TY - JOUR
T1 - UBMF
T2 - Uncertainty-aware bayesian meta-learning framework for fault diagnosis with imbalanced industrial data
AU - Lian, Zhixuan
AU - Li, Shangyu
AU - Huang, Qixuan
AU - Huang, Zijian
AU - Liu, Haifei
AU - Qiu, Jianan
AU - Yang, Puyu
AU - Tao, Laifa
N1 - Publisher Copyright:
© 2025 Elsevier B.V.
PY - 2025/7/19
Y1 - 2025/7/19
N2 - Fault diagnosis of mechanical equipment involves data collection, feature extraction, and pattern recognition but is often hindered by the imbalanced nature of industrial data, introducing significant uncertainty and reducing diagnostic reliability. To address these challenges, this study proposes the Uncertainty-Aware Bayesian Meta-Learning Framework (UBMF), which integrates four key modules: data perturbation injection for enhancing feature robustness, cross-task self-supervised feature extraction for improving transferability, uncertainty-based sample filtering for robust out-of-domain generalization, and Bayesian meta-knowledge integration for fine-grained classification. Experimental results on ten open-source datasets under various imbalanced conditions, including cross-task, small-sample, and unseen-sample scenarios, demonstrate the superiority of UBMF, achieving an average improvement of 42.22 % across ten Any-way 1–5-shot diagnostic tasks.This
AB - Fault diagnosis of mechanical equipment involves data collection, feature extraction, and pattern recognition but is often hindered by the imbalanced nature of industrial data, introducing significant uncertainty and reducing diagnostic reliability. To address these challenges, this study proposes the Uncertainty-Aware Bayesian Meta-Learning Framework (UBMF), which integrates four key modules: data perturbation injection for enhancing feature robustness, cross-task self-supervised feature extraction for improving transferability, uncertainty-based sample filtering for robust out-of-domain generalization, and Bayesian meta-knowledge integration for fine-grained classification. Experimental results on ten open-source datasets under various imbalanced conditions, including cross-task, small-sample, and unseen-sample scenarios, demonstrate the superiority of UBMF, achieving an average improvement of 42.22 % across ten Any-way 1–5-shot diagnostic tasks.This
KW - Bayesian framework
KW - Fault diagnosis
KW - Imbalanced industrial data
KW - Meta-learning
KW - Uncertainty
UR - https://www.scopus.com/pages/publications/105006643838
U2 - 10.1016/j.knosys.2025.113772
DO - 10.1016/j.knosys.2025.113772
M3 - 文章
AN - SCOPUS:105006643838
SN - 0950-7051
VL - 323
JO - Knowledge-Based Systems
JF - Knowledge-Based Systems
M1 - 113772
ER -