Analysis of Vibrations and Currents for Broken Rotor Bar Detection in Three-phase Induction Motors

Zahra Taghiyarrenani, A. Berenji
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引用次数: 1

Abstract

Selecting the physical property capable of representing the health state of a machine is an important step in designing fault detection systems. In addition, variation of the loading condition is a challenge in deploying an industrial predictive maintenance solution. The robustness of the physical properties to variations in loading conditions is, therefore, an important consideration. In this paper, we focus specifically on squirrel cage induction motors and analyze the capabilities of three-phase current and five vibration signals acquired from different locations of the motor for the detection of Broken Rotor Bar generated in different loads. In particular, we examine the mentioned signals in relation to the performance of classifiers trained with them. Regarding the classifiers, we employ deep conventional classifiers and also propose a hybrid classifier that utilizes contrastive loss in order to mitigate the effect of different variations. The analysis shows that vibration signals are more robust under varying load conditions. Furthermore, the proposed hybrid classifier outperforms conventional classifiers and is able to achieve an accuracy of 90.96% when using current signals and 97.69% when using vibration signals.
三相感应电动机转子断条检测的振动和电流分析
选择能够表示机器健康状态的物理特性是设计故障检测系统的重要步骤。此外,负载条件的变化是部署工业预测性维护解决方案的一个挑战。因此,物理性能对载荷条件变化的鲁棒性是一个重要的考虑因素。本文以鼠笼式异步电动机为研究对象,分析了在不同负载下,利用三相电流和电机不同位置采集的五种振动信号检测转子断条的能力。特别地,我们检查了提到的信号与用它们训练的分类器的性能的关系。在分类器方面,我们采用了深度传统分类器,并提出了一种利用对比损失的混合分类器,以减轻不同变化的影响。分析表明,在不同载荷条件下,振动信号具有较强的鲁棒性。此外,本文提出的混合分类器优于传统的分类器,在使用电流信号和振动信号时,准确率分别达到90.96%和97.69%。
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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