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基于深度学习的超纤维增强水凝胶复合材料的机械场引导结构设计策略

Mechanical Field Guiding Structure Design Strategy for Meta-Fiber Reinforced Hydrogel Composites by Deep Learning.

作者信息

Liu Chuanzhi, Zhang Xingyu, Liu Xia, Yang Qingsheng

机构信息

School of Mathematics Statistics and Mechanics, Beijing University of Technology, Beijing, 100124, China.

出版信息

Adv Sci (Weinh). 2024 Jun;11(22):e2310141. doi: 10.1002/advs.202310141. Epub 2024 Mar 23.

Abstract

Fiber-reinforced hydrogel composites are widely employed in many engineering applications, such as drug release, and flexible electronics, with more flexible mechanical properties than pure hydrogel materials. Comparing to the hydrogel strengthened by continuous fiber, the meta-fiber reinforced hydrogel provides stronger individualized design ability of deformation patterns and tunable stiffness, especially for the elaborate applications in joint, cartilage, and organ. In this paper, a novel structure design strategy based on deep learning algorithm is proposed for hydrogel reinforced by meta-fiber to achieve targeted mechanical properties, such as stress and displacement fields. A solid mechanic model for meta-fiber reinforced hydrogel is first developed to construct the dataset of fiber distribution and the corresponding mechanical properties of the composite. Generative adversarial network (GAN) is then trained to characterize the relationship between stress or displacement field, and meta-fiber distribution. The well-trained GAN is implemented to design meta-fiber reinforced hydrogel composite structure under specific operation conditions. The results show that the deep learning method may efficiently predict the structure of the hydrogel composite with satisfied confidence, and has great potential for applications in drug delivery and flexible electronics.

摘要

纤维增强水凝胶复合材料广泛应用于许多工程领域,如药物释放和柔性电子器件,其机械性能比纯水凝胶材料更灵活。与连续纤维增强水凝胶相比,亚纤维增强水凝胶具有更强的变形模式个性化设计能力和可调刚度,尤其适用于关节、软骨和器官的精细应用。本文提出了一种基于深度学习算法的新型结构设计策略,用于亚纤维增强水凝胶,以实现目标机械性能,如应力和位移场。首先建立了亚纤维增强水凝胶的固体力学模型,以构建纤维分布数据集和复合材料的相应机械性能。然后训练生成对抗网络(GAN)来表征应力或位移场与亚纤维分布之间的关系。将训练好的GAN应用于特定操作条件下的亚纤维增强水凝胶复合材料结构设计。结果表明,深度学习方法可以有效地预测水凝胶复合材料的结构,并具有较高的置信度,在药物递送和柔性电子器件中具有巨大的应用潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cf98/11165469/9f8b4812903a/ADVS-11-2310141-g029.jpg

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