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Fault Diagnosis of Squirrel-Cage Induction Motor Broken Bars based on a Model Identification Method with Subtractive Clustering

机译:基于模型识别方法的鼠笼式感应电动机破碎杆的故障诊断

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Fault diagnosis in electric motors is a field that evolves and grows constantly, aiming at their effective maintenance and protection scenarios under the lowest possible cost. Especially for induction motors, since they are of fundamental importance to the industry worldwide, many techniques and methodologies for the early fault detection-diagnosis have been proposed so far. In this paper, an attempt is made to develop a mechanism in order to diagnose faults in a three-phase squirrel cage induction motor rotor bars. The concept is implemented by primarily taking into account the information extracted from the classical motor current signature analysis (MSCA) and then a model identification method approach is formulated using data set manipulation known as subtractive clustering. The method is based on adaptive neuro fuzzy inference system (ANFIS). An investigation on the validity of the proposed method is performed, through experimental data taken from a healthy motor operation as well as those from the same motor with 1, 2 and 3 broken bars. From the derived results it is shown that they present satisfactory sensitivity and accuracy characteristics and thus the proposed method may be a suitable candidate mechanism in the early rotor bar fault detection phase of induction motors.
机译:电动机的故障诊断是一种不断发展和生长的领域,旨在根据尽可能低的成本,以其有效的维护和保护情景。特别是对于感应电动机,由于它们对全球行业的重要性,因此已经提出了许多用于早期故障检测诊断的技术和方法。在本文中,尝试开发一种机制,以便在三相鼠笼式感应电动机转子条中诊断故障。该概念主要通过主要考虑到从经典电动机电流签名分析(MSCA)中提取的信息来实现,然后使用称为减去聚类的数据集操纵来制定模型识别方法方法。该方法基于自适应神经模糊推理系统(ANFIS)。通过从健康电机操作中取出的实验数据以及来自1,2和3个断杆的相同电动机的实验数据进行关于所提出的方法的有效性的研究。从衍生的结果显示,它们显示出令人满意的灵敏度和精度特性,因此所提出的方法可以是在感应电动机的早期转子杆故障检测阶段中的合适候选机构。

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