AIOct 16, 2025

Global-focal Adaptation with Information Separation for Noise-robust Transfer Fault Diagnosis

arXiv:2510.16033v11 citationsh-index: 13Has Code
Originality Incremental advance
AI Analysis

This addresses robust fault diagnosis in industrial environments where noise and domain shifts coexist, representing an incremental improvement over prior transfer methods.

The paper tackles cross-domain fault diagnosis under severe noise interference and domain shifts by proposing ISGFAN, which integrates adversarial learning with an improved orthogonal loss to decouple domain-invariant fault representations, outperforming existing methods on three benchmark datasets.

Existing transfer fault diagnosis methods typically assume either clean data or sufficient domain similarity, which limits their effectiveness in industrial environments where severe noise interference and domain shifts coexist. To address this challenge, we propose an information separation global-focal adversarial network (ISGFAN), a robust framework for cross-domain fault diagnosis under noise conditions. ISGFAN is built on an information separation architecture that integrates adversarial learning with an improved orthogonal loss to decouple domain-invariant fault representation, thereby isolating noise interference and domain-specific characteristics. To further strengthen transfer robustness, ISGFAN employs a global-focal domain-adversarial scheme that constrains both the conditional and marginal distributions of the model. Specifically, the focal domain-adversarial component mitigates category-specific transfer obstacles caused by noise in unsupervised scenarios, while the global domain classifier ensures alignment of the overall distribution. Experiments conducted on three public benchmark datasets demonstrate that the proposed method outperforms other prominent existing approaches, confirming the superiority of the ISGFAN framework. Data and code are available at https://github.com/JYREN-Source/ISGFAN

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes