Pore pressure prediction assisted by machine learning models combined with interpretations: A case study of an HTHP gas field, Yinggehai Basin

被引:6
|
作者
Zhao, Xiaobo [1 ]
Chen, Xiaojun [2 ]
Lan, Zhangjian [3 ]
Wang, Xinguang [4 ]
Yao, Guangqing [1 ]
机构
[1] China Univ Geosci, Sch Earth Resources, Wuhan 430074, Peoples R China
[2] Univ Manchester, Sch Engn, Manchester M13 9PL, England
[3] CNOOC Ltd, Hainan Branch, Hainan 570311, Peoples R China
[4] CNOOC Ltd, Zhanjiang Branch, Zhanjiang 524000, Peoples R China
来源
基金
中国国家自然科学基金; 中国博士后科学基金;
关键词
Pore pressure prediction; Machine learning; Model visualization; HPHT gas field; Yinggehai basin; SOUTH CHINA SEA; IN-SITU STRESS; OVERPRESSURE; MECHANISMS; VELOCITY; FACIES; OIL;
D O I
10.1016/j.geoen.2023.212114
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Accurately estimating pore pressure in high-temperature and high-pressure (HTHP) formations is crucial to prevent drilling problems and engineering disasters. In this study, four machine learning models were developed, namely decision tree, random forest, gradient boosting decision tree, and extreme boosting decision tree models, along with the classical Eaton's method, to rapidly predict pore pressure in an HTHP gas field in the Yinggehai Basin using seven variables, including 'depth' and six common well-logging series. The results demonstrate that the machine learning models outperform the classical Eaton's method in pore pressure prediction. Among the models, the decision tree model exhibits the best performance, with the highest correlation coefficient (R2 = 0.98) and the lowest root mean squared error (0.61). Additionally, the Graphviz tool and Shapley additive explanations method were used for the visualization and interpretation of the decision tree model to gain a deeper understanding of the model's working mechanism and the reasons behind the obtained results. The interpretation revealed that the variable of 'depth' was the most significant input parameter in the decision-making process of the model. This study provides insights into the 'black-box' interpretation of machine learning models and demonstrates that tree-based machine learning models can accurately predict pore pressure in undersurface HTHP formations.
引用
收藏
页数:17
相关论文
共 50 条
  • [21] Pore pressure prediction using seismic velocity modeling: case study, Sefid-Zakhor gas field in Southern Iran
    Bahmaei, Zahra
    Hosseini, Erfan
    JOURNAL OF PETROLEUM EXPLORATION AND PRODUCTION TECHNOLOGY, 2020, 10 (03) : 1051 - 1062
  • [22] Relationship between hydraulic fracture and natural gas accumulation in over-pressured basin: A case study on the LD-A Gas Field in the Ledong slope belt of the Yinggehai Basin
    Jia, Ru
    Fu, Xiaofei
    Fan, Caiwei
    Jin, Yejun
    Wang, Sheng
    Wang, Haixue
    Luo, Jingshuang
    Natural Gas Industry, 2024, 44 (06) : 23 - 32
  • [24] Improving Failure Prediction by Ensembling the Decisions of Machine Learning Models: A Case Study
    Campos, Joao R.
    Costa, Ernesto
    Vieira, Marco
    IEEE ACCESS, 2019, 7 : 177661 - 177674
  • [25] Downhole Pressure Prediction for Deepwater Gas Reservoirs Using Physics- Based and Machine Learning Models
    He, Jincong
    Avent, Matthew
    Muller, Mathieu
    Bordessa, Lauren
    SPE JOURNAL, 2023, 28 (01): : 371 - 380
  • [26] Dynamic pore water pressure in asphalt mixtures under steady state vibration: Response and machine-learning-assisted prediction
    Li, Shiyuan
    Bian, Xinxing
    Xu, Huining
    CONSTRUCTION AND BUILDING MATERIALS, 2025, 469
  • [27] Shale brittleness prediction using machine learning-A Middle East basin case study
    Mustafa, Ayyaz
    Tariq, Zeeshan
    Abdulraheem, Abdulazeez
    Mahmoud, Mohamed
    Kalam, Shams
    Khan, Rizwan Ahmed
    AAPG BULLETIN, 2022, 106 (11) : 2275 - 2296
  • [28] Flood Prediction Using Machine Learning Models: A Case Study of Kebbi State Nigeria
    Lawal, Zaharaddeen Karami
    Yassin, Hayati
    Zakari, Rufai Yusuf
    2021 IEEE ASIA-PACIFIC CONFERENCE ON COMPUTER SCIENCE AND DATA ENGINEERING (CSDE), 2021,
  • [29] Unsupervised Machine Learning-Based Singularity Models: A Case Study of the Taiwan Strait Basin
    Zhang, Yan
    Zhang, Li
    Lei, Zhenyu
    Xiao, Fan
    Zhou, Yongzhang
    Zhao, Jing
    Qian, Xing
    FRACTAL AND FRACTIONAL, 2024, 8 (10)
  • [30] Distribution characteristics of delta reservoirs reshaped by bottom currents: A case study from the second member of the Yinggehai Formation in the DF1-1 gas field, Yinggehai Basin, South China Sea
    Shuo Chen
    Renhai Pu
    Huiqiong Li
    Hongjun Qu
    Tianyu Ji
    Siyu Su
    Yunwen Guan
    Hui Zhang
    Acta Oceanologica Sinica, 2022, 41 : 86 - 106