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Editor-in-Chief
Nikiforov
Vladimir O.
D.Sc., Prof.
Partners
doi: 10.17586/2226-1494-2024-24-1-156-164
Using machine learning technologies to solve the problem of classifying infrasound background monitoring signals
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Article in Russian
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Abstract
For citation:
Frolov I.N., Kudryavtsev N.G., Safonova V.Yu., Kudin D.V. Using machine learning technologies to solve the problem of classifying infrasound background monitoring signals. Scientific and Technical Journal of Information Technologies, Mechanics and Optics, 2024, vol. 24, no. 1, pp. 156–164 (in Russian). doi: 10.17586/2226-1494-2024-24-1-156-164
Abstract
It is widely known that among sound signals generated by natural and anthropogenic phenomena, the most long-lived are waves of frequency less than 20 Hz, called infrasound. This property allows tracking at a distance by infrasound monitoring the occurrence of high-energy events on regional scales (up to 200–300 km). At the same time, the separation of useful infrasound signals from background noise is a non-trivial task in real-time and post-facto signal processing. In this paper we propose a new method for classification of specific signals in infrasound monitoring data using Shannon permutation entropy and vectors of frequency distribution of occurrence frequencies of permutations of consecutive sample values of rank 3 (number of permutation elements). To evaluate the validity of the proposed entropy-based classification method, two machine learning methods — random forest method and classical neural network approach — implemented in Python language using Scikit-lean, TensorFlow and Keras libraries were used. The classification quality was evaluated against the traditional frequency-based method of class extraction based on Fourier transform. Recognition was performed on the prepared infrasound monitoring data in the Altai Republic. The results of computational experiment on the separation of 5 classes of signals showed that classification by the proposed method gives the same results of recognition by neural network with in comparison with frequency classification of the original data; the recognition accuracy was 51–58 %. For the random forests method, the recognition accuracy of frequency classes was slightly higher: 51 % vs. 45 % for classes using the permutation entropy method. The analysis of the results of the computational experiment shows sufficient competitiveness of the method of classification by permutation entropy in the recognition of infrasound signals. In addition, the proposed method is much easier to implement for inline signal processing in low- consumption microcontroller systems. The next step is to test the method at infrasound signal registration points and as part of the infrasound monitoring data processing system for real-time event detection.
Keywords: machine learning, random forest model, artificial neural network, infrasound, permutation entropy, classification of time series fragments
Acknowledgements. The research was carried out using a grant from the Russian Science Foundation (RSF) and the Ministry of Education and Science of the Altai Republic No. 23-21-10087.
References
Acknowledgements. The research was carried out using a grant from the Russian Science Foundation (RSF) and the Ministry of Education and Science of the Altai Republic No. 23-21-10087.
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