Title :
A method to detect broken bars in induction machine using pattern recognition techniques
Author :
Ondel, Olivier ; Boutleux, Emmanuel ; Clerc, Guy
Author_Institution :
Centre de Genie Electrique de Lyon, Ecole Centrale de Lyon, Ecully
Abstract :
In this paper, a pattern recognition (PR) method is used to provide the tracking and the diagnosis of a system. First of all, from measurements carried out on the system, features are extracted from current and voltage measurements without any other sensors. These features are used to build up a pattern vector, which is considered as the system signature. Then, a feature selection method is applied in order to select the most relevant features, which define the representation space. The decision phase is based on the "k-nearest neighbors" (knn) rule, associated with an evolution tracking of system using trajectory allowing a diagnosis not only of states defined in the training set, but also of the intermediate states. The appearance of a new operating mode is taken into account in order to enrich the initial knowledge base and thus to improve the diagnosis. This approach is illustrated on asynchronous motor of 5.5 kW with squirrel cage, in order to detect broken bars under any load level. The experimental results prove the efficiency of PR methods in condition monitoring of electrical machines
Keywords :
asynchronous machines; condition monitoring; pattern recognition; 5.5 kW; asynchronous motor; broken bars detection; condition monitoring; current measurement; evolution tracking; feature extraction; feature selection method; induction machine; k-nearest neighbors rule; pattern recognition; representation space; squirrel cage; voltage measurement; Bars; Condition monitoring; Current measurement; Feature extraction; Induction machines; Pattern recognition; Sensor phenomena and characterization; Sensor systems; Trajectory; Voltage measurement; Fault detection and diagnosis; features selection; induction motor; pattern recognition (PR);
Journal_Title :
Industry Applications, IEEE Transactions on
DOI :
10.1109/TIA.2006.876071