Title
The use of features selection and nearest neighbors rule for faults diagnostic in induction motors
Abstract
This paper deals with the diagnosis of induction motors by pattern recognition methods. The objective is to use existing theories to improve the diagnosis procedures in electrical engineering. First of all, a single signature is determined to monitor several different operating modes. For this purpose, features are extracted from the combination of the stator currents and voltages. Then, the sequential backward algorithm is applied in order to select the most relevant features. The classification is performed by the k-nearest neighbors rule with reject options. The methodology is applied on a 5.5kW motor in normal conditions, then with stator and rotor faults. The experimental results prove the efficiency of pattern recognition methods in condition monitoring of electrical machines.
Year
DOI
Venue
2006
10.1016/j.engappai.2005.07.004
Eng. Appl. of AI
Keywords
Field
DocType
condition monitoring,different operating mode,k-nearest neighbors rule,diagnosis procedure,pattern recognition method,features selection,stator current,electrical machine,electrical engineering,induction motor,pattern recognition,nearest neighbor,feature selection,k nearest neighbors,k nearest neighbor
k-nearest neighbors algorithm,Induction motor,Computer science,Normal conditions,Voltage,Rotor (electric),Artificial intelligence,Condition monitoring,Stator,Machine learning
Journal
Volume
Issue
ISSN
19
2
Engineering Applications of Artificial Intelligence
Citations 
PageRank 
References 
23
1.68
4
Authors
4
Name
Order
Citations
PageRank
R. Casimir1231.68
E. Boutleux2282.17
G. Clerc3363.46
A. Yahoui4231.68