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基于自注意力机制生成对抗网络的三维储层建模方法

丁祖鹏 张雨晴 王俊杰 方洪峰 陈大颉 陈麒玉

丁祖鹏,张雨晴,王俊杰,等. 基于自注意力机制生成对抗网络的三维储层建模方法[J]. 地质科技通报,2025,44(4):391-402 doi: 10.19509/j.cnki.dzkq.tb20250109
引用本文: 丁祖鹏,张雨晴,王俊杰,等. 基于自注意力机制生成对抗网络的三维储层建模方法[J]. 地质科技通报,2025,44(4):391-402 doi: 10.19509/j.cnki.dzkq.tb20250109
DING Zupeng,ZHANG Yuqing,WANG Junjie,et al. A self-attention enhanced generative adversarial network approach for three-dimensional reservoir modeling[J]. Bulletin of Geological Science and Technology,2025,44(4):391-402 doi: 10.19509/j.cnki.dzkq.tb20250109
Citation: DING Zupeng,ZHANG Yuqing,WANG Junjie,et al. A self-attention enhanced generative adversarial network approach for three-dimensional reservoir modeling[J]. Bulletin of Geological Science and Technology,2025,44(4):391-402 doi: 10.19509/j.cnki.dzkq.tb20250109

基于自注意力机制生成对抗网络的三维储层建模方法

doi: 10.19509/j.cnki.dzkq.tb20250109
基金项目: 国家自然科学基金项目 (42172333);中海石油(中国)有限公司北京研究中心横向协作项目(CCL2023RCPS0426RSN)
详细信息
    作者简介:

    丁祖鹏:E-mail:dingzp@cnooc.com.cn

    通讯作者:

    E-mail:chenqiyu403@163.com

  • 中图分类号: P628;TP31

A self-attention enhanced generative adversarial network approach for three-dimensional reservoir modeling

More Information
  • 摘要:

    三维储层建模技术可实现储层空间异质结构的自动表征,然而部分油田开采难度大、开发成本高致使油田井距大、钻井资料少,如何根据稀疏有限的可用资料指导油气储层三维建模,一直是油气开发工作的难点。本研究提出了一种基于自注意力机制生成对抗网络的三维储层建模方法,引入具有丰富空间结构信息的地质剖面或钻孔作为条件约束数据,使用U-Net网络结构结合自注意力机制提取关键结构特征,设计空间上下文条件损失函数,以进一步约束重建过程,使得重构结果的条件分布更接近于真实数据的条件分布。多组三维地层结构及复杂砂岩孔隙建模实验结果表明,本研究提出的三维储层建模方法能够再现地质空间结构特征,且符合参考模型的条件数据分布,重构准确率达90%。本研究所提出的方法,成功捕捉了那些对于传统卷积层来说难以识别的远距离依赖特征,克服了由条件数据稀疏性引起的潜在问题,模拟结果可反映地质随机性,能够应用于多种储层地质结构的高效准确重建工作中。

     

  • 图 1  SAGAN网络结构示意图

    Figure 1.  Network architecture of SAGAN

    图 2  二维石墙结构模型

    Figure 2.  2D stone wall structure model

    图 3  三维地层结构模型

    Figure 3.  3D stratum structure model

    图 4  三维砂岩模型

    Figure 4.  3D sandstone model

    图 5  石墙结构条件数据及对应的实现结果

    Figure 5.  Conditioning data and the corresponding realizations of stone wall

    图 6  石墙结构参考模型对应的20个实现结果的变差函数曲线(a)及64个参考模型预期对应实现结果的MDS分析图(b)

    Figure 6.  Variogram plots of 20 realizations (a) and MDS analysis plots of 64 expected realization results (b) corresponding to the reference model of stone wall

    图 7  石墙结构参考模型与其实验结果的相属性对比图

    Figure 7.  Comparison histogram of face attributes of reference model and its experimental results of stone wall

    图 8  三维地层结构条件剖面数据和模拟实现结果

    Figure 8.  Conditioning profile data and the corresponding realizations of 3D stratum structures

    图 9  沉积地层结构参考模型与其对应的20个实现结果的变差函数曲线(a)及20个参考模型与对应实现结果的MDS分析图(b)

    Figure 9.  Variogram plots of 20 realizations (a) and MDS analysis plots of 20 realization results (b) corresponding to the reference model of sedimentary stratum structure

    图 10  沉积地层结构24个参考模型与其对应实现结果的箱形图

    Figure 10.  Box plots of 24 references and the corresponding realizations of sedimentary stratum structure

    图 11  三维砂岩结构条件剖面数据及模拟实现结果

    Figure 11.  Conditioning profile data and the corresponding simulation realizations of 3D sandstone structure

    图 12  砂岩结构参考模型与其对应的20个实现结果的变差函数曲线

    Figure 12.  Variogram plots of the reference model and the corresponding 20 realizations of sandstone structure

    图 13  砂岩结构参考模型与其对应的20个实现结果的连通曲线

    Figure 13.  Connectivity curves of the reference model and the corresponding 20 realizations of sandstone structure

    图 14  砂岩结构30个参考模型与其对应实现结果的MDS分析图(a)及箱型图(b)

    Figure 14.  MDS analysis plots (a) and box plots (b) of 30 reference models and the corresponding realizations of sandstone structure

    表  1  SAGAN网络超参数设置

    Table  1.   Hyper-parameter configuration of SAGAN

    训练数据 石墙结构模型 地层结构模型 砂岩结构模型
    总训练次数 200 200 200
    批训练数量 16 8 8
    生成器:卷积层数、
    卷积核大小、步长
    6, 4×4, 2 7, 4×4×4, 2 7, 4×4×4, 2
    鉴别器:卷积层数、
    卷积核大小、步长
    5, 4×4, 2 5, 4×4×4, 2 5, 4×4×4, 2
    学习率(生成器、鉴别器) 4×10−4, 1×10−4 4×10−4, 1×10−4 4×10−4, 1×10−4
    空间上下文条件损失权重系数 500 100 100
    优化器类型(生成器、鉴别器) RMSprop
    下载: 导出CSV
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出版历程
  • 收稿日期:  2025-03-08
  • 录用日期:  2025-04-29
  • 修回日期:  2025-04-19
  • 网络出版日期:  2025-06-26

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