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Fault diagnosis of planetary gearbox using a novel semi-supervised method of multiple association layers networks

机译:新型多层关联网络半监督方法诊断行星齿轮箱

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摘要

The vibration signal can effectively represent the equipment fault information and be utilized for fault diagnosis by further extracting sensitive features. However, traditional supervised diagnosis requires a huge amount of labeled samples, and the features extraction and selection are mainly done manually, which are costly and time consuming. Deep Learning (DL) can automatically extract fault-sensitive features and effectively improve the recognition rate of fault diagnosis, while Semi-Supervised Learning (SSL) trains a model together with labeled and unlabeled data to increase recognition accuracy. In this paper, a novel deep Semi-Supervised method of Multiple Association Layers Networks (SS-MALN) framework of planetary gearbox vibration-based fault diagnosis is proposed. The SS-MALN model has the advantages of SSL and DL simultaneously, which can reduce the amount of labeled samples and improve the accuracy of recognition. The wavelet packet transform was employed to highlight various impulse components and present time-frequency features of the original vibration signal. Then, the transformed samples were divided into two parts, a major part of which deletes the category information, i.e. the labels. After that, the labeled and unlabeled samples were employed to train the improved SS-MALN model. Validation by Drivetrain Diagnostic Simulator testbed data on several planetary gearbox fault datasets manifests that our SS-MALN semi-supervised method can deliver enhanced performance over other traditional deep networks of planetary gearbox fault classification with less labeled data. (C) 2019 Elsevier Ltd. All rights reserved.
机译:振动信号可以有效地表示设备故障信息,并可以通过进一步提取敏感特征将其用于故障诊断。然而,传统的监督诊断需要大量的标记样本,并且特征提取和选择主要是人工完成的,这既昂贵又费时。深度学习(DL)可以自动提取对故障敏感的功能,并有效提高故障诊断的识别率,而半监督学习(SSL)可以将模型与标记和未标记的数据一起训练,以提高识别精度。本文提出了一种基于行星齿轮箱振动的多关联层网络(SS-MALN)框架的深度半监督新方法。 SS-MALN模型同时具有SSL和DL的优点,可以减少标记样本的数量并提高识别的准确性。小波包变换被用来强调各种脉冲分量和原始振动信号的时频特征。然后,将转换后的样本分为两部分,其中大部分删除了类别信息,即标签。之后,将标记和未标记的样本用于训练改进的SS-MALN模型。通过Drivetrain Diagnostic Simulator测试床数据对几个行星齿轮箱故障数据集的验证表明,我们的SS-MALN半监督方法可以提供比其他传统深层行星齿轮箱故障分类的传统网络更强大的性能,而标签数据较少。 (C)2019 Elsevier Ltd.保留所有权利。

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