TY - JOUR
T1 - Zero-Shot Fault Diagnosis in Manufacturing Processes via Attribute Co-Occurrence Relationships
AU - Dai, Wei
AU - Zhao, Boyang
AU - Lin, Yun
AU - Zheng, Qinglin
AU - Li, Yazhou
N1 - Publisher Copyright:
© 1963-2012 IEEE.
PY - 2026
Y1 - 2026
N2 - In the transition from pilot to mass production, certain fault classes lack available samples, creating a zero-shot condition that challenges the training of fault diagnosis models. Zero-shot learning (ZSL) maps features to shared attribute vectors formed by engineering knowledge information, offering a potential solution. In manufacturing processes, disturbances propagate across operations, causing multiple attributes to co-occur. However, the internal co-occurrence relationships among attributes are often overlooked, which may lead to discrepancies in attribute prediction. To address this issue, we propose a zero-shot fault diagnosis method for manufacturing processes that leverages attribute co-occurrence relationships to identify unseen faults. To capture this relationship, mutual information is first employed to quantify attribute co-occurrence and construct an adjacency matrix of attribute relations. In parallel, distributional features are extracted using multidelay ordinal patterns, and a distance-based loss function is designed to align these features with the attributes. The adjacency matrix and distributional features are then input into a graph convolutional network, with attribute relationships embedded into the distributional features to maintain consistency. Finally, distributional features support zero-shot fault diagnosis via mapping and similarity measures. Experimental validation on the Tennessee Eastman Process and fuel rods manufacturing process demonstrates the effectiveness of the proposed method.
AB - In the transition from pilot to mass production, certain fault classes lack available samples, creating a zero-shot condition that challenges the training of fault diagnosis models. Zero-shot learning (ZSL) maps features to shared attribute vectors formed by engineering knowledge information, offering a potential solution. In manufacturing processes, disturbances propagate across operations, causing multiple attributes to co-occur. However, the internal co-occurrence relationships among attributes are often overlooked, which may lead to discrepancies in attribute prediction. To address this issue, we propose a zero-shot fault diagnosis method for manufacturing processes that leverages attribute co-occurrence relationships to identify unseen faults. To capture this relationship, mutual information is first employed to quantify attribute co-occurrence and construct an adjacency matrix of attribute relations. In parallel, distributional features are extracted using multidelay ordinal patterns, and a distance-based loss function is designed to align these features with the attributes. The adjacency matrix and distributional features are then input into a graph convolutional network, with attribute relationships embedded into the distributional features to maintain consistency. Finally, distributional features support zero-shot fault diagnosis via mapping and similarity measures. Experimental validation on the Tennessee Eastman Process and fuel rods manufacturing process demonstrates the effectiveness of the proposed method.
KW - Attribute co-occurrence relationships
KW - graph convolutional network
KW - manufacturing processes
KW - multidelay ordinal patterns
KW - zero-shot fault diagnosis
UR - https://www.scopus.com/pages/publications/105030227205
U2 - 10.1109/TR.2026.3664207
DO - 10.1109/TR.2026.3664207
M3 - 文章
AN - SCOPUS:105030227205
SN - 0018-9529
VL - 75
SP - 977
EP - 990
JO - IEEE Transactions on Reliability
JF - IEEE Transactions on Reliability
ER -