油气储层勘探建模技术新进展及未来展望
作者:
作者单位:

作者简介:

罗红梅(1973—),女,山东利津人,研究员,博士,从事地震地质数据综合处理与解释方面的研究工作。E-mail:lhmei2001@163.com。

通讯作者:

基金项目:

中国石化科技攻关项目“地质模式约束的非均质储层精细刻画”(P22161)。


New progress and future prospects of oil and gas reservoir modeling technology for exploration
Author:
Affiliation:

Fund Project:

  • 摘要
  • |
  • 图/表
  • |
  • 访问统计
  • |
  • 参考文献
  • |
  • 相似文献
  • |
  • 引证文献
  • |
  • 资源附件
    摘要:

    油气储层建模利用地质统计学等方法,综合测井、地质、地震等多学科信息,是油气田开发研究的利器,油藏地质模型可以将油藏各种地质特征在三维空间的变化及分布定量表征出来,是油气藏的类型、几何形态、规模、油藏内部结构、储层参数及流体分布的高度概括,储层地质模型是油藏地质模型的核心,可以对储层的沉积特征、非均质性、物性及流体等特征进行综合表征。但在勘探阶段,面对大尺度沉积体系和稀疏井网条件下的储层展布规律表征的建模难点为:①地质知识的量化表达问题,包括地质专家的经验认识如何数字化表征。②稀疏井网条件下无法直接用钻井资料对地质体的发育规模、展布方向和结构特征准确定量描述及构建地质模式,大尺度空间中复杂沉积体系无法用简单数学函数表征。③传统地质统计学等方法在勘探模型构建中如何实现地震、测井、地质、油藏等多维度数据的融合问题。因此,基于确定性建模和传统地质统计学等随机建模的储层建模理论和技术遇到极大挑战。笔者在系统剖析传统储层建模技术流程和方法的基础上,通过构建涵盖地质、测井、地震、分析化验等信息的多学科地学大数据知识库,开展多维数据凝聚层次聚类的沉积相模式库表征和基于生成式网络的智能建模,提出了多学科协同的油气储层勘探建模技术对策及技术体系,实现了构造、沉积及储层之间匹配关系的定量表征。该技术体系在东营凹陷北部陡坡带、洼陷带勘探部署中开展系统应用,构建融合古地貌、古物源、搬运通道、测井及地震属性等多信息的岩相、物性及油气运聚的地质模型,基于模型新范式指导部署井位,支撑了陆相断陷盆地复杂砂砾岩体、页岩油等勘探实践。笔者通过深度剖析东营凹陷北部陡坡带勘探建模实践难点及精度问题,进一步探讨了未来油气储层勘探建模技术发展趋势和应用前景。

    Abstract:

    Oil and gas reservoir modeling integrates multidisciplinary information from logging, geology, and seismic data through geostatistics and other methods, and it is a powerful tool for oil and gas field development. The geological model of reservoirs can quantitatively characterize the variation and distribution of various geological features of the reservoir in three-dimensional space and is a high generalization of the type, geometry, scale, internal structure of the oil and gas reservoir, reservoir parameters, and fluid distribution. The geological model of reservoirs is the core of the geological model of oil and gas reservoirs, which can comprehensively characterize the sedimentary characteristics, heterogeneity, physical properties, and fluid characteristics. However, it is difficult to characterize reservoir distribution under the condition of a large-scale sedimentary system and sparse well pattern in the exploration stage, covering ① quantitative representation of geological knowledge, including how to represent the experience of geological experts digitally; ② it is impossible to accurately and quantitatively describe the development scale, distribution direction,and structural characteristics of geological bodies directly with logging data and construct geological models under the condition of sparse well pattern, and complex sedimentary systems in large-scale space cannot be characterized by simple mathematical functions; ③ traditional geostatistics and other methods can not realize the fusion of seismic, logging, geological, reservoir, and other multi-dimensional data in the construction of exploration model. Therefore, the theory and technology of reservoir modeling based on deterministic modeling and stochastic modeling, such as traditional geostatistics, have met great challenges. On the basis of systematic analysis of traditional reservoir modeling technology processes and methods, the authors constructed a multidisciplinary big data knowledge base of geoscience covering geology, logging, seismic, analytical, and laboratory information and carried out the characterization of the sedimentary facies pattern library by hierarchical clustering through multi-dimensional data condensation and the intelligent modeling based on the generation network. In addition, a multidisciplinary collaborative modeling technology strategy and system are proposed for oil and gas reservoir exploration, which quantitatively characterized the matching relationship among structure, sediment, and reservoir. This technology system has been systematically applied in the exploration and deployment of steep slope and subsag belts in the north of Dongying Sag, and the geological models of lithofacies, physical properties,and oil and gas migration and accumulation has been constructed, which integrates multiple information such as paleogeomorphology,paleoprovenance, transport channels, logging, and seismic attributes. Based on the new paradigm of the model, the deployment of well locations has been guided, and the exploration practice of complex glutenites and shale oil in continental faulted basins has been supported. The authors further discuss the development trend and application prospect of oil and gas reservoir exploration and modeling technology in the future by deeply analyzing the practical difficulties and accuracy of exploration and modeling in the north belt of Dongying Sag.

    参考文献
    相似文献
    引证文献
引用本文

罗红梅,王长江,张志敬,房亮,管晓燕,郑文召.油气储层勘探建模技术新进展及未来展望[J].油气地质与采收率,2024,31(4):135~153

复制
分享
文章指标
  • 点击次数:
  • 下载次数:
历史
  • 收稿日期:2024-05-03
  • 最后修改日期:2024-06-14
  • 录用日期:
  • 在线发布日期: 2024-08-12
×
《油气地质与采收率》
《油气地质与采收率》启动新投稿网站的公告