机械故障跨域诊断的深度部分对抗迁移学习网络

Jiachen Kuang, Guanghua Xu, Sicong Zhang, T. Tao, Fan Wei, Yunhui Yu
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引用次数: 5

摘要

近年来,基于深度迁移学习的方法在现代制造设备的智能故障诊断中得到了广泛的应用,该方法能够识别各种工况下未标记目标样本的健康状况。在基于迁移学习的智能故障诊断中,通常通过监督学习方法提取的源诊断知识被转移并重用到相关的目标故障识别任务中。然而,这些迁移学习方法的巨大成功主要是在近集跨域故障诊断领域取得的。但在实际应用中,部分跨域场景更为常见和困难,目标域的健康状况小于源域。为了解决这一问题,提出了一种基于卷积神经网络和对抗训练的深度部分对抗迁移学习网络(PATLN)。在公共滚动体轴承数据集上的实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A deep partial adversarial transfer learning network for cross-domain fault diagnosis of machinery
Recently, the deep transfer learning-based methods have been widely applied in intelligent fault diagnosis of modern manufacturing equipment in real-industrial scenarios, which are capable of identifying the health conditions of unlabeled target samples under various working conditions. In transfer learning- based intelligent fault diagnosis, the source diagnostic knowledge, which is usually extracted by supervised learning approaches, is transferred and reused in related target fault identification tasks. However, the tremendous success of these transfer learning methods is mainly achieved in the field of close-set cross-domain fault diagnosis. But in practical applications, a partial cross-domain scenario is more common and difficult, where the health conditions of the target domain are less than that of the source domain. To address this issue, a deep partial adversarial transfer learning network (PATLN) based on convolutional neural networks and adversarial training is proposed. Experiments on a public rolling element bearing dataset verify the effectiveness of the PATLN method.
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