DocumentCode :
3051102
Title :
Automated Sound Signalling Device Quality Assurance Tool for Embedded Industrial Control Applications
Author :
Maniak, Tomasz ; Iqbal, R. ; Doctor, Faiyaz ; Jayne, Chrisina
Author_Institution :
Eng. & Quality Dept., Nippon Seiki, UK-NSI Co., Ltd., Redditch, UK
fYear :
2013
fDate :
13-16 Oct. 2013
Firstpage :
4812
Lastpage :
4818
Abstract :
This paper presents a novel system for automatic detection and recognition of faulty audio signaling devices as part of an automated industrial manufacturing process. The system uses historical data labeled by human experts in detecting faulty signaling devices to train an artificial neural network based classifier for modeling their decision making process. The neural network is implemented on a real time embedded micro controller which can be more efficiently incorporated into an automated production line eliminating the need for a manual inspection within the manufacturing process. We present real world experiments based on data pertaining to the production and manufacture of audio signaling components used in car instrument clusters. Our results show that the proposed expert system is able to successfully classify faulty audio signaling devices to a high degree of accuracy. The results can be generalized to other signaling devices where an output signal is represented by a complex and changing frequency spectrum even with significant environmental noise.
Keywords :
audio equipment; audio signal processing; control engineering computing; embedded systems; fault diagnosis; industrial control; microcontrollers; neural nets; production engineering computing; quality control; artificial neural network; audio signaling components; automated industrial manufacturing process; automated sound signalling device quality assurance tool; automatic detection; automatic recognition; car instrument clusters; decision making process; embedded industrial control applications; embedded microcontrollers; expert system; fault detection; faulty audio signaling devices; Artificial neural networks; Feature extraction; Frequency measurement; Inspection; Instruments; Microcontrollers; Production; Non-speech sound recognition; artificial neural networks; audio signal processing; embedded systems; environmental sound recognition; feed-forward back propagation; mel-scale frequency cepstum coefficients;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Systems, Man, and Cybernetics (SMC), 2013 IEEE International Conference on
Conference_Location :
Manchester
Type :
conf
DOI :
10.1109/SMC.2013.819
Filename :
6722574
Link To Document :
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