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Detection of various failure causes in complex mechanical systems by the use of Artificial Neural Networks

p. 253-268

Abstract

The paper presents a methodology based on Artificial Neural Networks (ANN) to perform on-line a diagnosis of the health state of a machinery. The procedure at issue permits to detect the presence of backlash and to determine possible structural failures inside a mechanical system. Backlash and damages are important causes of vibrations in machines, therefore vibrations monitoring gives indirect information on these parasite effects. An ANN is used to classify the system behaviour among a predefined number of classes, receiving as input vibrational signals (simulated or measured). An application is discussed for devices purposely built for indexing motion, where compliance plays an important rôle, affecting the dynamic behavior of the whole machine. An analysis of parameters sensibility for the proposed procedure on simulated cases highlighted the best values and choices for these parameters. Tests of the procedure on experimental data collected on actual devices match closely the good results achieved with simulations.

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References

Bibliographical reference

Rodolfo Faglia, Monica Tiboni and M. Antonini, « Detection of various failure causes in complex mechanical systems by the use of Artificial Neural Networks », CASYS, 15 | 2004, 253-268.

Electronic reference

Rodolfo Faglia, Monica Tiboni and M. Antonini, « Detection of various failure causes in complex mechanical systems by the use of Artificial Neural Networks », CASYS [Online], 15 | 2004, Online since 10 October 2024, connection on 27 December 2024. URL : http://popups.uliege.be/3041-539x/index.php?id=2153

Authors

Rodolfo Faglia

University of Brescia, Mechanical Engineering Department, via Branze 38, Brescia, Italy

By this author

Monica Tiboni

University of Brescia, Mechanical Engineering Department, via Branze 38, Brescia, Italy

By this author

M. Antonini

University of Brescia, Mechanical Engineering Department, via Branze 38, Brescia, Italy

Copyright

CC BY-SA 4.0 Deed