Recent advances in metasurface design and quantum optics applications with machine learning, physics-informed neural networks, and topology optimization methods

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作者
Wenye Ji
Jin Chang
He-Xiu Xu
Jian Rong Gao
Simon Gröblacher
H. Paul Urbach
Aurèle J. L. Adam
机构
[1] Delft University of Technology,Department of Imaging Physics
[2] Delft University of Technology,Department of Quantum Nanoscience
[3] Northwestern Polytechnical University (NPU),Shaanxi Key Laboratory of Flexible Electronics (KLoFE)
[4] SRON Netherlands Institute for Space Research,undefined
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摘要
As a two-dimensional planar material with low depth profile, a metasurface can generate non-classical phase distributions for the transmitted and reflected electromagnetic waves at its interface. Thus, it offers more flexibility to control the wave front. A traditional metasurface design process mainly adopts the forward prediction algorithm, such as Finite Difference Time Domain, combined with manual parameter optimization. However, such methods are time-consuming, and it is difficult to keep the practical meta-atom spectrum being consistent with the ideal one. In addition, since the periodic boundary condition is used in the meta-atom design process, while the aperiodic condition is used in the array simulation, the coupling between neighboring meta-atoms leads to inevitable inaccuracy. In this review, representative intelligent methods for metasurface design are introduced and discussed, including machine learning, physics-information neural network, and topology optimization method. We elaborate on the principle of each approach, analyze their advantages and limitations, and discuss their potential applications. We also summarize recent advances in enabled metasurfaces for quantum optics applications. In short, this paper highlights a promising direction for intelligent metasurface designs and applications for future quantum optics research and serves as an up-to-date reference for researchers in the metasurface and metamaterial fields.
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