Chen Xing, Yin Hua, Chen Qitong, Chen Liang, Shen Changqing
School of Mechanical and Electric Engineering, Soochow University, Suzhou 215000, China.
ISA Trans. 2024 Nov;154:389-406. doi: 10.1016/j.isatra.2024.08.012. Epub 2024 Aug 13.
Extensive researches have been conducted on transfer learning based fault diagnosis. However, negative information transfer may arise due to significant differences in the subdomain distribution across multiple source domains (MSDs). Most existing methods focus solely on the impact of subdomains from a single source domain (SSD) on the target domain (TD). Therefore, this paper proposed a novel multi-stage alignment multi-source subdomain adaptation (MAMSA) method. The global feature extractor is designed to extract domain-invariant features. Three domain-specific feature extractors capture high-level fault features from different domains with a customized adaptation strategy, which combines adversarial learning and distribution alignment based on multiple pseudo-label-guided local maximum mean discrepancy (MP-LMMD) to learn subdomain-invariant features. MP-LMMD utilizes pseudo-labels generated from all classifiers in the TD to guide the alignment of subdomains, suppressing negative transfer from the source domains (SDs). The experimental results indicate that the MAMSA method has excellent capabilities to suppress negative transfer, and the diagnostic performance can be greatly promoted with MAMSA under cross-working conditions.
针对基于迁移学习的故障诊断已经开展了广泛的研究。然而,由于多个源域(MSD)的子域分布存在显著差异,可能会出现负信息迁移。大多数现有方法仅关注单个源域(SSD)的子域对目标域(TD)的影响。因此,本文提出了一种新颖的多阶段对齐多源子域自适应(MAMSA)方法。全局特征提取器旨在提取域不变特征。三个特定于域的特征提取器通过定制的自适应策略从不同域捕获高级故障特征,该策略结合了对抗学习和基于多个伪标签引导的局部最大均值差异(MP-LMMD)的分布对齐,以学习子域不变特征。MP-LMMD利用从目标域中的所有分类器生成的伪标签来指导子域的对齐,抑制来自源域(SD)的负迁移。实验结果表明,MAMSA方法具有出色的抑制负迁移能力,并且在跨工作条件下使用MAMSA可以大大提高诊断性能。