多物理
计算机科学
有限元法
操作员(生物学)
数码产品
人工智能
模拟
分布式计算
工程类
结构工程
生物化学
化学
抑制因子
转录因子
基因
电气工程
作者
Shuyu Wang,Dingli Zhang,A.H.-J. Wang,Tianyu Yang
摘要
The piezoionic effect holds significant promise for revolutionizing biomedical electronics and ionic skins. However, modeling this multiphysics phenomenon remains challenging due to its high complexity and computational limitations. To address this problem, this study pioneers the application of deep operator networks to effectively model the time-dependent piezoionic effect. By leveraging a data-driven approach, our model significantly reduces computational time compared to traditional finite element analysis (FEA). In particular, we trained a DeepONet using a comprehensive dataset generated through FEA calibrated to experimental data. Through rigorous testing with step responses, slow-changing forces, and dynamic-changing forces, we show that the model captures the intricate temporal dynamics of the piezoionic effect in both the horizontal and vertical planes. This capability offers a powerful tool for real-time analysis of piezoionic phenomena, contributing to simplifying the design of tactile interfaces and potentially complementing existing tactile imaging technologies.
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