Cite

[1] Randall, R.B. (2011). Vibration-based ConditionMonitoring: Industrial, Aerospace and AutomotiveApplications. Wiley.Search in Google Scholar

[2] He, P., Li, Q., Kong, F. (2010). A new method of feature extraction for gearbox vibration signals. In Image and Signal Processing (CISP) : 3rdInternational Congress, 16-18 October 2010. IEEE, Vol. 8, 3980-3984.Search in Google Scholar

[3] Yang, Z., Hoi, W.I., Zhong, J. (2011). Gearbox fault diagnosis based on artificial neural network and genetic algorithms. In International Conference onSystem Science and Engineering (ICSSE), 8-10 June 2011. IEEE, 37-42.10.1109/ICSSE.2011.5961870Search in Google Scholar

[4] Yang, S., Li, W., Wang, C. (2008). The intelligent fault diagnosis of wind turbine gearbox based on artificial neural network. In International Conferenceon Condition Monitoring and Diagnosis (CMD 2008), 21-24 April 2008. IEEE, 1327-1330.10.1109/CMD.2008.4580221Search in Google Scholar

[5] Mohanty, R., Kar, C., (2006). Fault detection in a multistage gearbox by demodulation of motor current waveform. IEEE Transactions on IndustrialElectronics, 53 (4), 1285-1297.10.1109/TIE.2006.878303Search in Google Scholar

[6] Rajagopalan, S., Habetler, T.G., Harley, R.G., Sebastian, T., Lequesne, B. (2007). Current/voltagebased detection of faults in gears coupled to electric motors. IEEE Transactions on Industry Applications, 42 (6), 1414-1420.Search in Google Scholar

[7] Huang, X., Habetler, T.G., Harley, R.G. (2007). Detection of rotor eccentricity faults in closed-loop drive-connected induction motors using an artificial neural network. IEEE Transactions on PowerElectronics, 22 (4), 1552-1559.10.1109/TPEL.2007.900607Search in Google Scholar

[8] Wan, S.T., Li, H.M., Li, Y.G, Meng, F.C. (2005). Analysis of stator winding parallel-connected branches circulating current and its application in generator fault diagnosis. In Conference Record of the IndustryApplications Conference : Fourthieth IAS AnnualMeeting, 2-6 October 2005. IEEE, Vol. 1, 42-45.Search in Google Scholar

[9] Blodt, M., Chabert, M., Regnier, J., Faucher, J. (2006) Mechanical load fault detection in induction motors by stator current time-frequency analysis. IEEETransactions on Industry Applications, 42 (6), 1454-1463.10.1109/TIA.2006.882631Search in Google Scholar

[10] Thomas, V.V., Vasudevan, K., Kumar, V.J. (2003). Online cage rotor fault detection using air-gap torque spectra. IEEE Transactions on Energy Conversion, 18 (2), 265-270.10.1109/TEC.2003.811718Search in Google Scholar

[11] Gaouda, A.M., Salama, M.M.A., Sultan, M.R., Chikhani, A.Y. (1999). Power quality diction and classification using wavelet-multiresolution signal decomposition. IEEE Transactions on Power Delivery, 14 (4), 1469-1476.10.1109/61.796242Search in Google Scholar

[12] Jena, D.P., Kumar, R. (2011). Implementation of wavelet denoising and image morphology on welding image for estimating HAZ and welding defect. Measurement Science Review, 11 (4), 108-111.10.2478/v10048-011-0020-3Search in Google Scholar

[13] Wei, L., Wang, H., Li, F. (2009). Fault diagnosis of turbine generator vibration based on wavelet packet and data-driven. In ISECS International Colloquiumon Computing, Communication, Control, andManagement (CCCM 2009), 8-9 August 2009. IEEE, Vol. 2, 29-32.Search in Google Scholar

[14] Fan, X., Zuo, M.J. (2006). Gearbox fault detection using Hilbert and wavelet packet transform. Mechanical Systems and Signal Processing, 20 (4), 966-982.10.1016/j.ymssp.2005.08.032Search in Google Scholar

[15] Stockwell, R.G., Mansinha, L., Lowe, R.P. (1996). Localization of the complex spectrum: The Stransform. IEEE Transactions on Signal Processing, 44 (4), 998-1001.10.1109/78.492555Search in Google Scholar

[16] Yuping, Z. (2006). Hilbert-Huang transform and marginal spectrum for detection of bearing localized defects. In The 6th World Congress on IntelligentControl and Automation (WCICA 2006). IEEE, Vol. 2, 5457-5461.Search in Google Scholar

[17] Cheng, J.S., Yu, D.J., Yang, Y. (2007). Application of support vector regression machines to the processing of end effects of Hilbert-Huang transform. Mechanical Systems and Signal Processing, 21 (3), 1197-1211.10.1016/j.ymssp.2005.09.005Search in Google Scholar

[18] Chaovalitwongse, W.A., Fan, Y., Sachdeo, R.C. (2007). On the time series K-nearest neighbor classification of abnormal brain activity. IEEETransactions on System, Man and Cybernetics, Part A:System and Humans, 37 (6), 1005-1016.10.1109/TSMCA.2007.897589Search in Google Scholar

[19] Manoharan, S.C., Veezhinathan, M., Ramakrishnan, S. (2008). Comparison of two ANN methods for classification of spirometer Data. MeasurementScience Review, 8 (3), 53-57.10.2478/v10048-008-0014-ySearch in Google Scholar

[20] Rumelhart, D.E., Hinton, G.E., Willia, R.J. (1986). Learning representations by back-propagation errors. Nature, 323, 533-536.10.1038/323533a0Search in Google Scholar

[21] Song, T., Jamshidi, M.M., Lee, R.R., Huang, M. (2007). A modified probabilistic neural network for partial volume segmentation in brain MR image. IEEETransactions on Neural Network, 18 (5), 1424-1432.10.1109/TNN.2007.89163518220190Search in Google Scholar

[22] Chen, B., Liu, H., Chia, J., Bao, Z. (2009). Large margin feature weighting method via linear programming. IEEE Transactions on Knowledge andData Engineering, 21 (10), 1475-1488.10.1109/TKDE.2008.238Search in Google Scholar

[23] Middlemiss, M.J., Dick, G. (2003). Weighted feature extraction using genetic algorithms for intrusion detection. In The 2003 Congress on EvolutionaryComputation (CEC ‘03), 8-12 December 2003. IEEE, Vol. 3, 1669-1675.Search in Google Scholar

[24] Kennedy, J., Eberhart, R. (1995). Particle swarm optimization. In IEEE International Conference onNeural Networks. IEEE, Vol. 4, 1942-1948.Search in Google Scholar

[25] Biswal, B., Dash, P.K., Panigrahi, B.K. (2009). Power quality disturbance classification using fuzzy C-means algorithm and adaptive particle swarm optimization. IEEE Transactions on Industrial Electronics, 56 (1), 212-220.10.1109/TIE.2008.928111Search in Google Scholar

[26] Parsopoulos, K.E., Vrahatis, M.N. (2002). Particle swarm optimization method for constrained optimization problems. In Intelligent Technologies -Theory and Application: New Trends in IntelligentTechnologies. IOS Press, Vol. 76, 214-220.Search in Google Scholar

[27] Valle, Y.D., Venayagamoorthy, G.K., Mohagheghi, S., Hernandez, J., Harley, R.G. (2008). Particle warm optimization: Basic concepts, variants and applications in power systems. IEEE Transactions on EvolutionComputation, 12 (2), 171-195.Search in Google Scholar

eISSN:
1335-8871
Language:
English
Publication timeframe:
6 times per year
Journal Subjects:
Engineering, Electrical Engineering, Control Engineering, Metrology and Testing