Abstract
This review paper looks briefly at conventional approaches and examines the intelligent means for fault diagnosis (FD) and condition monitoring (CM) of electrical drives in detail, especially the ones that are common in Industry 4.0. After giving an overview on fault statistics, standard methods for the FD and CM of rotating machines are first visited, and then its orientation towards intelligent approaches is discussed. Major diagnostic procedures are addressed in detail together with their advancements to date. In particular, the emphasis is given to motor current signature analysis (MCSA) and digital signal processing techniques (DSPTs) mostly used for feature engineering. Consequently, the statistical procedures and machine learning techniques (stemming from artificial intelligence—AI) are also visited to describe how FD is carried out in various systems. The effectiveness of the amalgamation of the model, signal, and data-based techniques for the FD and CM of inductions motors (IMs) is also highlighted in this review. It is worth mentioning that a variety of neural- and non-neural-based approaches are discussed concerning major faults in rotating machines. Finally, after a thorough survey of the diagnostic techniques based on specific faults for electrical drives, several open problems are identified and discussed. The paper concludes with important recommendations on where to divert the research focus considering the current advancements in the FD and CM of rotating machines.
Subject
Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction
Reference183 articles.
1. Senanayaka, J.S.L., Kandukuri, S.T., Van Khang, H., and Robbersmyr, K.G. (2017, January 20–21). Early detection and classification of bearing faults using support vector machine algorithm. Proceedings of the 2017 IEEE Workshop on Electrical Machines Design, Control and Diagnosis (WEMDCD), Nottingham, UK.
2. Induction machine diagnosis using stator current advanced signal processing;Choqueuse;Int. J. Energy Convers.,2015
3. Trends in fault diagnosis for electrical machines: A review of diagnostic techniques;Henao;IEEE Ind. Electron. Mag.,2014
4. Filippetti, F., Bellini, A., and Capolino, G.-A. (2013, January 11–12). Condition monitoring and diagnosis of rotor faults in induction machines: State of art and future perspectives. Proceedings of the 2013 IEEE Workshop on Electrical Machines Design, Control and Diagnosis (WEMDCD), Paris, France.
5. Toliyat, H.A., Nandi, S., Choi, S., and Meshgin-Kelk, H. (2012). Electric Machines: Modeling, Condition Monitoring, and Fault Diagnosis, CRC Press.
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