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  • 1
    Publication Date: 2023-08-02
    Description: The Central and Eastern European Infrasound Network (CEEIN) established in 2018 as the collaboration between the Zentralanstalt für Meteorologie and Geodynamik, Vienna, Austria; the Institute of Atmospheric Physics of the Czech Academy of Sciences, Prague, Czech Republic; the Research Centre for Astronomy and Earth Sciences of the Eötvös Loránd Research Network, Budapest, Hungary; the National Institute for Earth Physics, Magurele, Romania and the Main Centre of Special Monitoring National Center for Control and Testing of Space Facilities, State Agency of Ukraine. Waveform data of the CEEIN stations are archived at the NIEP EIDA node, and can be downloaded from www.ceein.eu. We show that CEEIN improves infrasound event detection capabilities in Southern and Eastern Europe, and demonstrate that adding infrasound observations to seismic data in the location algorithm improves location accuracy. We identify coherent noise sources observed at CEEIN stations. We present the bi-annual CEEIN bulletin of infrasound and seismo-acoustic events, our contribution to the European infrasound catalogue. Many of the events in the CEEIN bulletin are ground truth events that can be used in the validation of atmospheric models and infrasound raytracing algorithms.
    Language: English
    Type: info:eu-repo/semantics/conferenceObject
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  • 2
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    In:  XXVIII General Assembly of the International Union of Geodesy and Geophysics (IUGG)
    Publication Date: 2023-06-16
    Description: The huge volume of infrasound detections asks for machine learning techniques for the automatic classification of signals. Our objective was to assess machine learning algorithms in identifying signals. Since 2017, the Hungarian infrasound array has collected approximately one million detections, processed with the Progressive Multi Channel Correlation method. Of these, we categorised some 14,000 detections from quarry blasts, storms and a power plant. These detections constitute the dataset for machine learning training, validation and testing. After pre-processing, features were extracted from the waveforms both in the time and frequency domain, to characterize the physical properties of the signals. We also defined PMCC related features to measure the similarity between the detections. For training, two classifiers were selected, Random Forests and Support Vector Machines. Hyperparameter tuning was performed with three-fold cross-validation using grid search. As a metric, f1 score was selected, and the confusion matrices were analysed. The goal was to separate the detections labelled as quarry blasts from the storm and power plant classes. The results reach 0.88 f1 scores, and high true positive rate for the quarry blasts, which show promising step in the direction of infrasound signal classification via machine learning.
    Language: English
    Type: info:eu-repo/semantics/conferenceObject
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