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Fault Diagnosis of Active Magnetic Bearing-Rotor System via Vibration Images

机译:通过振动图像故障诊断有源磁轴承转子系统

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As important sources in fault diagnosis of rotary machinery, vibration signals are usually processed in the time or frequency domain as features to distinguish different classes of faults. However, these kinds of processing methods always ignore the corresponding relations among multiple signals, resulting in information loss. In this paper, a new fault description strategy named vibration image is proposed, based on which three new kinds of features are extracted, containing coupling information between different channels of vibration signals. Additionally, a new feature fusion method called two-layer AdaBoost is designed to train the fault recognition model, which avoids overfitting when the dataset is not large enough. Features based on vibration images combined with two-layer AdaBoost are adopted to diagnose faults of rotary machinery. Taking an active magnetic bearing-rotor system as the experimental platform, a dataset with four classes of faults is collected and our algorithm achieves good performance. Meanwhile, features based on vibration images and two-layer AdaBoost are both proved to be efficient separately.
机译:作为旋转机械故障诊断的重要来源,振动信号通常在时间或频域中处理,以区分不同类别的故障。然而,这些处理方法总是忽略多个信号之间的相应关系,导致信息丢失。在本文中,提出了一种名为振动图像的新故障描述策略,基于其中提取了三种新的特征,其中包含振动信号的不同通道之间的耦合信息。此外,旨在培训称为两层Adaboost的新特征融合方法,旨在训练故障识别模型,这避免了当数据集不够大时过度拟合。采用基于振动图像的特征与双层Adaboost进行诊断旋转机械的故障。采用活跃的磁轴承转子系统作为实验平台,收集具有四类故障的数据集,我们的算法实现了良好的性能。同时,基于振动图像和两层Adaboost的特征被证明是单独的有效的。

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