RT info:eu-repo/semantics/article T1 Robust Detection of Incipient Faults in VSI-Fed Induction Motors Using Quality Control Charts A1 García Escudero, Luis Ángel A1 Duque Pérez, Óscar A1 Fernández Temprano, Miguel Alejandro A1 Moríñigo Sotelo, Daniel AB A considerable amount of papers has been published in recent years proposing supervised classifiers to diagnose the health of a machine. The usual procedure with these classifiersis to train them using data acquired through controlled experiments, expecting them to perform well on new data, classifying correctly the condition of a motor. But, obviously, the new motorto be diagnosed cannot be the same that has been used during the training process; it may be a motor with different characteristics and fed from a completely different source. These different conditions between the training process and the testing one can deeply influence the diagnosis. To avoid these drawbacks, in this paper, a new method is proposed, which is based on robust statistical techniques applied in quality control applications. The proposedmethod is based on the online diagnosis of the operating motor and can detect deviations from the normal operational conditions. A robust approach has been implemented using high-breakdown statistical techniques, which can reliably detect anomalous data that often cause an unexpected overestimation of the data variability, reducing the ability of standard procedures to detect faulty conditions in earlier stages. A case study is presented to prove thevalidity of the proposed approach. Motors of different characteristics, fed from the power line and several different inverters, are tested. Three different fault conditions are provoked: a broken bar, a faulty bearing, and mixed eccentricity. Experimental resultsprove that the proposed approach can detect incipient faults. YR 2017 FD 2017 LK http://uvadoc.uva.es/handle/10324/25941 UL http://uvadoc.uva.es/handle/10324/25941 LA eng NO IEEE Transactions on Industry Applications, Vol 53(3), 3076-3085. NO Producción Científica DS UVaDOC RD 24-nov-2024