Abstract
In the field of machinery diagnosis, the utilization of vibration signals is effective in the detection of fault, because the signals carry dynamic information about the machine state. However, knowledge of a distinguishing fault is ambiguous because definite relationships between symptoms and fault types cannot be easily identified. This paper presents an intelligent diagnosis method for a centrifugal pump system using features of vibration signals at an early stage. The diagnosis algorithm is derived using wavelet transform, rough sets and a partially linearized neural network (PNN). ReverseBior wavelet function is used to extract fault features from measured vibration signals and to capture hidden fault information across optimum frequency regions. As the input parameters for the neural network, the non-dimensional symptom parameters that can reflect the characteristics of a signal are defined in the amplitude domain. The diagnosis knowledge for the training of the PNN can be acquired by using the rough sets. We also propose a diagnosis method based on the PNN, one which can deal with the ambiguity problem of condition diagnosis, and distinguish fault types on the basis of the possibility distributions of symptom parameters automatically. The decision method of optimum frequency region for extracting feature signals is also discussed using real plant data. Practical examples of diagnosis for a centrifugal pump system are shown in order to verify the efficiency of the method.











Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.References
Carsten Sk, Vincent C, Roozbeh IZ (2006) Model based fault detection in a centrifugal pump application. IEEE Trans Cont Syst Tech 14(2):204–215
Rajakarunakarana S, Venkumara P, Devaraja D, Surya Prakasa Raob K (2008) Artificial neural network approach for fault detection in rotary system. Appl Soft Comput 8(1):740–748
Perovic S, Unsworth PJ, Higham EH (2001) Fuzzy logic system to detect pump faults from motor current spectra, IEEE, Thirty-Sixth IAS Annual Meeting.
Jing Lin, Liangsheng Qu (2000) Feature extraction based on Morlet wavelet and its application for mechanical fault diagnosis. J Sound Vibrat 234(1):135–148. doi:10.1006/jsvi.2000.2864
Liu B, Ling S-F (1999) On the selection of informative wavelets for machinery diagnosis. Mech Syst Signal Process 13(1):145–162. doi:10.1006/mssp. 1998.0177
Matuyama H (1991) Diagnosis Algorithm. J JSPE 75(3):35–37
Zhu QB (2006) Gear fault diagnosis system based on wavelet neural networks. Dynamics of Continuous Discrete and Impulsive Systems-series A-Mathematical Analysis, vol 13, Part 2 Suppl S, pp 671–673
Becerikli Y (2004) On three intelligent systems: dynamic neural, fuzzy and wavelet networks for training trajectory. Neural Comput Appl 13(4):339–351. doi:10.1007/s00521-004-0429-9
Fang RM (2006) Fault diagnosis of induction machine using artificial neural network and support vector machine. Dynamics of Continuous Discrete and Impulsive Systems-series A-Mathematical Analysis, vol 13, Part 2 Suppl S, pp 658–661
Saxena A, Saad A (2007) Evolving an artificial neural network classifier for condition monitoring of rotating mechanical systems. Appl Soft Comput 7(1):441–454. doi:10.1016/j.asoc.2005.10.001
Samanta B, Al-Balushi KR (2003) Artificial neural network based fault diagnostics of rolling element bearings using time-domain features. Mech Syst Signal Process 17(2):317–328. doi:10.1006/mssp. 2001.1462
Li RQ, Chen J, Wu X (2006) Fault diagnosis of rotating machinery using knowledge-based fuzzy neural network. Appl Math Mech Eng 27(1):99–108
Christopher BMI (1995) Neural networks for pattern recognition. Oxford University Press, NY
Cudina M (2003) Detection of cavitation phenomenon centrifugal pump using audible sound. Mech Syst Signal Process 17(6):1335–1347. doi:10.1006/mssp. 2002.1514
Daubechie I (1990) The wavelet transform, time–frequency localization and signal analysis. IEEE Trans Inf Theory 36:961–1005. doi:10.1109/18.57199
Prabhakar S, Mohanty AR, Sekhar AS (2002) Application of discrete wavelet transform for detection of ball bearing race faults. Tribol Int 35:793–800. doi:10.1016/S0301-679X(02)00063-4
Mallat SG (1989) A theory for Multi-resolution signal decomposition: the wavelet representation. IEEE Trans Pattern Anal Mach Intell 11(7):674–693. doi:10.1109/34.192463
Fukunaga K (1972) Introduction to Statistical Pattern Recognition. Academic Press, London
Pawlak Z (1982) Rough sets. Int J Comput Inf Sci 11:344–356
Milton RS, Uma Maheswari V, Siromoney Arul (2004) Rough sets and relational learning. Lect Notes Comput Sci 3100:321–337
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
About this article
Cite this article
Wang, H., Chen, P. Intelligent diagnosis method for a centrifugal pump using features of vibration signals. Neural Comput & Applic 18, 397–405 (2009). https://doi.org/10.1007/s00521-008-0192-4
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s00521-008-0192-4