Open-Set Fault Diagnosis in Multimode Processes via Fine-Grained Deep Feature Representation
- URL: http://arxiv.org/abs/2508.09462v1
- Date: Wed, 13 Aug 2025 03:38:44 GMT
- Title: Open-Set Fault Diagnosis in Multimode Processes via Fine-Grained Deep Feature Representation
- Authors: Guangqiang Li, M. Amine Atoui, Xiangshun Li,
- Abstract summary: In multimode processes, samples belonging to the same health state often show multiple cluster distributions.<n>A novel open-set fault diagnosis model named fine-grained clustering and gated rejection network (FGCRN) is proposed.<n>It combines multiscale depthwise convolution, bidirectional recurrent unit and temporal attention mechanism to capture discriminative features.
- Score: 1.9389881806157316
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: A reliable fault diagnosis system should not only accurately classify known health states but also effectively identify unknown faults. In multimode processes, samples belonging to the same health state often show multiple cluster distributions, making it difficult to construct compact and accurate decision boundaries for that state. To address this challenge, a novel open-set fault diagnosis model named fine-grained clustering and rejection network (FGCRN) is proposed. It combines multiscale depthwise convolution, bidirectional gated recurrent unit and temporal attention mechanism to capture discriminative features. A distance-based loss function is designed to enhance the intra-class compactness. Fine-grained feature representations are constructed through unsupervised learning to uncover the intrinsic structures of each health state. Extreme value theory is employed to model the distance between sample features and their corresponding fine-grained representations, enabling effective identification of unknown faults. Extensive experiments demonstrate the superior performance of the proposed method.
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