Unsupervised Machine Learning Clustering of Seismic and Infrasound Data Quality Metrics

被引:0
|
作者
Coffey, Juliann R. [1 ]
Witsil, Alex J. C. [1 ,2 ]
Macpherson, Kenneth A. [1 ]
Fee, David [1 ,3 ]
机构
[1] Univ Alaska Fairbanks, Geophys Inst, Wilson Alaska Tech Ctr, Fairbanks, AK 99775 USA
[2] Appl Res Associates, Raleigh, NC USA
[3] Univ Alaska Fairbanks, Geophys Inst, Alaska Volcano Observ, Fairbanks, AK USA
关键词
SELECTION;
D O I
10.1785/0220230177
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
Developing techniques for improving quality control (QC) schemes to catch seismic and infrasound data defects continues to be an area of active research. Selecting universal thresholds for the automation of data quality (DQ) checks is an efficient way to find QC issues, but these thresholds may not apply well to multiple stations with varying DQ characteristics. In addition, these thresholds may not catch subtle changes in DQ parameters that still indicate problems. Machine learning can be an alternative way of diagnosing QC issues. K-means clustering, an unsupervised machine learning clustering algorithm, has been effectively used in the past for geophysical pattern exploration. This study furthers k-means applications to DQ analysis through clustering on DQ metrics derived from day-long segments of nuclear explosion monitoring data. Our k-means implementation on broadband seismometer DQ metrics separately clustered mass recenters, calibrations lasting at least one hour, and days without either. Applying this technique to infrasound DQ metrics revealed clusters related to physical issues at the stations, such as missing back volume screws and the flooding of ported pipe inlets. These are both examples of QC issues that are difficult to diagnose or detect through the thresholding of metrics or by inspecting waveforms and spectra. Our results show that k-means clustering can be a useful QC tool in exploring DQ patterns to assist analyst review of station operation and maintenance. The learned knowledge from this exploration can then inform a thresholding workflow on how to tailor to individual stations, or the k-means model could classify data directly.
引用
收藏
页码:1812 / 1833
页数:22
相关论文
共 50 条
  • [31] Network Data Flow Clustering based on Unsupervised Learning
    Lopez-Vizcaino, Manuel
    Dafonte, Carlos
    Novoa, Francisco J.
    Garabato, Daniel
    Alvarez, M. A.
    Fernandez, Diego
    2019 IEEE 18TH INTERNATIONAL SYMPOSIUM ON NETWORK COMPUTING AND APPLICATIONS (NCA), 2019, : 139 - 143
  • [32] Unsupervised Machine Learning Applied to Seismic Interpretation: Towards an Unsupervised Automated Interpretation Tool
    Celecia, Alimed
    Figueiredo, Karla
    Rodriguez, Carlos
    Vellasco, Marley
    Maldonado, Edwin
    Silva, Marco Aurelio
    Rodrigues, Anderson
    Nascimento, Renata
    Ourofino, Carla
    SENSORS, 2021, 21 (19)
  • [33] Empirical analysis of metrics for object oriented multidimensional model of data warehouse using unsupervised machine learning techniques
    Sabharwal S.
    Nagpal S.
    Aggarwal G.
    International Journal of System Assurance Engineering and Management, 2017, 8 (Suppl 2) : 703 - 715
  • [34] Unsupervised dual learning for seismic data denoising in the absence of labelled data
    Zhao, Yu Xing
    Li, Yue
    Wu, Ning
    GEOPHYSICAL PROSPECTING, 2022, 70 (02) : 262 - 279
  • [35] Unsupervised Machine Learning for Blind Rivets Quality Inspection
    Martin Rebe, Ander
    Penalva, Mariluz
    Veiga, Fernando
    Gil Del Val, Alain
    El Moussaoui Abousoliman, Bilal
    ADVANCES IN ARTIFICIAL INTELLIGENCE IN MANUFACTURING, ESAIM 2023, 2024, : 73 - 80
  • [36] DIGNET - AN UNSUPERVISED-LEARNING CLUSTERING-ALGORITHM FOR CLUSTERING AND DATA FUSION
    THOMOPOULOS, SCA
    BOUGOULIAS, DK
    WANN, CD
    IEEE TRANSACTIONS ON AEROSPACE AND ELECTRONIC SYSTEMS, 1995, 31 (01) : 21 - 38
  • [37] Phenotypic clustering of repaired Tetralogy of Fallot using unsupervised machine learning
    Jacquemyn, Xander
    Chinni, Bhargava K.
    Doshi, Ashish N.
    Kutty, Shelby
    Manlhiot, Cedric
    INTERNATIONAL JOURNAL OF CARDIOLOGY CONGENITAL HEART DISEASE, 2024, 17
  • [38] Clustering clusters: unsupervised machine learning on globular cluster structural parameters
    Pasquato, Mario
    Chung, Chul
    MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY, 2019, 490 (03) : 3392 - 3403
  • [39] Clustering Electrophysiological Predisposition to Binge Drinking: An Unsupervised Machine Learning Analysis
    Uceta, Marcos
    Cerro-Leon, Alberto del
    Shpakivska-Bilan, Danylyna
    Garcia-Moreno, Luis M.
    Maestu, Fernando
    Anton-Toro, Luis Fernando
    BRAIN AND BEHAVIOR, 2024, 14 (11):
  • [40] Clustering of Heart Failure Phenotypes in Johannesburg Using Unsupervised Machine Learning
    Mpanya, Dineo
    Celik, Turgay
    Klug, Eric
    Ntsinjana, Hopewell
    APPLIED SCIENCES-BASEL, 2023, 13 (03):