Applied Mathematics and Mechanics (English Edition) ›› 2024, Vol. 45 ›› Issue (10): 1685-1704.doi: https://doi.org/10.1007/s10483-024-3178-9
收稿日期:
2024-08-15
出版日期:
2024-10-03
发布日期:
2024-09-27
Jing'ang ZHU, Yiheng XUE, Zishun LIU*()
Received:
2024-08-15
Online:
2024-10-03
Published:
2024-09-27
Contact:
Zishun LIU
E-mail:zishunliu@mail.xjtu.edu.cn
Supported by:
中图分类号:
. [J]. Applied Mathematics and Mechanics (English Edition), 2024, 45(10): 1685-1704.
Jing'ang ZHU, Yiheng XUE, Zishun LIU. A transfer learning enhanced physics-informed neural network for parameter identification in soft materials[J]. Applied Mathematics and Mechanics (English Edition), 2024, 45(10): 1685-1704.
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