Characteristic signature identification of air-gap eccentricity faults using extended d-q model for three phase induction motor

S. Bindu, V. Thomas
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引用次数: 4

Abstract

The supremacy of three phase squirrel cage induction motors in industrial drives demands accurate and reliable diagnostics for condition monitoring and internal fault detections. Operating stresses on these machines are electrical, mechanical, thermal, magnetic and environmental in nature and might result in internal faults. Avoiding unscheduled maintenance and repair intervention can prevent losses in money, material, manpower and time in process industries. Detection of faults in its early stage becomes an indispensable need especially in critical applications. Mathematical model based simulation studies will support fault signature identification to a great extent. Conventional d-q model of AC machines are not generally used for internal fault diagnoses. In this paper a novel attempt is made for simulating eccentricity related faults by modifying conventional d-q model of three phase induction motor. Characteristic fault signatures were identified in the stator current frequency spectrum for static, dynamic and mixed eccentricity conditions. The increase in magnitudes of these characteristic frequency components with increase in severity of faults is also established through model based simulation studies. The experimental study results presented for static eccentricity in a three phase squirrel cage induction motor clearly validates the modelling approach.
基于扩展d-q模型的三相异步电动机气隙偏心故障特征特征识别
三相鼠笼式异步电动机在工业驱动中的主导地位要求对状态监测和内部故障检测进行准确可靠的诊断。这些机器上的操作应力是电气、机械、热、磁和环境性质的,可能导致内部故障。在过程工业中,避免计划外的维护和维修干预可以防止金钱、材料、人力和时间的损失。特别是在关键应用中,早期故障检测已成为必不可少的需求。基于数学模型的仿真研究将在很大程度上支持故障特征识别。传统的交流电机d-q模型一般不用于内部故障诊断。本文通过对传统三相异步电动机的d-q模型的修正,对偏心相关故障的模拟进行了新颖的尝试。在静态、动态和混合偏心工况下,分别从定子电流频谱中识别出故障特征。通过基于模型的仿真研究,建立了这些特征频率分量的幅值随故障严重程度的增加而增加的规律。对三相鼠笼式异步电动机静态偏心的实验研究结果清楚地验证了建模方法的正确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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