了三种类型的梯度增强机(GBMs)的预测能力:标准梯度增强、随机梯度增强和极端梯度增强(XGBoost)用于UCS预测。与依赖静态模型输入的传统机器学习方法不同,滞后技术应用于将早期深度的钻井深度数据作为输入特征,允许动态模型变化,并在实时获取新数据时提高预测精度。该数据集包括2056个钻井数据点,包括钻速(ROP)、泥浆泵送速率(GPM)、立管压力(SPP)、转速(RPM)、扭矩(T)和钻压(WOB),还有870个未见过的验证数据点。超参数优化显著提高了XGBoost的预测性能,实现了卓越的准确性,测试和验证数据集的误差指标最低。该技术为改善碳酸盐岩地层的实时UCS预测提供了巨大的潜力,提高了钻井效率,同时降低了井筒不稳定等风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized Gradient Boosting Models for Adaptive Prediction of Uniaxial Compressive Strength in Carbonate Rocks Using Drilling Data

Uniaxial compressive strength (UCS) is a critical geo-mechanical property used to assess the mechanical properties of subsurface formations. While the traditional laboratory tests for UCS estimation are accurate, they are time-consuming and costly. The advancements in machine learning offer a more efficient option for UCS prediction using real-time data. This work investigates the predictive ability of three types of Gradient Boosting Machines (GBMs): Standard Gradient Boosting, Stochastic Gradient Boosting, and eXtreme Gradient Boosting (XGBoost) for UCS prediction. Unlike conventional machine learning approaches, which depend on static model inputs, lagging techniques were applied where drilling depth data from earlier depths were used as input features, allowing for dynamic model changes and enhanced prediction accuracy as new data is acquired in real time. The data set included 2056 drilling data points, comprising rate of penetration (ROP), mud pumping rate (GPM), standpipe pressure (SPP), rotary speed (RPM), torque (T), and weight on bit (WOB), with an unseen validation data set of 870 points. Hyperparameter optimization significantly improved the prediction performance with XGBoost achieving superior accuracy, shown by the lowest error metrics across the test and validation data set. This technique offers significant potential for improving real-time UCS predictions in carbonate formations, enhancing drilling efficiency while reducing risks such as wellbore instability.

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来源期刊
ACS Omega
ACS Omega Chemical Engineering-General Chemical Engineering
CiteScore
6.60
自引率
4.90%
发文量
3945
审稿时长
2.4 months
期刊介绍: ACS Omega is an open-access global publication for scientific articles that describe new findings in chemistry and interfacing areas of science, without any perceived evaluation of immediate impact.
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