Condition monitoring of induction motors : A review and an application of an ensemble of hybrid intelligent models


Autoria(s): Seera,M; Lim,CP; Nahavandi,S; Loo,CK
Data(s)

01/08/2014

Resumo

In this paper, a review on condition monitoring of induction motors is first presented. Then, an ensemble of hybrid intelligent models that is useful for condition monitoring of induction motors is proposed. The review covers two parts, i.e.; (i) a total of nine commonly used condition monitoring methods of induction motors; and (ii) intelligent learning models for condition monitoring of induction motors subject to single and multiple input signals. Based on the review findings, the Motor Current Signature Analysis (MCSA) method is selected for this study owing to its online, non-invasive properties and its requirement of only single input source; therefore leading to a cost-effective condition monitoring method. A hybrid intelligent model that consists of the Fuzzy Min-Max (FMM) neural network and the Random Forest (RF) model comprising an ensemble of Classification and Regression Trees is developed. The majority voting scheme is used to combine the predictions produced by the resulting FMM-RF ensemble (or FMM-RFE) members. A benchmark problem is first deployed to evaluate the usefulness of the FMM-RFE model. Then, the model is applied to condition monitoring of induction motors using a set of real data samples. Specifically, the stator current signals of induction motors are obtained using the MCSA method. The signals are processed to produce a set of harmonic-based features for classification using the FMM-RFE model. The experimental results show good performances in both noise-free and noisy environments. More importantly, a set of explanatory rules in the form of a decision tree can be extracted from the FMM-RFE model to justify its predictions. The outcomes ascertain the effectiveness of the proposed FMM-RFE model in undertaking condition monitoring tasks, especially for induction motors, under different environments. © 2014 Elsevier Ltd. All rights reserved.

Identificador

http://hdl.handle.net/10536/DRO/DU:30070153

Idioma(s)

eng

Publicador

Elsevier

Relação

http://dro.deakin.edu.au/eserv/DU:30070153/seera-conditionmonitoring-2014.pdf

http://www.dx.doi.org/10.1016/j.eswa.2014.02.028

Direitos

2014, Elsevier

Palavras-Chave #Condition monitoring #Fuzzy Min-Max neural network #Induction motor #Motor Current Signature Analysis #Random Forest #Science & Technology #Technology #Computer Science, Artificial Intelligence #Engineering, Electrical & Electronic #Operations Research & Management Science #Computer Science #Engineering #BROKEN ROTOR BAR #FAULT-DIAGNOSIS #NEURAL-NETWORK #ECCENTRICITY FAULTS #DECISION TREES #ELECTRICAL MACHINES #DYNAMIC-SYSTEMS #CLASSIFICATION #MAINTENANCE #VIBRATION
Tipo

Journal Article