Abstract

The identification and separation of sources are the prerequisite of industrial noise control. Industrial machinery usually contains multiple noise sources sharing same-frequency components. There are usually multiple noise sources in mechanical equipment, and there are few effective methods available to separate the spectrum intensity of each sound source. This study tries to solve the problem by the radiation relationship between three-dimensional sound intensity vectors and the power of the sources. When the positions of the probe and the sound source are determined, the sound power of the sound source at each frequency can be solved by the particle swarm optimization algorithm. The solution results at each frequency are combined to obtain the sound power spectrum of each sound source. The proposed method is first verified by a simulation on two point sources. The experiment is carried out on a fault simulation test bed in an ordinary laboratory; we used three three-dimensional sound intensity probes to form a line array and conducted spectrum separation of the nine main noise sources. The sound intensity on the main frequency band of each sound source was close to the result of the near-field measurement of the one-dimensional sound intensity probe. The proposed spectral separation method of the sound power of multiple sound sources provides a new method for accurate noise identification in industrial environments.

Highlights

  • The operation of mechanical equipment is often accompanied by strong noise, which contains a wealth of information about the status of equipment parts

  • Based on the method of using three-dimensional sound intensity probes to identify sound sources, this paper extends the method to the frequency spectrum separation of multiple sound sources

  • If the number of three-dimensional sound intensity probes is increased and the sound field is sampled at multiple points, it is possible to completely determine the sound power spectrum of the sound source

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Summary

Introduction

The operation of mechanical equipment is often accompanied by strong noise, which contains a wealth of information about the status of equipment parts. Among the sound source identification methods, near-field acoustic holography uses a microphone array to accurately reconstruct the sound pressure, particle velocity, and sound intensity of the three-dimensional sound field. In terms of vehicle noise source identification, in 2016, clustering inverse beamforming technology was used for the first time in vehicle sound source location This method can improve the accuracy of sound source localization and recognition when the closed acoustic cavity is used as a carriage [9]. The method can identify the position and power of multiple sound sources with same-frequency components in a three-dimensional space [17] and provides a new idea for the separation of mechanical noise sources. Based on the method of using three-dimensional sound intensity probes to identify sound sources, this paper extends the method to the frequency spectrum separation of multiple sound sources

Basic Principles of the Three-Dimensional Sound Intensity Measurement
The Separation of the Sound Power Spectrum of Multiple Sound Sources
Simulation Analysis
Experimental Verification
The locations of the of nine sound
The closer this
Conclusions
Full Text
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