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A Transfer Learning Method for Intelligent Fault Diagnosis from Laboratory Machines to Real-Case Machines

机译:实验室机器智能故障诊断转移学习方法,实验室机器

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It is difficult to train a reliable intelligent fault diagnosis model for machines used in real cases (MURC) because there are not sufficient labeled data. However, we can easily simulate various faults in a laboratory, and the data from machines used in the laboratory (MUL) contain fault knowledge related to the data from MURC. Thus, it is possible to identify the health states of MURC by using related fault knowledge contained in the data from MUL. To achieve this purpose, a transfer learning method named convolutional adaptation network (CAN) is proposed in this paper. The proposed method first uses domain-shared convolutional neural network to extract features from the collected data. Second, the distribution discrepancy between the learned features of the data from MUL and MURC is reduced by minimizing multi-kernel maximum mean discrepancy. Finally, pseudo label learning is introduced to train domain-shared classifier by using unlabeled data from MURC. The proposed method is verified by a transfer learning case, in which the health states of locomotive bearings are identified by using the fault knowledge contained in the data from motor bearings used in a laboratory. The results show that CAN is able to effectively identify the health states of MURC with the help of the data from MUL.
机译:由于没有足够的标记数据,难以为实际情况(MURC)使用的机器训练可靠的智能故障诊断模型。然而,我们可以轻松模拟实验室中的各种故障,并且实验室(MUL)中使用的机器数据包含与MURC数据相关的故障知识。因此,通过使用来自MUL的数据中包含的相关故障知识,可以识别Murc的健康状态。为实现此目的,本文提出了一种名为卷积自适应网络(CAN)的传输学习方法。所提出的方法首先使用域共享卷积神经网络来提取收集数据的特征。其次,通过最小化多核最大均值差异,减少了MUL和MURC的数据的学习特征之间的分布差异。最后,伪标签学习通过使用MURC的未标记数据来引入培训域共享分类器。通过转移学习案例验证所提出的方法,其中通过使用实验室中使用的电动机轴承中包含的数据中包含的故障知识来识别机车轴承的健康状态。结果表明,可以通过MUL的数据有效地识别Murc的健康状态。

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