2024
DOI: 10.1002/adts.202300776
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Fracture Prediction of Hydrogel Using Machine Learning and Inhomogeneous Multiscale Network

Shoujing Zheng,
Hao You,
K. Y. Lam
et al.

Abstract: Hydrogels are soft polymeric materials with promising applications in biomedical fields. Understanding their fracture behavior is crucial for optimizing device design and performance. However, predicting hydrogel fracture is challenging due to the complex interplay between material properties and environmental factors. In this study, a machine learning (ML) approach to predict hydrogel fracture behavior is presented. A multiscale hydrogel fracture model is developed to generate simulation data, which is used t… Show more

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