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基于KNN分类算法的微生物白云岩岩相测井综合识别

李昌 王鑫 冯周 宋连腾

海相油气地质2023,Vol.28Issue(4):433-440,8.
海相油气地质2023,Vol.28Issue(4):433-440,8.DOI:10.3969/j.issn.1672-9854.2023.04.010

基于KNN分类算法的微生物白云岩岩相测井综合识别

Comprehensive logging identification of microbial carbonate lithofacies based on KNN classification algorithm:a case study of Dengying Formation in GM area,Sichuan Basin

李昌 1王鑫 1冯周 2宋连腾2

作者信息

  • 1. 中国石油杭州地质研究院||中国石油集团碳酸盐岩储层重点实验室
  • 2. 中国石油勘探开发研究院
  • 折叠

摘要

Abstract

Microbial structures are developed in microbial carbonate rocks,with strong diagenesis superimposed,and their lithology-electrical property relationship is more complex.Conventional logging has been unable to distinguish microbial structure characteristics.Although electric imaging logging has high resolution and can identify microbial structures,there is also a problem of multiple solutions.At present,the combination of conventional logging and electrical imaging logging is the most effective and accurate identification method.The main methods of combination include chart method and artificial intelligence learning method.However,the efficiency of chart method is low,and artificial intelligence methods also have two problems:(1)there is difficulty in integrating logging data from different dimensions;(2)the core sampling data is limited,and the number of training samples is insufficient.Therefore,this article selects the K-Neighbor Classification Algorithm(KNN),a machine learning method that adapts to few samples,and proposes a method of separate training and recognition,and re-fusion of recognition results.Firstly,based on core data,we establish lithofacies classification schemes and rock structure feature classification schemes respectively,and establish a core training sample parameter library,and then use KNN method to identify lithofacies types with conventional logging and rock structure types with electrical imaging logging.Finally,based on expert experience,we fuse the two recognition results to obtain finely classified lithofacies types.Taking the Dengying Member 4 in the GM area of Sichuan Basin as an example,6 types of lithofacies and 7 types of rock structural feature types were identified.Based on expert experience fusion,9 types of finely classified lithofacies were finally identified,with a recognition accuracy rate over 85%.This study has effectively supported the fine research work on sedimentary microfacies of the Dengying Member 4 in the GM area and promoted the exploration and development work in Sichuan Basin.This method leverages the advantages of conventional logging and electrical imaging logging,achieving efficient and high-precision identification of lithofacies,and is worth promoting.

关键词

微生物碳酸盐岩/KNN算法/常规测井/电成像测井/特征参数/岩相识别

Key words

microbial carbonate rock/KNN/conventional logging/electrical imaging logging/characteristic parameters/lithofacies identification

分类

能源科技

引用本文复制引用

李昌,王鑫,冯周,宋连腾..基于KNN分类算法的微生物白云岩岩相测井综合识别[J].海相油气地质,2023,28(4):433-440,8.

基金项目

本文受中国石油天然气集团有限公司"十四五"前瞻性基础性战略性技术攻关课题"人工智能测井储层评价新方法研究"(编号:2021DJ3806)资助 (编号:2021DJ3806)

海相油气地质

OA北大核心CSCDCSTPCD

1672-9854

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