TY - JOUR
T1 - An uncertainty decomposition-based automated out-of-distribution detection framework- for trustworthy machinery fault diagnosis
AU - Zeng, Tao
AU - Jiang, Hongkai
AU - Wang, Xin
AU - Bai, Yan
AU - Yi, Zichun
N1 - Publisher Copyright:
© 2025 IOP Publishing Ltd. All rights, including for text and data mining, AI training, and similar technologies, are reserved.
PY - 2025/8/31
Y1 - 2025/8/31
N2 - In modern industrial systems, machinery frequently encounters out-of-distribution (OOD) samples due to unknown faults and abnormal operating conditions. However, conventional deep learning methods, which rely on point estimation and lack uncertainty quantification capabilities, struggle to provide reliable judgments under such circumstances. Existing Bayesian deep learning methods have made progress in identifying unknown faults. However, their quantification accuracy under unknown conditions is still limited. In addition, these methods lack the ability to effectively distinguish between different types of anomalies in such conditions. To address this issue, this paper proposes an uncertainty decomposition-based automatic detection framework to enhance the model’s ability to detect OOD faults. First, a dynamic Kullback-Leibler divergence weighting mechanism is introduced to improve the model’s capability to capture uncertainties at different network layers. Then, a more refined uncertainty decomposition method is designed to enhance the interpretability of uncertainty quantification. Finally, an automatic detection mechanism based on statistical analysis is developed to enable automatic identification of OOD samples. Experimental results on two datasets demonstrate the effectiveness of the proposed framework. It significantly improves the diagnostic accuracy of Bayesian deep learning models. Moreover, it achieves more precise uncertainty quantification. These improvements enhance the reliability of the diagnostic results.
AB - In modern industrial systems, machinery frequently encounters out-of-distribution (OOD) samples due to unknown faults and abnormal operating conditions. However, conventional deep learning methods, which rely on point estimation and lack uncertainty quantification capabilities, struggle to provide reliable judgments under such circumstances. Existing Bayesian deep learning methods have made progress in identifying unknown faults. However, their quantification accuracy under unknown conditions is still limited. In addition, these methods lack the ability to effectively distinguish between different types of anomalies in such conditions. To address this issue, this paper proposes an uncertainty decomposition-based automatic detection framework to enhance the model’s ability to detect OOD faults. First, a dynamic Kullback-Leibler divergence weighting mechanism is introduced to improve the model’s capability to capture uncertainties at different network layers. Then, a more refined uncertainty decomposition method is designed to enhance the interpretability of uncertainty quantification. Finally, an automatic detection mechanism based on statistical analysis is developed to enable automatic identification of OOD samples. Experimental results on two datasets demonstrate the effectiveness of the proposed framework. It significantly improves the diagnostic accuracy of Bayesian deep learning models. Moreover, it achieves more precise uncertainty quantification. These improvements enhance the reliability of the diagnostic results.
KW - Bayesian deep learning
KW - Kolmogorov-Smirnov test
KW - intelligent fault diagnosis
KW - interpretability
KW - out of distribution detection
UR - https://www.scopus.com/pages/publications/105014737129
U2 - 10.1088/1361-6501/adfcf8
DO - 10.1088/1361-6501/adfcf8
M3 - 文章
AN - SCOPUS:105014737129
SN - 0957-0233
VL - 36
JO - Measurement Science and Technology
JF - Measurement Science and Technology
IS - 8
M1 - 085121
ER -