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基于3D TransUnet模型的断层识别方法

赵昭阳 赵建国 欧阳芳 马铭 闫博鸿 张宇

石油科学通报2025,Vol.10Issue(5):878-891,14.
石油科学通报2025,Vol.10Issue(5):878-891,14.DOI:10.3969/j.issn.2096-1693.2025.01.024

基于3D TransUnet模型的断层识别方法

A fault identification method based on the 3D TransUnet model

赵昭阳 1赵建国 1欧阳芳 2马铭 1闫博鸿 1张宇1

作者信息

  • 1. 中国石油大学(北京)油气资源与工程全国重点实验室,北京 102249
  • 2. 中国地震局地震预测研究所,北京 100036
  • 折叠

摘要

Abstract

Faults serve as crucial pathways and sites for hydrocarbon migration and accumulation,making their identification a key task in the interpretation of seismic data.However,the diversity of fault types,extensive distribution,and complex characteristics pose significant challenges to fault identification.To address this issue,this paper proposes a fault identification method using a 3D TransUnet model.Constructed based on 3D CNN and transformer modules,this model adopts an end-to-end structural design of the 3D Unet architecture.By learning the spatial relationships of three-dimensional faults in synthetic seismic data,it directly predicts fault information in actual seismic data.The method has been successfully applied to seismic work areas in the F3 block of the Dutch North Sea and the Halahatang area of the Tarim Basin,achieving excellent results.The research findings demonstrate that the 3D TransUnet model combines the high local accuracy of CNN and the global attention mechanism of Transformer,enabling inference and prediction of faults in complex regions based on global fault information.Compared with the 3D Unet model and other traditional fault identification methods,the 3D TransUnet model achieved a recall rate of 0.87 and a precision rate of 0.83 on the validation set,significantly outperforming other approaches.In practical applications within three-dimensional seismic work areas,the 3D TransUnet model accurately identifies fault information across different regions.For faults with subtle features,the incorporation of the Transformer module equips the model with a global attention mechanism,allowing it to infer the presence of faults by analyzing distribution trends across the entire work area.By applying the trained fault identification model to different practical seismic work areas(the F3 block and the Halahatang area in this study),the universality of the method is demonstrated,indicating that the trained fault identification model can be effectively utilized across seismic data from various regions.This study finds that the method can effectively identify microfracture information within formations.In oil and gas fields where microfractures serve as reservoirs,since microfractures primarily develop along major faults,well locations are typically deployed near these large faults.However,during the middle and late stages of oil production in such fields,well placement decisions rely more heavily on the development degree of microfractures.Therefore,this fault identification method provides valuable guidance for well placement in oil and gas fields where microfractures act as reservoirs.

关键词

深度学习/合成模型/3D TransUnet/Transformer/断层识别

Key words

deep learning/synthetic model/3D TransUnet/transformer/fault identification

分类

天文与地球科学

引用本文复制引用

赵昭阳,赵建国,欧阳芳,马铭,闫博鸿,张宇..基于3D TransUnet模型的断层识别方法[J].石油科学通报,2025,10(5):878-891,14.

基金项目

国家自然科学基金项目(42304141、41974120)、国家自然科学基金联合基金重点项目(U20B2015)联合资助 (42304141、41974120)

石油科学通报

2096-1693

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