Improving deep groundwater aquifer characterization with deep learning inversion of audio-frequency magnetotelluric data

被引:0
|
作者
Chen, Hang [1 ]
Ren, Zhengyong [2 ]
Liu, Jianxin [2 ]
Liu, Zhengguang [2 ]
Guo, Rongwen [2 ]
Wang, Yongfei [2 ]
He, Dongdong [3 ]
机构
[1] Boise State Univ, Dept Geosci, Boise, ID 83725 USA
[2] Cent South Univ, Sch Geosci & Info phys, Changsha 410083, Hunan, Peoples R China
[3] Chinese Univ Hong Kong, Sch Sci & Engn, Shenzhen 518172, Guangdong, Peoples R China
基金
中国国家自然科学基金;
关键词
Deep Groundwater; Audio-Frequency Magnetotelluric; Deep Learning; Inversion; Water content; ELECTRICAL-RESISTIVITY TOMOGRAPHY; PRIOR INFORMATION; SYSTEM;
D O I
10.1016/j.jhydrol.2024.131680
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Deep groundwater is a crucial resource for drinking, industry, and ecosystems. However, its extensive subsurface distribution poses challenges for traditional hydrological sampling methods. Audio-frequency Magnetotelluric (AMT) is commonly used to image shallow subsurface resistivity distribution, but its application for quantifying deep groundwater aquifers is challenging. In this study, we propose a two-step strategy deep learning (DL) to estimate subsurface water information from AMT data. First, we employ an inversion DL network to directly predict subsurface resistivity distribution from AMT data. To assess the impact of data and prior information on DL inversions, we progressively include more input data during training, from apparent resistivity to apparent resistivity, phase, and Bostick transformed initial models. In the second step, we use another DL network to predict subsurface structure from AMT inversion results. We then estimate water content based on unit-specific petrophysical relationships. Evaluating our algorithm with synthetic cases, we find that including more information generally improves network performance, particularly when incorporating initial Bostick transformed models. Applying the algorithm to a field hydrogeological survey, we compare the inversion network trained with apparent resistivity, phase, and Bostick transformed initial models to traditional regularization inversions. The new approach shows better consistency with borehole data. Another network extracts structure information, enabling the estimation of subsurface water content and gaining valuable hydrogeological insights. To summarize, our study presents a novel DL-based approach to quantitatively delineate deep groundwater aquifers using AMT data. The proposed algorithm demonstrates promising performance in estimating subsurface hydrologic properties, providing valuable insights for hydrogeological investigations.
引用
收藏
页数:13
相关论文
共 50 条
  • [1] Simulated annealing for controlled-source audio-frequency magnetotelluric data inversion
    Wang, Ruo
    Yin, Changchun
    Wang, Miaoyue
    Wang, Guangjie
    GEOPHYSICS, 2012, 77 (02) : E127 - E133
  • [2] 3D joint inversion of controlled-source audio-frequency magnetotelluric and magnetotelluric data
    RONG Zhihao
    LIU Yunhe
    Global Geology, 2022, 25 (01) : 26 - 33
  • [3] Deep learning audio-magnetotelluric and transient electromagnetic joint inversion
    Wang, Liang
    Liu, Wei
    Xi, Zhenzhu
    Xue, Junping
    Hou, Haitao
    Long, Xia
    Wang, Wei
    Xue, Wentao
    CHINESE JOURNAL OF GEOPHYSICS-CHINESE EDITION, 2024, 67 (11): : 4372 - 4384
  • [4] Joint Inversion of Audio-Magnetotelluric and Seismic Travel Time Data With Deep Learning Constraint
    Guo, Rui
    Yao, He Ming
    Li, Maokun
    Ng, Michael Kwok Po
    Jiang, Lijun
    Abubakar, Aria
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2021, 59 (09): : 7982 - 7995
  • [5] Probabilistic inversion of audio-frequency magnetotelluric data and application to cover thickness estimation for mineral exploration in Australia
    Jiang, Wenping
    Brodie, Ross C.
    Duan, Jingming
    Roach, Ian
    Symington, Neil
    Ray, Anandaroop
    Goodwin, James
    JOURNAL OF APPLIED GEOPHYSICS, 2023, 208
  • [6] Stochastic inversion of magnetotelluric data using deep reinforcement learning
    Wang H.
    Liu Y.
    Yin C.
    Li J.
    Su Y.
    Xiong B.
    Geophysics, 2021, 87 (01) : 1 - 52
  • [7] Stochastic inversion of magnetotelluric data using deep reinforcement learning
    Wang, Han
    Liu, Yunhe
    Yin, Changchun
    Li, Jinfeng
    Su, Yang
    Xiong, Bin
    GEOPHYSICS, 2022, 87 (01) : E49 - E61
  • [8] Regularized inversion of controlled source audio-frequency magnetotelluric data in horizontally layered transversely isotropic media
    Zhou, Jianmei
    Wang, Jianxun
    Shang, Qinglong
    Wang, Hongnian
    Yin, Changchun
    JOURNAL OF GEOPHYSICS AND ENGINEERING, 2014, 11 (02)
  • [9] Three-dimensional scalar controlled-source audio-frequency magnetotelluric inversion using tipper data
    Wang, Kunpeng
    Cao, Hui
    Duan, Changsheng
    Huang, Jian
    Li, Fulong
    JOURNAL OF APPLIED GEOPHYSICS, 2019, 164 : 75 - 86
  • [10] Enhancing Coastal Aquifer Characterization and Contamination Inversion with Deep Learning
    Chen, Xuequn
    Chang, Yawen
    Wu, Chao
    Tian, Chanjuan
    Liu, Dan
    Jiang, Simin
    WATER, 2025, 17 (02)