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A System for the Analysis of Jet Engine Vibration Data

Published: 01 January 1999 Publication History

Abstract

A system has been developed to extract diagnostic information from jet engine carcass vibration data. The system consists of a number of modules, each of which focuses on particular subsets of the data known to hold valuable information. Two of these modules, based on neural network techniques, are described in detail in this paper. In the first module, novelty detection provides a measure of how unusual the shape of a vibration signature is, by learning a representation of normality based entirely on normal examples. The low-dimensional vectors which encode vibration signatures are normalised by an appropriate transform before their distribution is modelled by a few kernels, whose placement is optimised by clustering techniques. Novelty is then measured as the local distance from the nearest kernel centre. This method provides good separation between usual and unusual vibration signatures but, given the small number of examples of normal engines, the resulting representation of normalitymay be overfitting the training data. The severity of this effect is investigated for two different normalising transforms. The second module detects sudden transitions in vibration signature curves. A multi-layer-perceptron is trained to predict one step-ahead for curves without these unexpected transitions. Sudden transitions in the test engine data are then reported whenever the prediction error exceeds a predetermined threshold.

References

[1]
Bishop, C. M. (1994) "Novelty detection and neural network validation," IEE Proceedings - Vision, Image and Signal Processing 141(4): 217-222.
[2]
Bishop, C. M. (1995) Neural Networks for Pattern Recognition, Clarendon Press, Oxford.
[3]
Cowley, P. H., and Carr, H. R. (1995) "Application of neural networks to aero engine vibration monitoring," Proceedings of 5th European Propulsion Forum, Italy (unpublished).
[4]
Duda, R. O., and Hart, P. E. (1973) Pattern Classification and Scene Analysis, Wiley, New York.
[5]
Haddad, S. D., Chatterji, G. B., and Ogunfunmi, T. (1994) "A ball bearing fault detector using neural network based vibration algorithms," Proceedings - Intelligent Engineering Systems Through Artificial Neural Networks 4: 967-972, ASME, New York, USA.
[6]
Harris, T. (1993) "A Kohonen SOM based, machine health monitoring system which enables diagnosis of faults not seen in the training set," Proceedings International Conference on Neural Networks 1: 947-950, IEEE, New York, USA.
[7]
Haykin, S. (1994) Neural Networks, Macmillan College Publishing Company.
[8]
Hsin, H. H., and Wang, H. P. (1996) "An integrated monitoring and diagnostic system for roller bearings," International Journal of Advanced Manufacturing Technology 12(1): 37-46.
[9]
Kerezsi, B., and Howard, I. (1995) "Vibration fault detection of large turbogenerators using neural networks," Proceedings International Conference on Neural Networks 1: 121-126, IEEE, New York, USA.
[10]
Robinson, T. W., Bodruzzaman, M., Malkani, M., Pap, R. M., and Priddy, K. L. (1994) "Search for an improved time-frequency technique for neural network-based helicopter gearbox fault detection and classification," Proceedings of World Congress on Neural Networks 2: 238-243, Lawrence Erlbaum Associates, Hillsdale, NJ, USA.
[11]
Roehl, N. M., Pedreira, C. E., and Teles De Azevedo, H. R. (1995) "Fuzzy ART neural network approach for incipient fault detection and isolation in rotating machines," Proceedings International Conference on Neural Networks 1: 538-542. IEEE, New York, USA.
[12]
Tarassenko, L., Hayton, P., Cerneaz, N., and Brady, M. (1995) "Novelty detection for the identification of masses in mammograms," Proceedings - 4th IEE International Conference on Artificial Neural Networks, Cambridge, pages 442-447, IEE Conference Publication No. 409.
[13]
Tse, P., and Wang, D. D. (1996) "A hybrid neural networks based machine condition forecaster and classifier by using multiple vibration parameters," Proceedings International Conference on Neural Networks 4: 2096- 2100, IEEE, New York, USA.
[14]
Zhang, S., Ganesan, R., and Xistris, G. D. (1996) "Self-organising neural networks for automated machinery monitoring systems," Mechanical Systems and Signal Processing 10(5): 517-532.

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cover image Integrated Computer-Aided Engineering
Integrated Computer-Aided Engineering  Volume 6, Issue 1
January 1999
86 pages

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IOS Press

Netherlands

Publication History

Published: 01 January 1999

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