Automated dispersion curve picking using multi-attribute convolutional-neural-network based machine learning

被引:5
|
作者
Ren, Li [1 ]
Gao, Fuchun [2 ,7 ]
Wu, Yulang [3 ]
Williamson, Paul [4 ]
McMechan, George A. [1 ]
Wang, Wenlong [5 ,6 ]
机构
[1] Univ Texas Dallas, Dept Geosci, 800 W Campbell Rd, Richardson, TX 75080 USA
[2] TotalEnergies, E&P Res & Technol, Total Plaza,1201 Louisiana St 1800, Houston, TX 77002 USA
[3] Chinese Acad Sci, Inst Geol & Geophys, Key Lab Petr Resources Res, 19 Beitucheng W Rd, Beijing 100029, Peoples R China
[4] CSTJF, TotalEnergies OneTech, Adv Seism Imaging, Ave Larribau, F-64000 Pau, France
[5] Harbin Inst Technol, Dept Math, 92 Xidazhi St, Harbin, Heilongjiang, Peoples R China
[6] Harbin Inst Technol, Artificial Intelligence Lab, 92 Xidazhi St, Harbin, Heilongjiang, Peoples R China
[7] TGS Res & Dev, 10451 Clay Rd, Houston, TX 77041 USA
关键词
Computational seismology; Interface waves; Machine learning; MODE SEPARATION; VARIANCE TEST; SURFACE; INVERSION;
D O I
10.1093/gji/ggac383
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Surface wave dispersion curves are useful to characterize shallow subsurface structures while accurately picking them is typically laborious. To make these approaches more efficient and practical, it is important to automate the picking process. We propose a convolutional neural network (CNN) based ML method to automatically pick multimode surface wave dispersion curves. We modify the typical U-net architecture to convert the conventional 2-D image segmentation problem into direct multimode curve fitting and subsequent picking. A variety of attributes of the data amplitude (A) in the (f, k) domain, such as frequency (F), wavenumber (K), maximum coherency (Coh) and Power weighted amplitude (Pwa), are combined to constrain the picking more accurately than a single attribute does. The effects of two different loss functions on the final picking results are compared; the one that combines conventional wavenumber residuals and curve slope residuals produces more continuous curves. Pre-training the network with synthetic data, and thus using transfer learning, improves the efficiency of the algorithm when the data set is large. To determine the frequency band of each dispersive mode (effective frequency band) in the picked curves, the CNN outputs are post-processed by using measurements such as long/short moving average ratios of squared picked wavenumbers, posterior uncertainty of picked wavenumbers and wavenumbers in the picked curves or the power attribute. We demonstrate the effectiveness of this automatic picking by applying it to a 2-D line and a 3-D subset from a field ocean bottom node data set, where the fundamental and first higher modes of Scholte waves are accurately picked.
引用
收藏
页码:1173 / 1208
页数:36
相关论文
共 50 条
  • [1] Convolutional Neural Network, Res-Unet plus plus , -Based Dispersion Curve Picking From Noise Cross-Correlations
    Song, Weibin
    Feng, Xuping
    Wu, Gaoxiong
    Zhang, Gongheng
    Liu, Ying
    Chen, Xiaofei
    JOURNAL OF GEOPHYSICAL RESEARCH-SOLID EARTH, 2021, 126 (11)
  • [2] ADVERSARIAL MACHINE LEARNING USING CONVOLUTIONAL NEURAL NETWORK WITH IMAGENET
    Khakurel, Utsab
    Rawat, Danda B.
    PROCEEDINGS OF THE 2022 ANNUAL MODELING AND SIMULATION CONFERENCE (ANNSIM'22), 2022, : 246 - 257
  • [3] Neural network architecture optimization using automated machine learning for borehole resistivity measurements
    Shahriari, M.
    Pardo, D.
    Kargaran, S.
    Teijeiro, T.
    GEOPHYSICAL JOURNAL INTERNATIONAL, 2023, 234 (03) : 2488 - 2501
  • [4] Automated identification of steel weld defects, a convolutional neural network improved machine learning approach
    Shu, Zhan
    Wu, Ao
    Si, Yuning
    Dong, Hanlin
    Wang, Dejiang
    Li, Yifan
    FRONTIERS OF STRUCTURAL AND CIVIL ENGINEERING, 2024, 18 (02) : 294 - 308
  • [5] Automated crater detection algorithms from a machine learning perspective in the convolutional neural network era
    DeLatte, D. M.
    Crites, S. T.
    Guttenberg, N.
    Yairi, T.
    ADVANCES IN SPACE RESEARCH, 2019, 64 (08) : 1615 - 1628
  • [6] Automatic picking of multi-mode surface-wave dispersion curves based on machine learning clustering methods
    Wang, Zhinong
    Sun, Chengyu
    Wu, Dunshi
    COMPUTERS & GEOSCIENCES, 2021, 153
  • [7] Efficiency of corporate debt financing based on machine learning and convolutional neural network
    Zhao, Jing
    MICROPROCESSORS AND MICROSYSTEMS, 2021, 83
  • [8] Machine Learning and Deep Learning-Based Multi-Attribute Physical-Layer Authentication for Spoofing Detection in LoRaWAN
    Pourghasem, Azita
    Kirner, Raimund
    Tsokanos, Athanasios
    Mporas, Iosif
    Mylonas, Alexios
    FUTURE INTERNET, 2025, 17 (02)
  • [9] Bridge maintenance planning framework using machine learning, multi-attribute utility theory and evolutionary optimization models
    Jaafaru, Hussaini
    Agbelie, Bismark
    AUTOMATION IN CONSTRUCTION, 2022, 141
  • [10] Framework for TCAD augmented machine learning on multi-I-V characteristics using convolutional neural network and multiprocessing
    Hirtz, Thomas
    Huurman, Steyn
    Tian, He
    Yang, Yi
    Ren, Tian-Ling
    JOURNAL OF SEMICONDUCTORS, 2021, 42 (12)