Institute of Electromagnetics and Acoustics and Key Laboratory of Electromagnetic Wave Science and Detection Technology, Xiamen University, Xiamen, Fujian, 361005, P. R. China.
Shenzhen Research Institute of Xiamen University, Shenzhen, Guangdong, 518057, China.
Adv Sci (Weinh). 2023 May;10(13):e2206718. doi: 10.1002/advs.202206718. Epub 2023 Feb 28.
The research of metamaterial shows great potential in the field of solar energy harvesting. In the past decade, the design of broadband solar metamaterial absorber (SMA) has attracted a surge of interest. The conventional design typically requires brute-force optimizations with a huge sampling space of structure parameters. Very recently, deep learning (DL) has provided a promising way in metamaterial design, but its application on SMA development is barely reported due to the complicated features of broadband spectrum. Here, this work develops the DL model based on metamaterial spectrum transformer (MST) for the powerful design of high-performance SMAs. The MST divides the optical spectrum of metamaterial into N patches, which overcomes the severe problem of overfitting in traditional DL and boosts the learning capability significantly. A flexible design tool based on free customer definition is developed to facilitate the real-time on-demand design of metamaterials with various optical functions. The scheme is applied to the design and fabrication of SMAs with graded-refractive-index nanostructures. They demonstrate the high average absorptance of 94% in a broad solar spectrum and exhibit exceptional advantages over many state-of-the-art counterparts. The outdoor testing implies the high-efficiency energy collection of about 1061 kW h m from solar radiation annually. This work paves a way for the rapid smart design of SMA, and will also provide a real-time developing tool for many other metamaterials and metadevices.
超材料在太阳能收集领域的研究显示出巨大的潜力。在过去的十年中,宽带太阳能超材料吸收器(SMA)的设计引起了人们的极大兴趣。传统的设计通常需要使用结构参数的巨大采样空间进行暴力优化。最近,深度学习(DL)为超材料设计提供了一种很有前途的方法,但由于宽带光谱的复杂特征,其在 SMA 开发中的应用几乎没有报道。在这里,这项工作基于超材料光谱变换器(MST)开发了基于深度学习的模型,用于强大的高性能 SMA 设计。MST 将超材料的光学光谱分为 N 个补丁,克服了传统深度学习中的严重过拟合问题,并显著提高了学习能力。开发了一个基于免费客户定义的灵活设计工具,以方便具有各种光学功能的超材料的实时按需设计。该方案应用于具有梯度折射率纳米结构的 SMA 的设计和制造。它们在宽光谱范围内展示了 94%的高平均吸收率,并具有优于许多最先进的同类产品的卓越优势。户外测试表明,每年从太阳辐射中收集的能量约为 1061kW h m。这项工作为 SMA 的快速智能设计铺平了道路,也将为许多其他超材料和元器件提供实时开发工具。