Title :
Stator winding turn-fault detection for closed-loop induction motor drives
Author :
Tallam, Rangarajan M. ; Habetler, Thomas G. ; Harley, Ronald G.
Author_Institution :
Adv. Technol., Rockwell Autom., Milwaukee, WI, USA
Abstract :
Sensorless diagnostics for line-connected machines is based on extracting fault signatures from the spectrum of the line currents. However, for closed-loop drives, the power supply is a regulated current source and, hence, the motor voltages must also be monitored for fault information. In this paper, a previously proposed neural network scheme for turn-fault detection in line-connected induction machines is extended to inverter-fed machines, with special emphasis on closed-loop drives. Experimental results are provided to illustrate that the method is impervious to machine and instrumentation nonidealities, and that it requires lesser data memory and computation requirements than existing schemes, which are based on data lookup tables.
Keywords :
electric machine analysis computing; fault location; induction motor drives; invertors; neural nets; spectral analysis; stators; 19 A; 230 V; 7.5 hp; closed-loop drives; closed-loop induction motor drives; fault information; fault signatures extraction; instrumentation nonidealities; inverter-fed machines; line-connected induction machines; motor voltages; negative sequence; neural network scheme; power supply; regulated current source; stator winding turn-fault detection; turn-fault detection; Data mining; Induction machines; Induction motor drives; Instruments; Monitoring; Neural networks; Power supplies; Stator windings; Table lookup; Voltage;
Journal_Title :
Industry Applications, IEEE Transactions on
DOI :
10.1109/TIA.2003.811784