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Dynamic Modeling of Intrinsic Self-Healing Polymers Using Deep Learning.
Anwar Ali, Hashina Parveen; Zhao, Zichen; Tan, Yu Jun; Yao, Wei; Li, Qianxiao; Tee, Benjamin C K.
Afiliação
  • Anwar Ali HP; Department of Materials Science and Engineering, National University of Singapore, 9 Engineering Drive 1, Singapore117575, Singapore.
  • Zhao Z; Biomedical Engineering & Materials Group, School of Engineering, Nanyang Polytechnic, 180 Ang Mo Kio Avenue 8, Singapore569830, Singapore.
  • Tan YJ; Department of Mathematics, National University of Singapore, 10 Lower Kent Ridge Road, Singapore119076, Singapore.
  • Yao W; Department of Mechanical Engineering, National University of Singapore, 9 Engineering Drive 1, Singapore117575, Singapore.
  • Li Q; Department of Materials Science and Engineering, National University of Singapore, 9 Engineering Drive 1, Singapore117575, Singapore.
  • Tee BCK; Department of Mathematics, National University of Singapore, 10 Lower Kent Ridge Road, Singapore119076, Singapore.
ACS Appl Mater Interfaces ; 14(46): 52486-52498, 2022 Nov 23.
Article em En | MEDLINE | ID: mdl-36346733
ABSTRACT
The properties of self-healing polymers are traditionally identified through destructive testing. This means that the mechanics are explored in hindsight with either theoretical derivations and/or simulations. Here, a self-healing property evolution using energy functional dynamical (SPEED) model is proposed to predict and understand the mechanics of self-healing of polymers using images of cuts dynamically healing over time. Using machine learning, an energy functional minimization (EFM) model extracted an effective underlying dynamical system from a time series of two-dimensional cut images on a self-healing polymer of constant thickness. This model can be used to capture the physics behind the self-healing dynamics in terms of potential and interface energies. When combined with a static property prediction model, the SPEED model can predict the macroscopic evolution of material properties after training only on a small set of experimental measurements. Such temporal evolutions are usually inaccessible from pure experiments or computational modeling due to the need for destructive testing. As an example, we validate this approach on toughness measurements of an intrinsic self-healing conductive polymer by capturing over 100 000 image frames of cuts to build the machine learning (ML) model. The results show that the SPEED model can be applied to predict the temporal evolution of macroscopic properties using few measurements as training data.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2022 Tipo de documento: Article País de afiliação: Singapura

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2022 Tipo de documento: Article País de afiliação: Singapura