一种用于故障诊断中分布外检测的多粒度模糊推理方法

A Multigranularity Fuzzy Inference Approach for Out-of-Distribution Detection in Fault Diagnosis

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2026
被引 1 · 同刊同年前 7%
ABS 3

中文导读

提出多粒度模糊推理框架,通过分层模糊推理量化不确定性,提升故障诊断中分布外故障的检测准确率,适用于工业开放集诊断。

Abstract

The intelligent fault diagnosis has achieved notable success in identifying known mechanical failures; however, reliably detecting out-of-distribution (OOD) faults remains a key challenge to achieve the diagnostic robustness. In industrial applications, vibration signals are typically collected as time-series data whose dynamic characteristics vary with load, speed, and environmental interference, with weak early fault patterns that blur class boundaries. As a result, models trained under limited laboratory conditions inevitably encounter unseen OOD inputs after deployment, requiring the ability to recognize and reject them reliably. Existing representation- and similarity-based OOD methods have shown promise but typically rely on single-granularity prototypes, capturing only coarse similarity structures and overlooking latent subclass relations—thus limiting the generalization under complex degradation modes. To address these limitations, we propose a multigranularity fuzzy inference (MgFI) framework for enhanced uncertainty quantification in fault diagnosis. MgFI models fine-grained subclass memberships on a hyperspherical manifold, aggregates them into class-level fuzzy sets, and infers coarse-grained In-distribution (ID) confidence through the hierarchical fuzzy reasoning. Extensive experiments demonstrate that MgFI substantially improves the OOD detection accuracy and provides a principled, interpretable framework for trustworthy open-set industrial diagnostics.

故障诊断分布外检测模糊推理工业诊断