Advances in Manufacturing ›› 2026, Vol. 14 ›› Issue (2): 499-513.doi: 10.1007/s40436-025-00549-w
• ARTICLES • Previous Articles
Song-Zhe Xu, Qi-Yu Yuan, Zhi-Fan Tang, Chao-Yue Chen, Tao Hu, San-San Shuai, Wei-Dong Xuan, Zhong-Ming Ren
Received:2024-06-07
Revised:2024-07-22
Published:2026-04-27
Contact:
Wei-Dong Xuan,E-mail:wdxuan@shu.edu.cn
E-mail:wdxuan@shu.edu.cn
Supported by:Song-Zhe Xu, Qi-Yu Yuan, Zhi-Fan Tang, Chao-Yue Chen, Tao Hu, San-San Shuai, Wei-Dong Xuan, Zhong-Ming Ren. A deformation prediction based on deep learning for sintering process of ceramic core[J]. Advances in Manufacturing, 2026, 14(2): 499-513.
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