Intelligent Diagnosis Method for Rotating Machinery Using Wavelet Transform and Ant Colony Optimization

This paper proposes an intelligent diagnosis method for condition diagnosis of rotating machinery by using wavelet transform (WT) and ant colony optimization (ACO), in order to detect faults and distinguish fault types at an early stage. The WT is used to extract a feature signal of each machine state from a measured vibration signal for for high-accuracy condition diagnosis. The decision method of optimum frequency area for the extraction of the feature signal is discussed by using real plant data. We convert the state identification for the condition diagnosis of rotating machinery to a clustering problem of the values of the nondimensional symptom parameters (NSPs). ACO is introduced for this purpose. NSPs are calculated with the recomposed signals of each frequency level. These parameters can reflect the characteristics of the signals measured for the condition diagnosis. The synthetic detection index (SDI), on the basis of statistical theory, is defined to evaluate the applicability of the NSPs. The SDI can be used to select better NSPs for the ACO. Practical examples of diagnosis for a bearing used in the centrifugal fan system are shown to verify the effectiveness of the methods proposed in this paper.

[1]  Jing Lin,et al.  Feature Extraction Based on Morlet Wavelet and its Application for Mechanical Fault Diagnosis , 2000 .

[2]  Peng Chen,et al.  Automated function generation of symptom parameters and application to fault diagnosis of machinery under variable operating conditions , 2001, IEEE Trans. Syst. Man Cybern. Part A.

[3]  A. Mohanty,et al.  APPLICATION OF DISCRETE WAVELET TRANSFORM FOR DETECTION OF BALL BEARING RACE FAULTS , 2002 .

[4]  豊田 利夫,et al.  生産プラントの知的点検・診断ロボットに関する研究(第2報) : 異常音のスペクトルによる異常設備のファジィ探索法 , 1996 .

[5]  T. Stützle,et al.  MAX-MIN Ant System and local search for the traveling salesman problem , 1997, Proceedings of 1997 IEEE International Conference on Evolutionary Computation (ICEC '97).

[6]  M. Dorigo,et al.  1 Positive Feedback as a Search Strategy , 1991 .

[7]  Marco Dorigo,et al.  Ant algorithms and stigmergy , 2000, Future Gener. Comput. Syst..

[8]  Qin Fangjun Decision-making in Multi-fault State Complex System Based on Ant Colony Algorithm , 2004 .

[9]  J. Jeffrey Richardson,et al.  Artificial Intelligence in Maintenance , 1985 .

[10]  Toshio Toyota,et al.  Fuzzy diagnosis and fuzzy navigation for plant inspection and diagnosis robot , 1995, Proceedings of 1995 IEEE International Conference on Fuzzy Systems..

[11]  Luca Maria Gambardella,et al.  A Study of Some Properties of Ant-Q , 1996, PPSN.

[12]  Atul K Madan Clinical diagnostics versus a theoretic algorithm in diagnosing abdominal pain. , 2005, Southern medical journal.

[13]  Keinosuke Fukunaga,et al.  Introduction to Statistical Pattern Recognition , 1972 .

[14]  Alain Hertz,et al.  Ants can colour graphs , 1997 .

[15]  Ingrid Daubechies,et al.  The wavelet transform, time-frequency localization and signal analysis , 1990, IEEE Trans. Inf. Theory.

[16]  Luca Maria Gambardella,et al.  Ant colony system: a cooperative learning approach to the traveling salesman problem , 1997, IEEE Trans. Evol. Comput..

[17]  Shih-Fu Ling,et al.  On the selection of informative wavelets for machinery diagnosis , 1999 .