一叶扁舟的博客分享 http://blog.sciencenet.cn/u/jinhejiang 崇山峻岭中的一滴露珠

博文

云师大信息学院杨成福、夏跃龙在ACS Applied Materials & Interfaces上刊登最新研究成果

已有 1192 次阅读 2024-9-15 22:55 |个人分类:云师大研究|系统分类:论文交流

2024年9月4日,ACS 旗下top期刊《ACS Applied Materials & Interfaces》在线发表了云南师范大学信息学院杨成福、夏跃龙博士最新研究成果《On-Demand Design of Metasurfaces through Multineural Network Fusion云南师范大学信息学院杨成福博士和夏跃龙为通讯作者。

https://pubs.acs.org/doi/10.1021/acsami.4c11972

Abstract

Click to copy section link

Abstract Image

In this paper, a multineural network fusion freestyle metasurface on-demand design method is proposed. The on-demand design method involves rapidly generating corresponding metasurface patterns based on the user-defined spectrum. The generated patterns are then input into a simulator to predict their corresponding S-parameter spectrogram, which is subsequently analyzed against the real S-parameter spectrogram to verify whether the generated metasurface patterns meet the desired requirements. The methodology is based on three neural network models: a Wasserstein Generative Adversarial Network model with a U-net architecture (U-WGAN) for inverse structural design, a Variational Autoencoder (VAE) model for compression, and an LSTM + Attention model for forward S-parameter spectrum prediction validation. The U-WGAN is utilized for on-demand reverse structural design, aiming to rapidly discover high-fidelity metasurface patterns that meet specific electromagnetic spectrum responses. The VAE, as a probabilistic generation model, serves as a bridge, mapping input data to latent space and transforming it into latent variable data, providing crucial input for a forward S-parameter spectrum prediction model. The LSTM + Attention network, acting as a forward S-parameter spectrum prediction model, can accurately and efficiently predict the S-parameter spectrum corresponding to the latent variable data and compare it with the real spectrum. In addition, the digits “0” and “1” are used in the design to represent vacuum and metallic materials, respectively, and a 10 × 10 cell array of freestyle metasurface patterns is constructed. The significance of the research method proposed in this paper lies in the following: (1) The freestyle metasurface design significantly expands the possibility of metamaterial design, enabling the creation of diverse metasurface structures that are difficult to achieve with traditional methods. (2) The on-demand design approach can generate high-fidelity metasurface patterns that meet the expected electromagnetic characteristics and responses. (3) The fusion of multiple neural networks demonstrates high flexibility, allowing for the adjustment of network structures and training methods based on specific design requirements and data characteristics, thus better accommodating different design problems and optimization objectives.

© 2024 American Chemical Society

扩展阅读:

杨成福-云南师范大学信息学院



https://blog.sciencenet.cn/blog-454141-1451307.html

上一篇:2024年国家社会科学基金年度项目获资助公示,敬请查收!!!
下一篇:云师大化工学院肖凤屏、胡鹏在《Journal of Colloid and Interface Science》发表成果
收藏 IP: 39.129.255.*| 热度|

1 杨正瓴

该博文允许注册用户评论 请点击登录 评论 (0 个评论)

数据加载中...

Archiver|手机版|科学网 ( 京ICP备07017567号-12 )

GMT+8, 2024-11-22 21:39

Powered by ScienceNet.cn

Copyright © 2007- 中国科学报社

返回顶部