期刊文献+

数据挖掘方法在测井岩性识别中的应用 被引量:21

Application of data mining method in lithology identification using well log
在线阅读 下载PDF
导出
摘要 测井岩性识别是油气藏勘探开发的重要基础工作。随着计算机技术的发展,数据挖掘方法越来越多地应用于岩性识别以提高预测准确性。数据挖掘方法可归纳为多元统计算法和智能性算法两大类,其中多元统计算法包括主成分分析、判别分析,智能性算法有神经网络、决策树、支持向量机。目前多元统计算法在测井岩性识别中应用广泛,智能性算法的应用尚处于发展阶段。基于大量文献调研的成果,概述了多元统计算法的原理及应用现状,重点梳理智能性算法的理论和优势,提出在应用智能性算法时需要将测井数据预处理,包括测井参数选择、测井数据归一化和降维。在此基础上,通过实例验证了智能性算法的应用效果,认为这是测井岩性识别领域今后的发展方向。 Logging lithology identification is an important foundation work for oil and gas reservoir exploration and development.With the development of computer technology, data mining methods are increasingly applied to lithology identification to improve prediction accuracy. Data mining methods can be summarized into two categories: multivariate statistical algorithms and intelligent algorithms. Multivariate statistical algorithm includes principal component analysis and discriminant analysis. Intelligent algorithm includes neural networks, decision trees, and support vector machines. At present, multivariate statistical algorithms are widely used in logging lithology identification, and the application of intelligent algorithms is still in the development stage. Based on the results of a large number of literature research, the principle and application status of multivariate statistical algorithms are summarized,and the theory and advantages of intelligent algorithms are summarized. It is proposed that the logging data needs to be preprocessed when applying the intelligent algorithm, including logging parameter selection, logging data normalization and logging data dimensionality reduction. On this basis, the application of intelligent algorithm is verified by examples as the future development direction of logging lithology identification.
作者 李政宏 刘永福 张立强 赵海涛 陈曦 李昊东 LI Zhenghong;LIU Yongfu;ZHANG Liqiang;ZHAO Haitao;CHEN Xi;LI Haodong(School of Geosciences,China University of Petroleum,Qingdao 266580,China;Research Institute of Exploration and Development,Tarim Oilfield Company,PetroChina,Korla 841000,China;Imperial College London,London SW72AZ,U.K.;No.2 Oil Production Plant,Dagang Oilfield Company,PetroChina,Tianjin 061103,China)
出处 《断块油气田》 CAS CSCD 北大核心 2019年第6期713-718,共6页 Fault-Block Oil & Gas Field
基金 中科院战略先导科技专项“深层碎屑岩储层发育机理与分布规律”(XDA14010202) 国家科技重大专项课题“深层-超深层油气成藏过程与勘探新领域”(2017ZX05008-004) 中国石油天然气股份有限公司重大科技专项“塔里木深层油气高效勘探开发理论及关键技术”(2018E-1801)
关键词 岩性识别 数据挖掘 多元统计算法 智能性算法 测井数据 lithology identification data mining multivariate statistical algorithm intelligent algorithm logging data
  • 相关文献

参考文献21

二级参考文献296

共引文献356

同被引文献302

引证文献21

二级引证文献146

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部