Title :
A genetic algorithm for fault identification in electrical drives: a comparison with neuro-fuzzy computation
Author :
Cristaldi, L. ; Lazzaroni, M. ; Monti, A. ; Ponci, F. ; Zocchi, F.E.
Author_Institution :
Dipt. di Elettrotecnica, Politecnico di Milano, Italy
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.
Keywords :
AC motor drives; computerised monitoring; fault diagnosis; fuzzy neural nets; genetic algorithms; risk analysis; virtual instrumentation; AC motor drive; diagnostic tool; electrical drives; fault identification; fuzzy indexes; genetic algorithm; induction motor drive; monitoring systems; neural network; neuro-fuzzy computation; risk coefficients; risk indexes; sensorless instrument; virtual instrument; AC motors; Electrical products industry; Environmental economics; Fault diagnosis; Genetic algorithms; Industrial economics; Instruments; Monitoring; Production systems; Signal processing;
Conference_Titel :
Instrumentation and Measurement Technology Conference, 2004. IMTC 04. Proceedings of the 21st IEEE
Print_ISBN :
0-7803-8248-X
DOI :
10.1109/IMTC.2004.1351341