Pan Tongyang, Chen Jinglong, Xie Jinsong, Chang Yuanhong, Zhou Zitong
State Key Laboratory for Manufacturing and Systems Engineering, Xi'an Jiaotong University, Xi'an 710049, PR China.
State Key Laboratory for Manufacturing and Systems Engineering, Xi'an Jiaotong University, Xi'an 710049, PR China.
ISA Trans. 2020 Jun;101:379-389. doi: 10.1016/j.isatra.2020.01.014. Epub 2020 Jan 14.
Rolling bearings are the widely used parts in most of the industrial automation systems. As a result, intelligent fault identification of rolling bearing is important to ensure the stable operation of the industrial automation systems. However, a major problem in intelligent fault identification is that it needs a large number of labeled samples to obtain a well-trained model. Aiming at this problem, the paper proposes a semi-supervised multi-scale convolutional generative adversarial network for bearing fault identification which uses partially labeled samples and sufficient unlabeled samples for training. The network adopts a one-dimensional multi-scale convolutional neural network as the discriminator and a multi-scale deconvolutional neural network as the generator and the model is trained through an adversarial process. Because of the full use of unlabeled samples, the proposed semi-supervised model can detect the faults in bearings with limited labeled samples. The proposed method is tested on three datasets and the average classification accuracy arrived at of 100%, 99.28% and 96.58% respectively Results indicate that the proposed semi-supervised convolutional generative adversarial network achieves satisfactory performance in bearing fault identification when the labeled data are insufficient.
滚动轴承是大多数工业自动化系统中广泛使用的部件。因此,滚动轴承的智能故障识别对于确保工业自动化系统的稳定运行至关重要。然而,智能故障识别中的一个主要问题是需要大量带标签的样本才能获得训练良好的模型。针对这一问题,本文提出了一种用于轴承故障识别的半监督多尺度卷积生成对抗网络,该网络使用部分带标签的样本和足够的无标签样本进行训练。该网络采用一维多尺度卷积神经网络作为判别器,多尺度反卷积神经网络作为生成器,并通过对抗过程对模型进行训练。由于充分利用了无标签样本,所提出的半监督模型能够在带标签样本有限的情况下检测轴承故障。该方法在三个数据集上进行了测试,平均分类准确率分别达到了100%、99.28%和96.58%。结果表明,当带标签数据不足时,所提出的半监督卷积生成对抗网络在轴承故障识别中取得了令人满意的性能。