Asymmetric CycleGANs for inverse design of photonic metastructures

Jeygopi Panisilvam, Elnaz Hajizadeh, Hansani Weeratunge, James Bailey, Sejeong Kim
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Abstract

Using deep learning to develop nanophotonic structures has been an active field of research in recent years to reduce the time intensive iterative solutions found in finite-difference time-domain simulations. Existing work has primarily used a specific type of generative network: conditional deep convolutional generative adversarial networks. However, these networks have issues with producing clear optical structures in image files; for example, a large number of images show speckled noise, which often results in non-manufacturable structures. Here, we report the first use of cycle-consistent generative adversarial networks to design nanophotonic structures. This approach significantly reduces the amount of speckled noise present in generated geometric structures and allows shapes to have clear edges. We demonstrate that for a given input reflectance spectra, the system generates designs in the form of images, and a complementary network generates reflectance spectra if an image containing a shape is provided as an input. The results show a higher Frechet Inception Distance score than previous approaches, which indicates that the generated structures are of higher quality and are able to learn nonlinear relationships between both datasets. This method of designing nanophotonics provides alternative avenues for development that are more noise robust while still adhering to desired optical properties.
光子元结构逆设计的不对称循环gan
利用深度学习来开发纳米光子结构是近年来研究的一个活跃领域,以减少在有限差分时域模拟中发现的时间密集型迭代解。现有的工作主要使用了一种特定类型的生成网络:条件深度卷积生成对抗网络。然而,这些网络在图像文件中产生清晰的光学结构方面存在问题;例如,大量图像显示斑点噪声,这往往导致不可制造的结构。在这里,我们报告了首次使用周期一致生成对抗网络来设计纳米光子结构。这种方法大大减少了产生的几何结构中存在的斑点噪声的数量,并允许形状具有清晰的边缘。我们证明,对于给定的输入反射光谱,系统以图像的形式生成设计,如果提供包含形状的图像作为输入,则互补网络生成反射光谱。结果显示,与之前的方法相比,该方法的Frechet Inception Distance得分更高,这表明生成的结构质量更高,并且能够学习两个数据集之间的非线性关系。这种设计纳米光子学的方法为开发提供了另一种途径,这种方法在保持所需光学特性的同时具有更强的噪声鲁棒性。
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