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Formation lithology classification using scalable gradient boosted decision trees

机译:使用可伸缩梯度提升决策树的形成岩性分类

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The classification of underground formation lithology is an important task in petroleum exploration and engineering since it forms the basis of geological research studies and reservoir parameter calculations. Hence, there have recently been increased efforts to automate lithology classification by incorporating various data science tools and principles. In this regard, efforts were made recently to evaluate machine learning methods to classify formation lithology by using data from the Daniudui gas field (DGF) and Hangjinqi gas field (HGF), both located in China. Although the boosted ensemble learners utilized in the studies performed well, there is still scope for improvement with respect to the prediction metrics. Additionally, the issue of scalability of some of these algorithms is also of concern. Hence, building upon the success of these algorithms in the previous studies, we tap into the state of the art of scalable ensemble decision tree algorithms, in our study. Specifically, we applied recently developed gradient boosted decision tree (GBDT) systems, namely, XGBoost, LightGBM and CatBoost, after combining well log data obtained from DGF and HGF. We compare their performance with random forests (RFs), AdaBoost and gradient boosting machines (GBMs) which serve as a baseline. We evaluated the algorithms using metrics such as the micro average, macro average and weighted average of precision (Pr), recall (Re) and F1-score (F1) on the test set after hyperparameter tuning. In our analysis, among the applied algorithms, we found that LightGBM possessed the highest metrics. Our work identifies LightGBM and CatBoost as good first-choice algorithms for the supervised classification of lithology when utilizing well log data. (C) 2019 Elsevier Ltd. All rights reserved.
机译:地下形成岩性的分类是石油勘探和工程中的重要任务,因为它形成了地质研究研究和储层参数计算的基础。因此,最近通过纳入各种数据科学工具和原则,增加了自动化岩性分类的努力。在这方面,最近努力评估机器学习方法,通过使用位于中国的Daniudui气田(DGF)和Hangjinqi气田(HGF)的数据来分类形成岩性。虽然在研究中所采用的增强集合学习者效果良好,但对预测度量的改进仍有范围。另外,一些这些算法的可扩展性问题也是关注的。因此,在我们的研究中建立在先前研究中这些算法的成功,我们在我们的研究中挖掘可扩展集合决策树算法的艺术状态。具体而言,在组合从DGF和HGF获得的井数数据结合后,我们应用最近开发的梯度提升决策树(GBDT)系统,即XGBoost,LightGBM和Catboost。我们将其性能与随机森林(RFS),Adaboost和梯度升压机(GBMS)进行比较,作为基线。我们使用比例评估了诸如高分电压器调谐之后的测试集上的微平均值,宏观平均值和加权平均值(PR),召回(RE)和F1分数(F1)的微平均值,宏观平均值和加权平均值等算法。在我们的分析中,在应用的算法中,我们发现LightGBM拥有最高的指标。我们的工作将LightGBM和Catboost标识为良好的首选算法,以便在利用井日志数据时监督岩性的分类。 (c)2019 Elsevier Ltd.保留所有权利。

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