稳健性(进化)
计算机科学
卷积神经网络
人工智能
可信赖性
机器学习
数据挖掘
断层(地质)
可靠性(半导体)
人工神经网络
量子力学
生物化学
基因
计算机安全
物理
地质学
功率(物理)
地震学
化学
作者
Hanting Zhou,Wenhe Chen,Longsheng Cheng,Jing Liu,Min Xia
标识
DOI:10.1109/tii.2023.3241587
摘要
Deep neural networks (DNNs) have been widely used for intelligent fault diagnosis under the closed-world assumption that any testing data are within classes of the training data. However, in reality, out-of-distribution (OOD) cases, such as new fault conditions, can happen after the original trained model is deployed. Most of the current DNNs are deterministic, which can misclassify with high confidence in the open-world scenario. This overconfident behavior would not guarantee the reliability and robustness of fault diagnosis results in practice. Therefore, trustworthy intelligent fault diagnosis with uncertainty estimation is crucial for real applications. In this article, we develop a novel convolutional neural network integrating evidence theory to achieve fault classifications with prediction uncertainty estimation. The estimated prediction uncertainty can identify potential OOD samples. This approach allows a minimal modification of the state-of-the-art DNN model by using a risk-calibrated evidential loss function and Dirichlet distribution that replaces the classification probabilities. The experimental results show that the proposed approach can not only achieve accurate classification of known classes but also detect unknown classes effectively. The proposed method shows significant potential in detecting OOD patterns and provides trustworthy fault diagnosis in open and nonstationary environments.
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