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Stacked Multilevel-Denoising Autoencoders: A New Representation Learning Approach for Wind Turbine Gearbox Fault Diagnosis

机译:堆叠的多级降噪自动编码器:风力发电机齿轮箱故障诊断的一种新的表示学习方法

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摘要

Currently, vibration analysis has been widely considered as an effective way to fulfill the fault diagnosis task of gearboxes in wind turbines (WTs). However, vibration signals are usually with abundant noise and characterized as nonlinearity and nonstationarity. Therefore, it is quite challenging to extract robust and useful fault features from complex vibration signals to achieve an accurate and reliable diagnosis. This paper proposes a novel feature representation learning approach, named stacked multilevel-denoising autoencoders (SMLDAEs), with the aim to learn robust and discriminative fault feature representations through a deep network architecture for diagnosis accuracy improvement. In our proposed approach, we design an MLD training scheme, which uses multiple noise levels to train AEs. It enables to learn more general and detailed fault feature patterns simultaneously at different scales from the complex frequency spectra of the raw vibration data, and therefore helps enhance the feature learning and fault diagnosis capability. Furthermore, SMLDAE-based fault diagnosis is performed with an unsupervised representation learning procedure followed by a supervised fine-tuning process with label information for classification. Our approach is evaluated by using the field vibration data collected from a self-designed WT gearbox test rig. The results show that our proposed approach learned more robust and discriminative fault feature representations and achieved the best diagnosis accuracy compared with the traditional approaches.
机译:目前,振动分析已被广泛认为是完成风力涡轮机齿轮箱故障诊断任务的有效方法。然而,振动信号通常具有大量噪声,并且具有非线性和非平稳性的特征。因此,从复杂的振动信号中提取鲁棒且有用的故障特征以实现准确而可靠的诊断是非常具有挑战性的。本文提出了一种新颖的特征表示学习方法,称为堆叠式多级降噪自动编码器(SMLDAE),旨在通过深度网络架构学习鲁棒和有区别的故障特征表示,以提高诊断准确性。在我们提出的方法中,我们设计了一种MLD训练方案,该方案使用多个噪声水平来训练AE。它可以从原始振动数据的复杂频谱中以不同的比例同时学习更多常规和详细的故障特征模式,因此有助于增强特征学习和故障诊断能力。此外,基于SMLDAE的故障诊断是通过无监督的表示学习过程执行的,然后进行带有标签信息以进行分类的有监督的微调过程。我们的方法是通过使用从自行设计的WT变速箱测试台收集的现场振动数据进行评估的。结果表明,与传统方法相比,我们提出的方法学习了更多的鲁棒性和判别性故障特征表示,并获得了最佳的诊断准确性。

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