TOC content prediction of organic-rich shale using the machine learning algorithm comparative study of random forest, support vector machine, and XGBoost
编号:603 访问权限:私有 更新:2023-04-08 15:33:50 浏览:277次 张贴报告

报告开始:2023年05月06日 08:00(Asia/Shanghai)

报告时间:0min

所在会场:[SP] 张贴报告专场 [SP-2-1] 2、地球化学

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摘要
The total organic carbon (TOC) content of organic-rich shale is a key parameter for screening the potential source rocks and sweet spots of shale oil/gas. Traditional methods of determining the TOC content, such as the geochemical experiments and the empirical mathematical regression method, are either high cost and low-efficiency, or universally non-applicable and low-accuracy. In this study, we propose three machine learning techniques to predict the TOC content using the well logs and their performance are compared. First, the Decision Tree algorithm is used to identify the optimal set of well logs from a total of 15 commonly used well logs, and three machine learning algorithms including random forest (RF), support vector regression (SVR), and XGBoost are used to predict the TOC content of organic-rich shale from the optimal well log set. Then, a total of 816 data points of well logs data and TOC content data collected from five different shale formations are used to train and test above three models. Finally, the three models are used to predict the unseen TOC content data from Shahejie shale. Result of research shows that the RF provides the best prediction for the TOC content, with R2=0.9141, RMSE=0.329, and MAE=0.252, followed by the XGBoost, while the SVR gives the lowest predictive accuracy. Nevertheless, all three models overperform the traditional Schmoker gamma-ray log method, multiple linear regression method and ΔlgR method.
 
关键词
TOC; Random forest; Support vector machine; XGBoost; Organic-rich shale
报告人
孙江涛
西安石油大学

稿件作者
孙江涛 西安石油大学
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重要日期
  • 会议日期

    05月05日

    2023

    05月08日

    2023

  • 03月31日 2023

    初稿截稿日期

  • 05月25日 2023

    注册截止日期

主办单位
青年地学论坛理事会
中国科学院青年创新促进会地学分会
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武汉大学
中国科学院精密测量科学与技术创新研究院
中国地质大学(武汉)
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