Stator Winding InterTurn Short-Circuit Fault Detection in WRIM Using Rise and Fall Times of Stator Currents

被引:0
作者
Bilal, Habachi [1 ,2 ]
Dyagileva, Svetlana [2 ]
Heraud, Nicolas [2 ]
Sambatra, Eric Jean Roy [3 ]
Ravelo, Blaise [4 ]
机构
[1] Laboratory of Electrical Engineering and Power Electronics, University of Lille, Arts et Metiers Institute of Technology Centrale Lille, Yncrea Hauts-de-France, ULR 2697-L2EP, Lille
[2] Department of Renewable Energies, UMR CNRS 6134, University of Corsica, Corte
[3] Department of Industrial Engineering, Higher Institute of Technology (IST-D), Antsiranana
[4] Nanjing University of Information Science & Technology (NUIST), School of Electronic & Information Engineering, Jiangsu, Nanjing
关键词
Asynchronous machinery - Automatic teller machines - Electric current regulators - Fracture mechanics - Induction machine - Process control - Rotating machinery - Rotors (windings) - Short circuit currents - Speed regulators - Synchronous machinery;
D O I
10.2528/PIERC24061905
中图分类号
学科分类号
摘要
One of the major challenges of today’s rotating machine manufacturing industries is finding effective techniques to prevent early mechanical or electrical failure. Efficient troubleshooting methods must be developed for rotating electrical machines, such as three-phase and multiphase electrical induction or synchronous machines. A novel method for fault detection in a Wound Rotor Induction Machine (WRIM) is presented in this paper. Its originality lies in the determination of current rise and fall times in healthy and InterTurn short-Circuit Fault (ITSCF) cases. The method is based on using the two-current (isd, isq) sigmoid transform (ST) of Park’s vector approach. A WRIM with a nominal power of 0.3 kW is used for the analytical and experimental studies. The type of fault detection being studied is short circuit InterTurns on one phase of the stator winding. The results are promising because the methodology used is simple, fast, and accurate for diagnosing this type of fault, and can detect a low number of short-circuit InterTurns in the stator winding. © 2024, Electromagnetics Academy. All rights reserved.
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页码:109 / 116
页数:7
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