TY - JOUR
T1 - An attention-based knowledge fusion dual-stream network for intelligent machinery fault diagnosis
AU - Bai, Yan
AU - Jiang, Hongkai
AU - Zeng, Tao
AU - Wang, Xin
N1 - Publisher Copyright:
© 2025 IOP Publishing Ltd. All rights, including for text and data mining, AI training, and similar technologies, are reserved.
PY - 2025/7/31
Y1 - 2025/7/31
N2 - Machinery operating under complex conditions inevitably generates new fault modes over time. Traditional fault diagnosis methods cannot effectively identify these new fault modes. To address the above issue, this paper proposes an attention-based knowledge fusion dual-stream network (AKFDN) for class incremental learning. First, a gradient-decoupled dual-stream convolutional layer is constructed to achieve efficient fusion of old and new knowledge. The memory stream uses a parameter isolation mechanism to retain existing knowledge, while the learning stream adapts quickly to new fault modes through adaptive gradient updates. Secondly, an adaptive knowledge fusion strategy is introduced to enhance the balance between prior and newly acquired knowledge during the fusion process, thereby effectively addressing the data imbalance problem in incremental replay. Finally, an information-preserving attention mechanism is developed to capture correlations across dimensions in time series data. This enhances the model’s ability to represent sequential features. Experimental results show that the AKFDN method delivers excellent diagnostic performance across various benchmark datasets. This provides a new perspective for advancing research in class-incremental fault diagnosis of machinery components.
AB - Machinery operating under complex conditions inevitably generates new fault modes over time. Traditional fault diagnosis methods cannot effectively identify these new fault modes. To address the above issue, this paper proposes an attention-based knowledge fusion dual-stream network (AKFDN) for class incremental learning. First, a gradient-decoupled dual-stream convolutional layer is constructed to achieve efficient fusion of old and new knowledge. The memory stream uses a parameter isolation mechanism to retain existing knowledge, while the learning stream adapts quickly to new fault modes through adaptive gradient updates. Secondly, an adaptive knowledge fusion strategy is introduced to enhance the balance between prior and newly acquired knowledge during the fusion process, thereby effectively addressing the data imbalance problem in incremental replay. Finally, an information-preserving attention mechanism is developed to capture correlations across dimensions in time series data. This enhances the model’s ability to represent sequential features. Experimental results show that the AKFDN method delivers excellent diagnostic performance across various benchmark datasets. This provides a new perspective for advancing research in class-incremental fault diagnosis of machinery components.
KW - adaptive knowledge fusion
KW - class incremental learning
KW - intelligent fault diagnosis
KW - interaction attention mechanism
UR - https://www.scopus.com/pages/publications/105009902216
U2 - 10.1088/1361-6501/ade554
DO - 10.1088/1361-6501/ade554
M3 - 文章
AN - SCOPUS:105009902216
SN - 0957-0233
VL - 36
JO - Measurement Science and Technology
JF - Measurement Science and Technology
IS - 7
M1 - 075107
ER -