Characterization and Classification of Hall Sensor Faults using S-Transform Analysis on BLDC Motor Drive

S. Gowtham, I. Keerthana, M. Balaji
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引用次数: 2

Abstract

Brushless DC (BLDC) Motors are widely used in electric vehicles because of its excellent controllability. Controllability is obtained with the help of hall sensors. So dynamic analysis considering both normal and fault cases in hall sensor is very important in determining the performance of BLDC motor. This paper proposes a fault diagnostic procedure for hall sensor failures in BLDC motor drive. The faulty hall sensors results in improper switching sequence which in turn results in torque pulsations and deteriorates the motor performance. The stator current behaviour depends on the hall signals, so in this paper we have taken stator current as the parameter for diagnosing the fault. Stockwell Transform(S-Transform) is used for diagnosing the faults from the stator current. The features obtained from S-Transform analysis are used for detecting and classifying the faults associated with the hall sensors. The simulation and Hardware studies were carried out to validate the proposed fault diagnosis procedure.
基于s变换分析的无刷直流电机霍尔传感器故障表征与分类
无刷直流电机以其优异的可控性在电动汽车中得到了广泛的应用。在霍尔传感器的帮助下实现了系统的可控性。因此,考虑霍尔传感器正常和故障情况的动态分析对于确定无刷直流电机的性能是非常重要的。提出了一种无刷直流电机驱动中霍尔传感器故障的诊断方法。故障的霍尔传感器会导致开关顺序不当,进而导致转矩脉动,降低电机性能。定子电流的行为取决于霍尔信号,因此本文将定子电流作为故障诊断的参数。采用斯托克韦尔变换(S-Transform)对定子电流进行故障诊断。利用s变换分析得到的特征对霍尔传感器相关故障进行检测和分类。通过仿真和硬件实验验证了所提出的故障诊断方法。
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