基于可信赖深度学习的工业旋转机械开集故障诊断

Dongdong Wei;Mingjian Zuo;Zhigang Tian
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引用次数: 0

摘要

旋转机械的故障检测与诊断对于保证现代工业信息物理系统的安全性和可靠性至关重要。传统的数据驱动故障诊断方法在处理一组已知故障和工作条件时取得了显著的成功。然而,当面对训练集之外的新故障类时,它们会变得不准确和过度自信。介绍了一种基于可信深度学习的证据弃权分类器。它可以量化预测的不确定性,并在不需要训练数据的情况下识别新的故障类别。实验结果验证了L1正则化在改进不确定度量化方面的有效性。他们还强调了所设计的辅助训练方法在生成故障判别特征和为新故障类型建立有效决策边界方面的熟练程度。EAC可以实现准确的开井故障诊断,减少对历史数据的依赖,提高诊断过程的透明度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Open-Set Fault Diagnosis for Industrial Rotating Machines Based on Trustworthy Deep Learning
Detecting and diagnosing faults in rotating machines is crucial for ensuring the safety and reliability of modern industrial cyber-physical systems. Traditional data-driven fault diagnosis methods have achieved significant success when dealing with a set list of known faults and working conditions. However, they become inaccurate and overconfident when faced with new fault classes outside the training set. This paper introduces a novel Evidential Abstention Classifier based on trustworthy deep learning. It can quantify prediction uncertainty and recognize new fault classes without the need for their training data. Experiment results validated the efficacy of the proposed L1 regularization in improving uncertainty quantification. They also highlighted the proficiency of the designed auxiliary training method in generating fault-discriminative features and establishing effective decision boundaries for new fault types. EAC enables accurate open-set fault diagnosis with reduced reliance on historical data, offering improved transparency in the diagnostic process.
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