Το work with title Intelligent online quality control using discrete wavelet analysis features and likelihood classification by Zervakis Michalis, Pouliezos, A.D., 1951-, Stavrakakis Georgios, Enrico Tomasini, Nicola Paone, Lorenzo Scalise is licensed under Creative Commons Attribution 4.0 International
Bibliographic Citation
S. Goumas, M. Zervakis, A. Pouliezos, G.S. Stavrakakis, E. P. Tomasini, N.Paone, L. Scalise ,"Intelligent online quality control using discrete wavelet analysis features and likelihood classification ,"in 2000 4th Intern.l Conf. on Vibration Meas. by Laser Techniques,pp.500-511.doi:10.1117/12.386766
https://doi.org/10.1117/12.386766
This paper presents a method for extracting features in the wavelet domain of vibration velocity transient signals of washing machines, that are then used for classification of the state (acceptable-faulty) of the product. The Discrete Wavelet Transform in conjunction with Statistical Digital Signal Processing techniques are used for feature extraction. The performance of this feature set is compared to features obtained through standard Fourier analysis of the stationary part of the signal. Minimum distance Bayes classifiers are used for classification purposes. Measurements from a variety of defective/non-defective washing machines taken in the laboratory as well as from the production line are used to illustrate the applicability of the proposed method.