Archives of Acoustics, 48, 2, pp. 191–199, 2023
10.24425/aoa.2023.145230

Infrasound Signal Classification Based on ICA and SVM

Quanbo LU
ORCID ID 0000-0003-0941-4835
China University of Geosciences
China

Meng WANG
China University of Geosciences
China

Mei LI
China University of Geosciences
China

A diagnostic technique based on independent component analysis (ICA), fast Fourier transform (FFT), and support vector machine (SVM) is suggested for effectively extracting signal features in infrasound signal monitoring. Firstly, ICA is proposed to separate the source signals of mixed infrasound sources. Secondly, FFT is used to obtain the feature vectors of infrasound signals. Finally, SVM is used to classify the extracted feature vectors. The approach integrates the advantages of ICA in signal separation and FFT to extract the feature vectors. An experiment is conducted to verify the benefits of the proposed approach. The experiment results demonstrate that the classification accuracy is above 98.52% and the run time is only 2.1 seconds. Therefore, the proposed strategy is beneficial in enhancing geophysical monitoring performance.
Keywords: independent component analysis; fast Fourier transform; support vector machine; infrasound signal
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Copyright © The Author(s). This is an open-access article distributed under the terms of the Creative Commons Attribution-ShareAlike 4.0 International (CC BY-SA 4.0).

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DOI: 10.24425/aoa.2023.145230