Tra Viet, Kim Jaeyoung, Khan Sheraz Ali, Kim Jong-Myon
Department of Electrical, Electronics and Computer Engineering, University of Ulsan, Ulsan, Yeongnam, South Korea
J Acoust Soc Am. 2017 Jul;142(1):EL35. doi: 10.1121/1.4991329.
Incipient defects in bearings are traditionally diagnosed either by developing discriminative models for features that are extracted from raw acoustic emission (AE) signals, or by detecting peaks at characteristic defect frequencies in the envelope power spectrum of the AE signals. Under variable speed conditions, however, such methods do not yield the best results. This letter proposes a technique for diagnosing incipient bearing defects under variable speed conditions, by extracting features from different sub-bands of the inherently non-stationary AE signal, and then classifying bearing defects using a weighted committee machine, which is an ensemble of support vector machines and artificial neural networks. The proposed method also improves the generalization performance of the neural networks to enhance their classification accuracy, particularly with limited training data.
传统上,轴承早期缺陷的诊断方法要么是为从原始声发射(AE)信号中提取的特征开发判别模型,要么是检测AE信号包络功率谱中特征缺陷频率处的峰值。然而,在变速条件下,这些方法无法取得最佳效果。本文提出了一种在变速条件下诊断轴承早期缺陷的技术,该技术通过从本质上非平稳的AE信号的不同子带中提取特征,然后使用加权委员会机器对轴承缺陷进行分类,加权委员会机器是支持向量机和人工神经网络的集成。所提出的方法还提高了神经网络的泛化性能,以提高其分类准确率,特别是在训练数据有限的情况下。