计算机科学
变形(气象学)
匹配(统计)
人工智能
机器人
软物质
有限元法
计算机视觉
地质学
结构工程
数学
工程类
胶体
化学工程
海洋学
统计
作者
Huanyu Yang,Yiwei Cheng,Penghui Zhao,Jiageng Cai,Zhaowei Yin,Shaomin Chen,Ge Guo,Chi Zhu,Ke Liu,Lingyun Zu
标识
DOI:10.1002/advs.202414526
摘要
Abstract Accurate and non‐destructive detection of material abnormalities inside soft matter remains an elusive challenge due to its variable and heterogeneous nature, especially regarding non‐visual information. Here, a method is introduced that uncovers the physical information of internal material abnormalities from large deformations observed on the surface of the soft object. It finds the most probable values of imperceptible physical parameters by matching the nonlinear surface deformation between observation and finite element simulation through parallel Bayesian optimization, balancing the trade‐off between simulation accuracy and computational efficiency. Numerical and experimental tests, including simulated cases of aortic valve calcification, are conducted to showcase the effectiveness of our method, where we successfully recover hidden physical parameters including material stiffness, abnormality shape, and location. The method holds substantial promise for advancing the fields of material perception of robots, soft robotics, biology, and medical diagnostics, offering a powerful tool for the precise, efficient, and non‐invasive analysis of soft matter.
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