Abstract
Fault diagnosis gets increasing importance in today’s production environment and with the advancements in the field of artificial intelligence, researchers look for new ways to keep a system away from faults, that would interrupt the production. In recent years, many papers were written regarding this subject especially regarding predictive maintenance and fault diagnosis. This paper presents recent works that expose new methods for intelligent fault diagnosis. This step is important for future research in order to have a better understanding of state of the art algorithms and look for ways to improve the existing fault diagnosis approaches. The focus will be on electrical systems and actuators and manipulating systems (robots), production experience showing that the mechanical parts are the most exposed to production-ending faults. That’s why most of the observer systems are using vibrations as the main data for their algorithms, but also other measurements can provide useful information about the condition of a system.
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References
Mouzakitis, A.: Classification of fault diagnosis methods for control systems. Meas. Control 46(10), 303–308 (2013)
Verma, V., Gordon, G., Simmons, R., Thrun, S.: Real-time fault diagnosis. IEEE Robot. Autom. Mag. 11, 56–66 (2004)
Catterson, V.M., McArthur, S.D.J.: The industrialization of a multi-agent system for power transformer condition monitoring. In: Applications and Innovations in Intelligent Systems XII, pp. 165–178 (2002)
Isermann, R.: Model-based fault-detection and diagnosis – status and applications. Annual Reviews in Control 29, 71–85 (2005)
Cho, H.C., Kim, K.S., Song, C.H., Lee, Y.J., Lee, K.S.: Online fault detection and diagnosis algorithm based on probabilistic model for induction machines. In: SICE Annual Conference (2008)
Su, H., Chong, K.T.: Induction machine condition monitoring using neural network modelling. IEEE Trans. Ind. Electron. 54(1), 241–249 (2007)
Su, H., Xi, W., Chong, K.T.: Vibration signal analysis for electrical fault detection of induction machine using neural networks. In: International Symposium on Information Technology Convergence (2007)
Wang, W., Wong, A.K.: Autoregressive model-based gear fault diagnosis. J. Vibr. Acoust. 124, 173 (2002)
Ghoshal, S.K., Samanta, S.: Model based fault diagnosis of a belt conveyor through parameter estimation
Li, W., Wang, Z., Zhu, Z., Zhou, G., Chen, G.: Design of online monitoring and fault diagnosis system for belt conveyors based on wavelet packet decomposition and support vector machines. Adv. Mech. Eng. 5, 797183 (2013)
Ding, S.X., Schneider, S., Ding, E.L., Rehm, A.: Advanced model-based diagnosis of sensors faults in vehicle dynamics control systems. In: 16th Triennial World Congress, Prague, Czech Republic (2005)
Jan, S.U., Lee, Y.-D., Shin, J., Koo, I.: Sensor fault classification based on support vector machine and statistical time-domain features. IEEE Access 5, 8682–8690 (2017)
Mendoza, J.P., Veloso, M., Simmons, R.: Mobile robot fault diagnosis based on redundant information statistics
Liu, Honghai, Coghill, George M.: A model-based approach to robot fault diagnosis. Knowl. Based Syst. 18, 225–233 (2005)
Anand, M.D., Selvaraj, T., Kumanan, S.: Fault detection and fault tolerance methods for industrial robot manipulators based on hybrid approach. Adv. Prod. Eng. Manag. 7, 225–226 (2012)
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Cordoneanu, D., Niţu, C. (2019). A Review of Fault Diagnosis in Mechatronics Systems. In: Gheorghe, G. (eds) Proceedings of the International Conference of Mechatronics and Cyber-MixMechatronics – 2018. ICOMECYME 2018. Lecture Notes in Networks and Systems, vol 48. Springer, Cham. https://doi.org/10.1007/978-3-319-96358-7_18
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DOI: https://doi.org/10.1007/978-3-319-96358-7_18
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