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考虑校准的不确定性感知故障诊断

Uncertainty-Aware Fault Diagnosis Under Calibration

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2024
被引 24
ABS 3

中文导读

提出一种基于贝叶斯深度学习的故障诊断框架,联合量化偶然、认知和分布三种不确定性,并引入校准损失提高量化精度,在轴承数据集上验证了诊断准确性和不确定性校准效果。

Abstract

Fault diagnosis plays an important role in guiding maintenance actions and prevent safety hazards. With the development of sensor and computer technology, deep learning (DL)-based fault diagnosis methods have been substantially developed. However, the inability to reliably represent and quantify uncertainties associated with the diagnostic results greatly hinders their industrial applicability. In this article, an uncertainty-aware fault diagnosis framework based on the Bayesian DL is proposed considering uncertainty quantification and calibration. To achieve explainable representations of different types of uncertainties, aleatoric uncertainty, epistemic uncertainty, and distributional uncertainty, which stem from the noise inherent in the observations, lack of knowledge, and domain shift, respectively, are jointly characterized for uncertainty quantification. Besides, to improve the quantification accuracy and obtain trustworthy diagnostic results to support subsequent maintenance, a novel calibration loss is proposed for the uncertainty calibration. The proposed method is applied to the two different bearing datasets to demonstrate its effectiveness in providing both the accurate diagnostic results and calibrated uncertainty quantification.

故障诊断深度学习不确定性量化贝叶斯深度学习校准