Deep learning for quality control of receiver functions

被引:4
作者
Gong, Chang [1 ,2 ]
Chen, Ling [1 ,2 ]
Xiao, Zhuowei [2 ,3 ]
Wang, Xu [1 ,2 ]
机构
[1] Chinese Acad Sci, Inst Geol & Geophys, State Key Lab Lithospher Evolut, Beijing, Peoples R China
[2] Univ Chinese Acad Sci, Coll Earth & Planetary Sci, Beijing, Peoples R China
[3] Chinese Acad Sci, Inst Geol & Geophys, Key Lab Mineral Resources, Beijing, Peoples R China
基金
中国国家自然科学基金;
关键词
receiver function; deep learning; quality control; model comparsion; data processing; MOHO DEPTH; BENEATH;
D O I
10.3389/feart.2022.921830
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
Receiver function has been routinely used for studying the discontinuity structure in the crust and upper mantle. The manual quality control of receiver functions, which plays a key role in high-quality data selection and accurate structural imaging, has been challenged by today's booming data volumes. Traditional automatic quality control methods usually require tuning hyperparameters and fail to generalize to low signal-to-noise ratio data. Deep learning has been increasingly used to deal with extensive seismic data. However, it generally requires a manually labeled dataset, and its performance is highly related to the network design. In this study, we develop and compare four different deep learning network designs with manual and traditional quality control methods using 53293 receiver functions from three broadband seismic stations. Our results show that a combination of convolutional and long-short memory layers achieves the best performance of similar to 91% accuracy. We also propose a fully automatic training schema that requires zero manually labeled receiver function yet achieves similar performance to that using carefully labeled ones. Compared with the traditional automatic method, our model retrieves similar to 5 times more reliable receiver functions from relatively small earthquakes with magnitudes between 5.0 and 5.5. The average waveforms and H-kappa stacking results of these receiver functions are comparable to those obtained by manual quality control from earthquakes with magnitudes larger than 5.5, which further demonstrates the validity of our method and indicates its potential for making use of smaller earthquakes in the receiver function analysis.
引用
收藏
页数:12
相关论文
共 50 条
  • [41] Deep Learning for Industrial Computer Vision Quality Control in the Printing Industry 4.0
    Villalba-Diez, Javier
    Schmidt, Daniel
    Gevers, Roman
    Ordieres-Mere, Joaquin
    Buchwitz, Martin
    Wellbrock, Wanja
    SENSORS, 2019, 19 (18)
  • [42] A Deep Learning Quality Control Loop of the Extrusion-based Bioprinting Process
    Bonatti, Amedeo Franco
    Vozzi, Giovanni
    Chua, Chee Kai
    De Maria, Carmelo
    INTERNATIONAL JOURNAL OF BIOPRINTING, 2022, 8 (04) : 307 - 320
  • [43] Deep Learning for Waveform Level Receiver Design With Natural Redundancy
    Zhu, Zhaorui
    Shen, Caiyao
    Yu, Hongyi
    Wang, Zhenyu
    Shen, Zhixiang
    Du, Jianping
    IEEE TRANSACTIONS ON COGNITIVE COMMUNICATIONS AND NETWORKING, 2023, 9 (02) : 317 - 331
  • [44] Enhancing quality inspection in automotive manufacturing through deep learning and transfer learning
    Abdelhamid El Wahabi
    Ayoub Mesquiny
    Oumaima El Ahmadi
    Ibrahim Hadj Baraka
    Salaheddine Hamdoune
    Anouar Abdelhakim Boudhir
    Neural Computing and Applications, 2025, 37 (18) : 11711 - 11736
  • [45] Deep networks for motor control functions
    Berniker, Max
    Kording, Konrad P.
    FRONTIERS IN COMPUTATIONAL NEUROSCIENCE, 2015, 9
  • [46] Deep networks for motor control functions
    Berniker, Max
    Kording, Konrad P.
    Frontiers in Computational Neuroscience, 2015, 9 (MAR)
  • [47] Deep learning for spirometry quality assurance with spirometric indices and curves
    Wang, Yimin
    Li, Yicong
    Chen, Wenya
    Zhang, Changzheng
    Liang, Lijuan
    Huang, Ruibo
    Liang, Jianling
    Tu, Dandan
    Gao, Yi
    Zheng, Jinping
    Zhong, Nanshan
    RESPIRATORY RESEARCH, 2022, 23 (01)
  • [48] Deep learning for spirometry quality assurance with spirometric indices and curves
    Yimin Wang
    Yicong Li
    Wenya Chen
    Changzheng Zhang
    Lijuan Liang
    Ruibo Huang
    Jianling Liang
    Dandan Tu
    Yi Gao
    Jinping Zheng
    Nanshan Zhong
    Respiratory Research, 23
  • [49] Deep crustal structure across northeastern Tibet from P receiver functions
    Murodov, Davlatkhudzha
    Zhao, Junmeng
    Wang, Xin
    Murodov, Murodkhudzha
    Shah, Syed Tallataf Hussain
    Murodov, Azamdzhon
    Faizulloev, Shohnavaz
    PHYSICS OF THE EARTH AND PLANETARY INTERIORS, 2023, 341
  • [50] Deep learning to estimate gestational age from fly-to cineloop videos: A novel approach to ultrasound quality control
    Viswanathan, Ambika V.
    Pokaprakarn, Teeranan
    Kasaro, Margaret P.
    Shah, Hina R.
    Prieto, Juan C.
    Benabdelkader, Chiraz
    Sebastiao, Yuri V.
    Sindano, Ntazana
    Stringer, Elizabeth
    Stringer, Jeffrey S. A.
    INTERNATIONAL JOURNAL OF GYNECOLOGY & OBSTETRICS, 2024, 165 (03) : 1013 - 1021