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A Fine-Grained Adversarial Network Method for Cross-Domain Industrial Fault Diagnosis

机译:跨域工业故障诊断的细粒度逆网方法

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摘要

While machine-learning techniques have been widely used in smart industrial fault diagnosis, there is a major assumption that the source domain data (where the diagnosis model is trained) and the future target data (where the model is applied) must have the same distribution. However, this assumption may not hold in real industrial applications due to the changing operating conditions or mechanical wear. Recent advances have embedded the adversarial-learning mechanism into deep neural networks to reduce the distribution discrepancy between different domains to learn domain-invariant features and perform fault diagnosis. However, they only aligned the distributions of domains and neglected the fault-discriminative structure underlying the target domain, which leads to a decline in the diagnostic performance. In this article, a new method termed the fine-grained adversarial network-based domain adaptation (FANDA) is proposed to address the cross-domain industrial fault diagnosis problem. Different from the existing domain adversarial adaptation methods considering the domain discrepancy only, the features in FANDA are learned by competing against multiple-domain discriminators, which enable both a global alignment for two domains and a fine-grained alignment for each fault class across two domains. Thus, the fault-discriminative structure underlying two domains can be preserved in the adaptation process and the fault classification ability learned on the source domain can remain effective on the target data. Experiments on a mechanical bearing case and an industrial three-phase flow process case demonstrate the effectiveness of the proposed method. Note to Practitioners-The varying industrial conditions (domains) can lead to the degradation of diagnostic performance as the distribution can change from the source domain to the target domain. The focus of this article is to develop a fine-grained adversarial network-based domain adaptation (FANDA) strategy to diagnose different kinds of faults across the domains. The proposed FANDA algorithm can reduce the distribution discrepancy of both the global domains and each fault class across the domains automatically. The training procedure is completed using an adversarial way, driving the learned feature representations to be transferable across two domains. Thus, the fault classifier learned on the source domain can be applied to the target domain directly. It is noted that common deep network architectures can be embedded into the FANDA framework, and thus, this article is suitable for carrying out cross-domain fault diagnosis tasks in diverse advanced manufacturing applications.
机译:虽然机器学习技术已被广泛用于智能工业故障诊断,但有一个主要假设:源域数据(训练诊断模型)和未来的目标数据(应用模型的位置)必须具有相同的分布。然而,由于变化的操作条件或机械磨损,这种假设可能不会在真正的工业应用中保持。最近的进步嵌入了普遍的学习机制进入深度神经网络,以减少不同域之间的分布差异,以学习域不变的功能并执行故障诊断。然而,它们仅对准域的分布并忽略了目标领域地下的故障鉴别结构,这导致诊断性能下降。在本文中,提出了一种新的方法,被称为基于细粒的对抗网络的域适应(FANDA),以解决跨域工业故障诊断问题。不同于现有的域对抗的适应方法考虑到域差异,粉丝中的特征是通过竞争多域鉴别器来学习的,这使得两个域的全局对齐以及两个域中的每个故障类的细粒度对齐。因此,可以保留两个域的故障鉴别结构可以保留在适应过程中,并且在源域上学习的故障分类能力可以在目标数据上保持有效。在机械轴承箱和工业三相流程过程中的实验证明了该方法的有效性。注意对于从业者来说 - 改变的工业条件(域)可以导致诊断性能的劣化,因为分布可以从源域变为目标域。本文的重点是开发一种细粒度的对抗基于网络的域适应(FANDA)策略,以诊断域外的不同类型的故障。建议的粉丝算法可以自动降低全局域和每个故障类的分布差异。使用普通方式完成培训程序,驱动学习的特征表示可在两个域中转移。因此,可以直接将在源域上学习的故障分类器应用于目标域。值得注意的是,普通的深网络架构可以嵌入到粉红框架中,因此,本文适用于在不同的先进制造应用中执行跨域故障诊断任务。

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