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A New Deep Transfer Learning Network for Fault Diagnosis of Rotating Machine Under Variable Working Conditions

机译:变工况下旋转机械故障诊断的新型深度转移学习网络

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Machine learning is promising in vibration signal based fault diagnosis because of its full use of big data and nonlinearity extracting capability. However, in real-world application, the network trained by a vibration signal dataset will be applied to target signal datasets with different distributions, which can be triggered easily by rotating speed oscillation and load variation. Hence, based on transfer learning, some vibration signal-based methods which are robust to working conditions have been proposed to address this problem. Nevertheless, most of them need target datasets in network training, and the network should be trained whenever it meets a new vibration signal dataset. So we construct a three-stage deep fault diagnosis network utilizing adaptive batch normalization (AdaBN), which is highly efficient for free of target datasets in training and does not need repeated training in its application. In the first stage, the vibration signal samples are processed into more regular and discriminative frequency spectra. In the second stage, a fourlayer AdaBN based deep neural network (DNN) is pre-trained by stacked autoencoders (SAE) and then finely tuned only using the source dataset. In the final step, the trained network is modified to diagnose samples from the target dataset. Extensive experiments on a gearbox and a bearing dataset, and comparisons with some other fault diagnosis methods verify its effectiveness.
机译:机器学习由于充分利用大数据和非线性提取能力,在基于振动信号的故障诊断中很有前途。但是,在实际应用中,由振动信号数据集训练的网络将应用于具有不同分布的目标信号数据集,可以通过转速振荡和负载变化轻松触发。因此,基于转移学习,已经提出了一些对工作条件具有鲁棒性的基于振动信号的方法来解决该问题。然而,它们中的大多数在网络训练中都需要目标数据集,并且只要网络遇到新的振动信号数据集,都应该对网络进行训练。因此,我们利用自适应批量归一化(AdaBN)构建了一个三阶段的深层故障诊断网络,该网络对于训练中的目标数据集是高效的,并且在其应用中不需要重复训练。在第一阶段,将振动信号样本处理为更规则和更具区别性的频谱。在第二阶段,基于四层AdaBN的深度神经网络(DNN)由堆叠式自动编码器(SAE)进行预训练,然后仅使用源数据集进行微调。在最后一步中,对经过训练的网络进行修改以从目标数据集中诊断样本。在齿轮箱和轴承数据集上进行了广泛的实验,并与其他一些故障诊断方法进行了比较,验证了其有效性。

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