首页> 外文会议>11th International Conference on Electrical Machines and Systems(第11届国际电机与系统会议)论文集 >Detection of Rotor Bar Breaking Fault in Induction Motors Based on Hilbert Modulus Gyration Radius of Filtered Stator Current Signal
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Detection of Rotor Bar Breaking Fault in Induction Motors Based on Hilbert Modulus Gyration Radius of Filtered Stator Current Signal

机译:基于滤波后的定子电流信号的希尔伯特模数回转半径的感应电动机转子断条故障检测

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According to the basic characteristic of rotor bar breaking fault in induction motors and the physical concept of Hilbert transform of sinusoidal signal, this paper gives the definition of Hilbert modulus of filtered stator current signal of induction motors and presents its algorithm by blending Hilbert transform, spectrum analysis/correction and self-adaptive filter techniques perfectly. And then, this paper reveals the rule that the area in complex plane occupied by Hilbert modulus of filtered stator current signal can reflect whether rotor bar breaking fault is present or not, and will increase with the development of this type of fault in induction motors. Thorough analysis based on great simulation and experiment results demonstrates that the revealed rule is correct. Moreover, this paper proposes a novel feature of rotor bar breaking fault, i.e., the Hilbert modulus gyration radius of filtered stator current signal. Simulation and experiment results show clearly that the Hilbert modulus gyration radius of filtered stator current signal, as a feature of rotor bar breaking fault, is sensitive to the fault itself and robust to some extent to the load, and thus can be used to detect rotor bar breaking fault in induction motors.
机译:根据感应电动机转子断条故障的基本特征和正弦信号希尔伯特变换的物理概念,给出了感应电动机滤波后的定子电流信号的希尔伯特模量的定义,并结合了希尔伯特变换,频谱分析和算法。分析/校正和自适应滤波器技术完美。然后,本文揭示了这样的规律:滤波后的定子电流信号的希尔伯特模量在复平面上所占的面积可以反映出是否存在转子条断裂故障,并将随着感应电动机中此类故障的发展而增加。基于良好的仿真和实验结果进行的深入分析表明,所揭示的规则是正确的。此外,本文提出了一种新颖的转子条断裂故障特征,即滤波后的定子电流信号的希尔伯特模数回转半径。仿真和实验结果清楚地表明,滤波后的定子电流信号的希尔伯特模数回转半径作为转子断条故障的特征,对故障本身很敏感,并且在一定程度上对负载具有鲁棒性,因此可以用于检测转子感应电动机的断条故障。

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