Bearing faults detection in induction machines based on statistical processing of the stray fluxes measurements

C. Harlisca, L. Szabó, L. Frosini, A. Albini
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引用次数: 10

Abstract

Frequent defects of induction machines are due to diverse bearing faults. The detection of such faults in their incipient phase can decisively contribute to the prevention of unplanned breakdowns in industrial plants. In this paper the detection of three types of bearing faults by means of statistical processing of the stray fluxes measurements is detailed. The developed noninvasive method requires only both simple probes and easy computations. Numerous measurements had been performed for all the combinations of bearing faults, loads and stray flux probes taken into study. All the results emphasized the effectiveness of the applied simple fault diagnosis method.
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基于杂散磁通测量统计处理的感应电机轴承故障检测
感应电机的频繁故障是由各种轴承故障引起的。在这些故障的早期阶段进行检测,可以决定性地有助于防止工业工厂的意外故障。本文详细介绍了用杂散通量测量的统计处理方法检测三种类型轴承故障的方法。所开发的无创方法只需要简单的探针和容易的计算。对所研究的轴承故障、载荷和杂散磁通探头的所有组合进行了大量测量。所有结果都强调了应用简单故障诊断方法的有效性。
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