Industrial applications require suitable monitoring systems able to identify any decrement in the production efficiency involving economical losses. The information coming from a general purpose monitoring system can be usefully exploited to implement a sensorless instrument monitoring an AC motor drive and a diagnostic tool providing useful risk coefficients. The method is based on a complex digital processing of the line signals acquired by means of a virtual instrument. In this paper a genetic algorithm, implemented in a Mathcad environment, performs the evaluation of the risk indexes from the processed line signals. The combination of genetic algorithms and neural network is also investigated as a promising possibility for the development of a reliable diagnostic tool. The risk coefficients derived from this approach are evaluated, discussed and compared to other indexes - in particular fuzzy indexes - introduced by the authors in previous papers.

A genetic algorithm for fault identification in electrical drives : a comparison with neuro-fuzzy computation / L. Cristaldi, M. Lazzaroni, A. Monti, F. Ponci, F.E. Zocchi - In: IMTC/2004 : proceedings of the 21. IEEE instrumentation and measurement technology conference : from the electrometer to the networked instruments : a giant step toward a deeper knowledge : Como, Italy, may 18-20, 2004. 2. / [a cura di] S. Demidenko ... [et al.]. - Piscataway : Institute of electrical and electronics engineers, 2004. - ISBN 078038248X. - pp. 1454-1459 (( Intervento presentato al 21. convegno Instrumentation and Measurement Technology Conference (IMTC) tenutosi a Como nel 2004 [10.1109/IMTC.2004.1351341].

A genetic algorithm for fault identification in electrical drives : a comparison with neuro-fuzzy computation

M. Lazzaroni
Secondo
;
2004

Abstract

Industrial applications require suitable monitoring systems able to identify any decrement in the production efficiency involving economical losses. The information coming from a general purpose monitoring system can be usefully exploited to implement a sensorless instrument monitoring an AC motor drive and a diagnostic tool providing useful risk coefficients. The method is based on a complex digital processing of the line signals acquired by means of a virtual instrument. In this paper a genetic algorithm, implemented in a Mathcad environment, performs the evaluation of the risk indexes from the processed line signals. The combination of genetic algorithms and neural network is also investigated as a promising possibility for the development of a reliable diagnostic tool. The risk coefficients derived from this approach are evaluated, discussed and compared to other indexes - in particular fuzzy indexes - introduced by the authors in previous papers.
English
Diagnostic; Genetic Algorithm; Pattern Recognition; Testing
Settore ING-INF/07 - Misure Elettriche e Elettroniche
Intervento a convegno
Esperti anonimi
IMTC/2004 : proceedings of the 21. IEEE instrumentation and measurement technology conference : from the electrometer to the networked instruments : a giant step toward a deeper knowledge : Como, Italy, may 18-20, 2004. 2.
S. Demidenko ... [et al.]
Piscataway
Institute of electrical and electronics engineers
2004
1454
1459
078038248X
2
Volume a diffusione internazionale
Instrumentation and Measurement Technology Conference (IMTC)
Como
2004
21
IEEE
Convegno internazionale
Intervento inviato
L. Cristaldi, M. Lazzaroni, A. Monti, F. Ponci, F.E. Zocchi
Book Part (author)
none
273
A genetic algorithm for fault identification in electrical drives : a comparison with neuro-fuzzy computation / L. Cristaldi, M. Lazzaroni, A. Monti, F. Ponci, F.E. Zocchi - In: IMTC/2004 : proceedings of the 21. IEEE instrumentation and measurement technology conference : from the electrometer to the networked instruments : a giant step toward a deeper knowledge : Como, Italy, may 18-20, 2004. 2. / [a cura di] S. Demidenko ... [et al.]. - Piscataway : Institute of electrical and electronics engineers, 2004. - ISBN 078038248X. - pp. 1454-1459 (( Intervento presentato al 21. convegno Instrumentation and Measurement Technology Conference (IMTC) tenutosi a Como nel 2004 [10.1109/IMTC.2004.1351341].
info:eu-repo/semantics/conferenceObject
5
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/143342
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