基于条件对抗学习的半监督联合自适应传递网络在旋转机械故障诊断中的应用

Chongxing Liu, Shaojie Li, Hongtian Chen, Xianchao Xiu, Chen Peng
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引用次数: 0

摘要

目前,人工智能正在蓬勃发展,并在故障诊断场景方面取得了重大突破。然而,大多数主流故障诊断方法的高诊断精度必须依赖于足够的数据来训练诊断模型。此外,还有一个需要满足的假设:训练和测试数据分布的一致性。当这些先决条件不具备时,诊断模型的有效性会急剧下降。为了解决这一问题,我们提出了一种带条件对抗学习的半监督联合自适应传递网络用于旋转机械故障诊断。为了充分利用未标记数据隐含的故障特征,通过阈值滤波生成伪标签,得到初始预训练模型。然后,引入了一种基于条件对抗学习和距离度量的联合域自适应迁移网络模块,以保证两个不同域的分布一致性。最后,通过变负荷单故障、变速单故障和变速负载混合故障三组不同设置的实验,验证了该方法具有较好的诊断性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-supervised joint adaptation transfer network with conditional adversarial learning for rotary machine fault diagnosis
At present, artificial intelligence is booming and has made major breakthroughs in fault diagnosis scenarios. However, the high diagnostic accuracy of most mainstream fault diagnosis methods must rely on sufficient data to train the diagnostic models. In addition, there is another assumption that needs to be satisfied: the consistency of training and test data distribution. When these prerequisites are not available, the effectiveness of the diagnosis model declines dramatically. To address this problem, we propose a semi-supervised joint adaptation transfer network with conditional adversarial learning for rotary machine fault diagnosis. To fully utilize the fault features implied in unlabeled data, pseudo-labels are generated through threshold filtering to obtain an initial pre-trained model. Then, a joint domain adaptation transfer network module based on conditional adversarial learning and distance metric is introduced to ensure the consistency of the distribution in two different domains. Lastly, in three groups of experiments with different settings: a single fault with variable load, a single fault with variable speed, and a mixed fault with variable speed and load, it was confirmed that our method can obtain competitive diagnostic performance.
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