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Detection and Evaluation of the Interturn Short Circuit Fault in a BLDC-Based Hub Motor

Hui Wang, Jiliang Wang, Xiaoxian Wang, Siliang Lu, Cungang Hu, Wenping Cao

2022IEEE Transactions on Industrial Electronics41 citationsDOI

Abstract

A brushless dc (BLDC) motor with an outer rotor has great potential for emerging electric vehicle (EV) applications as an in-wheel hub motor. Interturn short circuit faults (ISCFs) are common electrical faults in these applications, and their fault diagnosis is of critical importance. This article proposes a signal analysis-based method to detect and quantitatively analyze the ISCF in a BLDC motor under a six-step commutation control strategy. The zero-sequence voltage component (ZSVC) and three-phase currents are simultaneously determined while the fundamental frequency amplitude of the ZSVC is developed as a fault indicator for diagnostic purposes. Thereafter, the faulty phase is identified, and the fault severity is estimated by jointly analyzing the ZSVC and faulted phase current. The proposed technique entails creating an analytical model, a simulation model, and experimental tests. Experimental results demonstrate that the proposed technique has excellent accuracy, quick response, and real-time fault diagnosis for BLDC motors. This technique will accelerate the use of BLDC-based hub motors in EVs and the widespread application of EVs to reduce the carbon emissions.

Topics & Concepts

Fault (geology)CommutationRotor (electric)Fault detection and isolationVoltageComputer scienceControl theory (sociology)SIGNAL (programming language)EngineeringMotor driveActuatorElectrical engineeringControl (management)Artificial intelligenceMechanical engineeringSeismologyProgramming languageGeologyMachine Fault Diagnosis TechniquesMultilevel Inverters and ConvertersElectric Motor Design and Analysis
Detection and Evaluation of the Interturn Short Circuit Fault in a BLDC-Based Hub Motor | Litcius