Residual Parallel Neural Networks Aided Inverse Design for Multifunctional Reconfigurable Metamaterial Perfect Absorbers

IF 3.3 4区 物理与天体物理 Q2 CHEMISTRY, PHYSICAL
Shuqin Wang, Zhongchao Wei, Ruihuan Wu, Qiongxiong Ma, Wen Ding, Jianping Guo
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Abstract

In recent years, significant strides have been made in the inverse design of metamaterial perfect absorbers (MPAs) using deep learning techniques. However, this progress has been hindered by the functional homogeneity arising from the structural uniformity of the inverse-designed MPAs. In this paper, we address this limitation by designing reconfigurable MPAs (RMPAs) with three distinct structures and propose a residual parallel neural network (RPNN) that incorporates the optimized residual fully connected neural network (RFC-NN) for the inverse design of multifunctional MPAs. The trained RPNN accurately predicts the structural parameters and their corresponding absorption spectra with remarkable precision, yielding R2 values of 0.9981 and 0.9928, respectively. With this model, we successfully inverted the design of MPAs with three functions: broadband absorption, dual-band absorption, and triple-band absorption properties. A particularly noteworthy achievement was the realization of absorption bandwidth shifts using liquid crystal (LC) materials. Our RPNN showcases its proficiency in designing RMPAs with multifunctionality, all within a single network model. This marks a significant advancement over previous research methodologies. The proposed methodology holds great promise in diverse applications such as solar energy harvesting, detection, and filtration.

Abstract Image

残差并行神经网络辅助多功能可重构超材料完美吸收器的逆设计
近年来,利用深度学习技术在超材料完美吸收剂(mpa)的逆设计方面取得了重大进展。然而,这一进展受到反设计海洋保护区结构均匀性所产生的功能同质性的阻碍。在本文中,我们通过设计具有三种不同结构的可重构MPAs (RMPAs)来解决这一限制,并提出了一种残差并行神经网络(RPNN),该网络结合了优化的残差全连接神经网络(RFC-NN),用于多功能MPAs的逆设计。训练后的RPNN能准确预测结构参数及其对应的吸收光谱,R2值分别为0.9981和0.9928,精度显著。利用该模型,我们成功地反转了具有宽带吸收、双频吸收和三频吸收特性的MPAs的设计。一个特别值得注意的成就是利用液晶(LC)材料实现了吸收带宽的移位。我们的RPNN展示了它在设计多功能rmpa方面的熟练程度,所有这些都在一个单一的网络模型中。这标志着比以往的研究方法有了重大的进步。所提出的方法在太阳能收集、检测和过滤等多种应用中具有很大的前景。
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来源期刊
Plasmonics
Plasmonics 工程技术-材料科学:综合
CiteScore
5.90
自引率
6.70%
发文量
164
审稿时长
2.1 months
期刊介绍: Plasmonics is an international forum for the publication of peer-reviewed leading-edge original articles that both advance and report our knowledge base and practice of the interactions of free-metal electrons, Plasmons. Topics covered include notable advances in the theory, Physics, and applications of surface plasmons in metals, to the rapidly emerging areas of nanotechnology, biophotonics, sensing, biochemistry and medicine. Topics, including the theory, synthesis and optical properties of noble metal nanostructures, patterned surfaces or materials, continuous or grated surfaces, devices, or wires for their multifarious applications are particularly welcome. Typical applications might include but are not limited to, surface enhanced spectroscopic properties, such as Raman scattering or fluorescence, as well developments in techniques such as surface plasmon resonance and near-field scanning optical microscopy.
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