Han Te, Liu Chao, Yang Wenguang, Jiang Dongxiang
Department of Energy and Power Engineering, Tsinghua University, Beijing 100084, China; State Key Laboratory of Control and Simulation of Power System and Generation Equipment, Tsinghua University, Beijing 100084, China.
Department of Energy and Power Engineering, Tsinghua University, Beijing 100084, China; Key Laboratory for Thermal Science and Power Engineering of Ministry of Education, Tsinghua University, Beijing 100084, China.
ISA Trans. 2020 Feb;97:269-281. doi: 10.1016/j.isatra.2019.08.012. Epub 2019 Aug 12.
In recent years, an increasing popularity of deep learning model for intelligent condition monitoring and diagnosis as well as prognostics used for mechanical systems and structures has been observed. In the previous studies, however, a major assumption accepted by default, is that the training and testing data are taking from same feature distribution. Unfortunately, this assumption is mostly invalid in real application, resulting in a certain lack of applicability for the traditional diagnosis approaches. Inspired by the idea of transfer learning that leverages the knowledge learnt from rich labeled data in source domain to facilitate diagnosing a new but similar target task, a new intelligent fault diagnosis framework, i.e., deep transfer network (DTN), which generalizes deep learning model to domain adaptation scenario, is proposed in this paper. By extending the marginal distribution adaptation (MDA) to joint distribution adaptation (JDA), the proposed framework can exploit the discrimination structures associated with the labeled data in source domain to adapt the conditional distribution of unlabeled target data, and thus guarantee a more accurate distribution matching. Extensive empirical evaluations on three fault datasets validate the applicability and practicability of DTN, while achieving many state-of-the-art transfer results in terms of diverse operating conditions, fault severities and fault types.
近年来,深度学习模型在机械系统和结构的智能状态监测、诊断以及预测方面越来越受欢迎。然而,在先前的研究中,一个默认被接受的主要假设是训练数据和测试数据取自相同的特征分布。不幸的是,这个假设在实际应用中大多是无效的,导致传统诊断方法在适用性上存在一定的不足。受迁移学习思想的启发,即利用从源域丰富的标注数据中学到的知识来促进对新的但相似的目标任务进行诊断,本文提出了一种新的智能故障诊断框架,即深度迁移网络(DTN),它将深度学习模型推广到域适应场景。通过将边际分布自适应(MDA)扩展到联合分布自适应(JDA),所提出的框架可以利用与源域标注数据相关的判别结构来适应未标注目标数据的条件分布,从而保证更精确的分布匹配。在三个故障数据集上进行的广泛实证评估验证了DTN的适用性和实用性,同时在不同的运行条件、故障严重程度和故障类型方面取得了许多领先的迁移结果。