Accesso libero

Effectiveness Analysis of Rolling Bearing Fault Detectors Based On Self-Organising Kohonen Neural Network – A Case Study of PMSM Drive

INFORMAZIONI SU QUESTO ARTICOLO

Cita

Akar, M., Hekim, M. and Orhan, U. (2015). Mechanical Fault Detection in Permanent Magnet Synchronous Motors Using Equal Width Discretization-Based Probability Distribution and a Neural Network Model. Turkish Journal of Electrical Engineering and Computer Sciences, 23(3), pp. 813–823.10.3906/elk-1210-58 Search in Google Scholar

Breard, G. T. (2017). Evaluating Self-Organizing Map Quality Measures as Convergence Criteria. University of Rhode Island: Open Access Master’s Theses, Paper 1033. Search in Google Scholar

Ewert, P., Kowalski, C. T. and Orlowska-Kowalska, T. (2020). Low-Cost Monitoring and Diagnosis System for Rolling Bearing Faults of the Induction Motor Based on Neural Network Approach. Electronics, 9(9), pp. 1334.10.3390/electronics9091334 Search in Google Scholar

Ewert, P., Orlowska-Kowalska, T. and Jankowska, K. (2021). Effectiveness Analysis of PMSM Motor Rolling Bearing Fault Detectors Based on Vibration Analysis and Shallow Neural Networks. Energies, 14(3), pp. 712.10.3390/en14030712 Search in Google Scholar

Faiz, J., Takbash, A. M. and Mazaheri-Tehrani, E. (2017). A Review of Application of Signal Processing Techniques for Fault Diagnosis of Induction Motors—Part I. AUT Journal of Electrical Engineering, 49(2), pp. 109–122. Search in Google Scholar

Frosini, L., Harlişca, C. and Szabó, L. (2015). Induction Machine Bearing Fault Detection by Means of Statistical Processing of the Stray Flux Measurement. IEEE Transactions on Industrial Electronics, 62(3), pp. 1846–1854.10.1109/TIE.2014.2361115 Search in Google Scholar

Germen E., Başaran M. and Fidan M. (2014). Sound Based Induction Motor Fault Diagnosis Using Kohonen Self-Organizing Map. Mechanical Systems and Signal Processing, 46(1), pp. 45–58.10.1016/j.ymssp.2013.12.002 Search in Google Scholar

He, J., Somogyi, C., Strandt, A. and Demerdash, N. A. (2014). Diagnosis of Stator Winding Short-Circuit Faults in an Interior Permanent Magnet Synchronous Machine. In: Proceedings of the 2014 IEEE Energy Conversion Congress and Exposition (ECCE), USA: Pittsburgh, PA.10.1109/ECCE.2014.6953825 Search in Google Scholar

Henao, H., Capolino, G. A., Fernandez-Cabanas, M., Filippetti, F., Bruzzese, C., Strangas, E., Pusca, R., Estima, J., Riera-Guasp, M. and Hedayati-Kia, S. (2014). Trends in Fault Diagnosis for Electrical Machines: A Review of Diagnostic Techniques. IEEE Industrial Electronics Magazine, 8(2), pp. 31–42.10.1109/MIE.2013.2287651 Search in Google Scholar

Immovilli, F., Bellini, A., Rubini, R. and Tassoni, C. (2010). Diagnosis of Bearing Faults in Induction Machines by Vibration or Current Signals: A Critical Comparison. IEEE Transactions on Industry Applications. 46(4), pp. 1350–1359.10.1109/TIA.2010.2049623 Search in Google Scholar

Jaganathan, B., Venkatesh, S., Bhardwaj, Y. and Prakash, C. A. (2011). Kohonen’s Self Organizing Map Method of Estimation of Optimal Parameters of a Permanent Magnet Synchronous Motor drive. In: Proceedings of the India International Conference on Power Electronics 2010 (IICPE2010), New Delhi, India.10.1109/IICPE.2011.5728132 Search in Google Scholar

Kohonen, T. (2001). Self-Organizing Maps. Berlin, Germany: Springer.10.1007/978-3-642-56927-2 Search in Google Scholar

Liu, H., Li, D., Yuan, Y., Zhang, S., Zhao, H. and Deng, W. (2019). Fault Diagnosis for a Bearing Rolling Element Using Improved VMD and HT. Applied Sciences, 9(7), pp. 1439.10.3390/app9071439 Search in Google Scholar

Lu, S., He, Q. and Zhao, J. (2018). Bearing Fault Diagnosis of a Permanent Magnet Synchronous Motor via a Fast and Online Order Analysis Method in an Embedded System. Mechanical Systems and Signal Processing, 113, pp. 36–49.10.1016/j.ymssp.2017.02.046 Search in Google Scholar

Nkuna, J. S. R. (2006). Vibration Condition Monitoring and Fault Classification of Rolling Element Bearings Utilising Kohonen’s Self-organising Maps. Theses and Dissertations (Mechanical Engineering). Ph.D. Thesis, Vaal University of Technology: Vanderbijlpark, South Africa. Search in Google Scholar

Picot, A., Obeid, Z., Régnier, J., Poignant, S., Darnis, O. and Maussion, P. (2014). Statistic-Based Spectral Indicator for Bearing Fault Detection in Permanent-Magnet Synchronous Machines Using the Stator Current. Mechanical Systems and Signal Processing, 46(2), pp. 424–441.10.1016/j.ymssp.2014.01.006 Search in Google Scholar

Rosero, J., Romeral, L., Rosero, E. and Urresty, J. (2009). Fault Detection in Dynamic Conditions by means of Discrete Wavelet Decomposition for PMSM Running Under Bearing Damage. In: Proceedings of the 2009 Twenty-Fourth Annual IEEE Applied Power Electronics Conference and Exposition, Washington, DC, USA.10.1109/APEC.2009.4802777 Search in Google Scholar

Skora, M., Ewert, P. and Kowalski, C. T. (2019). Selected Rolling Bearing Fault Diagnostic Methods in Wheel Embedded Permanent Magnet Brushless Direct Current Motors. Energies, 12(21), pp. 4212.10.3390/en12214212 Search in Google Scholar

Skowron, M., Wolkiewicz, M., Orlowska-Kowalska, T. and Kowalski, C. T. (2019). Effectiveness of Selected Neural Network Structures Based on Axial Flux Analysis in Stator and Rotor Winding Incipient Fault Detection of Inverter-fed Induction Motors. Energies, 12(12), pp. 2392.10.3390/en12122392 Search in Google Scholar

Ullah, Z., Lodhi, B. A. and Hur, J. (2020). Detection and Identification of Demagnetization and Bearing Faults in PMSM Using Transfer Learning-Based VGG. Energies, 13(15), pp. 3834.10.3390/en13153834 Search in Google Scholar

Zhang, J., Wu, J., Hu, B. and Tang, J. (2020). Intelligent Fault Diagnosis of Rolling Bearings Using Variational Mode Decomposition and Self-Organizing Feature Map. Journal of Vibration and Control, 26(21–22), pp. 1886–1897.10.1177/1077546320911484 Search in Google Scholar

eISSN:
2543-4292
Lingua:
Inglese
Frequenza di pubblicazione:
Volume Open
Argomenti della rivista:
Computer Sciences, Artificial Intelligence, Engineering, Electrical Engineering, Electronics