Signal Processing and Machine Learning as a Tool for Identifying Idling Noises of Different Circular Saw Blades

Authors

  • Mira Miric-Milosavljevic Department of Wood Technology, Faculty of Forestry, University of Belgrade, Belgrade 11030, Serbia
  • Srdjan Svrzić Department of Wood Technology, Faculty of Forestry, University of Belgrade, Belgrade 11030, Serbia
  • Zoran Nikolić Faculty of Physics, University of Belgrade, Belgrade 11000, Serbia
  • Marija Djurkovic Department of Wood Technology, Faculty of Forestry, University of Belgrade, Belgrade 11030, Serbia
  • Mladen Furtula Department of Wood Technology, Faculty of Forestry, University of Belgrade, Belgrade 11030, Serbia
  • Aleksandar Dedic Department of Wood Technology, Faculty of Forestry, University of Belgrade, Belgrade 11030, Serbia

Keywords:

Circular saw blade, Sound signal, Fast Fourier transform, Short-time Fourier transform, Spectral density, Deep learning network, Machine learning

Abstract

This study examines the possible utilization of machine learning and decision-making in the woodworking sector. This refers to the recognition of certain sounds produced during tool idling. The physical and geometric properties of the circular saw blade result in different noises being generated during idling. It was assumed that the respective circular saw blades can be recognized by these noises. The noises of three different circular saw blades were examined while idling at the same speed. In order to obtain useful data for the deep learning process, the coarse signals were subjected to frequency analysis. A total of 240 noise samples were taken for each circular saw blade and later subjected to signal processing. Frequency-power spectra were created using a custom program in Matlab Campus Edition software, such as for the spectrograms. A short Fourier transform was used to create the average spectral density plot using self-made software. The input data for the deep learning network was created in Matlab using a custom program. The GoogleNet deep learning network was used as a data classifier. After training the network, an accuracy of 97.5% was achieved in recognizing circular saw blades.

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Published

2024-01-31

Issue

Section

Research Article or Brief Communication