Discrete Workshop Production Bottleneck Prediction with CNN-LSTM Spatio-temporal Network Integrated with Dual Attention Mechanism
SHI Yihan1,2,3, ZHANG Xu1, ZHUANG Cunbo1,2,3, LIU Jinshan4, WANG Jiaxiu4, SUN Liansheng4
1. School of Mechanical Engineering, Beijing Institute of Technology, Beijing 100081; 2. Hebei Key Laboratory of Intelligent assembly and Detection technology, Tangshan 063000; 3. Tangshan Research Institute, Beijing Institute of Technology, Tangshan 063000; 4. Beijing Spacecraft Manufacturing Co., Ltd., Beijing 100094
SHI Yihan, ZHANG Xu, ZHUANG Cunbo, LIU Jinshan, WANG Jiaxiu, SUN Liansheng. Discrete Workshop Production Bottleneck Prediction with CNN-LSTM Spatio-temporal Network Integrated with Dual Attention Mechanism[J]. Journal of Mechanical Engineering, 2026, 62(5): 49-60.
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