Sound pattern recognition from multiple sources in an enclosed space
In repair workshops or production factories, technical personnel are often required to identify the faulty components or devices in a malfunctioning machine system. To facilitate such fault diagnosis, this research aims at developing a method for identifying those components or devices which, due to...
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2008
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sg-ntu-dr.10356-134232023-03-11T17:18:46Z Sound pattern recognition from multiple sources in an enclosed space Liu, Qiyuan. Ling, Shih Fu School of Mechanical and Production Engineering DRNTU::Engineering::Electrical and electronic engineering::Electronic systems::Signal processing In repair workshops or production factories, technical personnel are often required to identify the faulty components or devices in a malfunctioning machine system. To facilitate such fault diagnosis, this research aims at developing a method for identifying those components or devices which, due to their changed sound arising from faults, cause variations in the overall sound field in an enclosed space. To do this, three microphones, hung at the centre and the ends of a rod with a given length, were made to rotate in a plane above the sound sources in order to acquire information on the sound distribution in the enclosure. The statistical properties (auto spectra and cross spectra) of the acquired signals, as functions of sound frequency and rotating angle, were taken as the object for pattern recognition. Master of Engineering (MPE) 2008-10-20T08:17:08Z 2008-10-20T08:17:08Z 1999 1999 Thesis http://hdl.handle.net/10356/13423 en 124 p. application/pdf |
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DRNTU::Engineering::Electrical and electronic engineering::Electronic systems::Signal processing Liu, Qiyuan. Sound pattern recognition from multiple sources in an enclosed space |
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In repair workshops or production factories, technical personnel are often required to identify the faulty components or devices in a malfunctioning machine system. To facilitate such fault diagnosis, this research aims at developing a method for identifying those components or devices which, due to their changed sound arising from faults, cause variations in the overall sound field in an enclosed space. To do this, three microphones, hung at the centre and the ends of a rod with a given length, were made to rotate in a plane above the sound sources in order to acquire information on the sound distribution in the enclosure. The statistical properties (auto spectra and cross spectra) of the acquired signals, as functions of sound frequency and rotating angle, were taken as the object for pattern recognition. |
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Ling, Shih Fu |
author_facet |
Ling, Shih Fu Liu, Qiyuan. |
format |
Theses and Dissertations |
author |
Liu, Qiyuan. |
author_sort |
Liu, Qiyuan. |
title |
Sound pattern recognition from multiple sources in an enclosed space |
title_short |
Sound pattern recognition from multiple sources in an enclosed space |
title_full |
Sound pattern recognition from multiple sources in an enclosed space |
title_fullStr |
Sound pattern recognition from multiple sources in an enclosed space |
title_full_unstemmed |
Sound pattern recognition from multiple sources in an enclosed space |
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sound pattern recognition from multiple sources in an enclosed space |
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2008 |
url |
http://hdl.handle.net/10356/13423 |
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1761782084800610304 |