首页 | 本学科首页   官方微博 | 高级检索  
     检索      

基于主成分分析的极限学习机方法开展杂卤石识别
引用本文:陈科贵,李进,陈愿愿,王刚.基于主成分分析的极限学习机方法开展杂卤石识别[J].盐湖研究,2017,25(4):8-13.
作者姓名:陈科贵  李进  陈愿愿  王刚
作者单位:西南石油大学地球科学与技术学院,四川成都 610500,西南石油大学地球科学与技术学院,四川成都 610500,川庆钻探工程有限公司地球物理勘探公司,四川成都 610213,中国石油新疆油田分公司勘探开发研究院,新疆 克拉玛依 834000
基金项目:国家自然科学基金项目“四川盆地油钾兼探的地球物理评价方法研究”(41372103);国家重点基础研究发展计划项目“四川三叠纪古特提斯海盆钾分布、评价研究”(2011CB403002)资助
摘    要:川中地区岩性复杂,杂卤石周围广泛发育硬石膏、岩盐和其它非钾盐矿物,常规测井解释方法很难准确识别杂卤石。以极限学习机理论、主成分分析方法和测井解释为基础,把主成分分析得到的影响杂卤石识别的主变量(测井曲线)作为输入,建立极限学习机(PCA-ELM)杂卤石的精确识别模型,对比川中地区录井结果,PCA-ELM的杂卤石识别正确率达到90.74%;再以不同岩石在测井曲线上的响应特征为基础,建立杂卤石分类识别模型,分类识别正确率达到89.56%。与常规测井解释方法相比,具有速度快、操作简单、准确率高等特点。结果表明,在四川盆地钾盐勘探中PCA-ELM法是一种值得推广使用的方法。

关 键 词:杂卤石  主成分分析  测井响应  极限学习机  分类识别
收稿时间:2017/2/18 0:00:00
修稿时间:2017/2/26 0:00:00

Based on the Principal Component Analysis and the Extreme Learning Machine method to identify the polyhalite
Chen Kegui,Li Jin,Chen Yuanyuan and Wang Gang.Based on the Principal Component Analysis and the Extreme Learning Machine method to identify the polyhalite[J].Journal of Salt Lake Research,2017,25(4):8-13.
Authors:Chen Kegui  Li Jin  Chen Yuanyuan and Wang Gang
Institution:School of Geoscience and Technology,Southwest Petroleum University,Chengdu,610500,China,School of Geoscience and Technology,Southwest Petroleum University,Chengdu,610500,China,Geophysical Exploration Company,Chuanqing Drilling Engineering Company Limited,Chengdu,610213,China and Research Institute of Exploration and Development,PetroChina Xinjiang Oilfield Company,Karamay,834000,China
Abstract:The lithology is complex in middle Sichuan region, and anhydrite, rock salt and other non-potash minerals have widely developed around the polyhalite so that it is difficult to accurately identify the polyhalite by conventional logging interpretation method. Based on the theory of Extreme Learning Machine, Principal Component Analysis method and logging interpretation methods, this paper creates extreme learning machine model with the input of main variables which have an influence on polyhalite recognition and discriminates the polyhalite reservoirs in middle Sichuan region. Compared with logging data, the accuracy rate of the discrimination results reaches 90.54%. The new model shows the accuracy rate reaches 89.56% to classify the polyhalite reservoirs. Compared with the conventional logging interpretation method, it has the characteristics of fast speed, simple operation and high accuracy. This study demonstrates that PCAELM is worthy of further study and widely use in potassium exploration of Sichuan Basin.
Keywords:Polyhalite  Principal Component Analysis  Logging response  Extreme Learning Machine  Classified discrimination
本文献已被 CNKI 等数据库收录!
点击此处可从《盐湖研究》浏览原始摘要信息
点击此处可从《盐湖研究》下载免费的PDF全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号