Wang Yunxiang, Yang Ziyuan, Hu Pan, Hossain Sushmit, Liu Zerui, Ou Tse-Hsien, Ye Jiacheng, Wu Wei
Ming Hsieh Department of Electrical Engineering, University of Southern California, Los Angeles, CA 90089, USA.
The High School Affiliated to Renmin University of China, CUIWEI Campus, Beijing 100086, China.
Nanomaterials (Basel). 2023 Sep 15;13(18):2561. doi: 10.3390/nano13182561.
Employing deep learning models to design high-performance metasurfaces has garnered significant attention due to its potential benefits in terms of accuracy and efficiency. A deep learning-based metasurface design framework typically comprises a forward prediction path for predicting optical responses and a backward retrieval path for generating geometrical configurations. In the forward design path, a specific geometrical configuration corresponds to a unique optical response. However, in the inverse design path, a single performance metric can correspond to multiple potential designs. This one-to-many mapping poses a significant challenge for deep learning models and can potentially impede their performance. Although representing the inverse path as a probabilistic distribution is a widely adopted method for tackling this problem, accurately capturing the posterior distribution to encompass all potential solutions remains an ongoing challenge. Furthermore, in most pioneering works, the forward and backward paths are captured using separate models. However, the knowledge acquired from the forward path does not contribute to the training of the backward model. This separation of models adds complexity to the system and can hinder the overall efficiency and effectiveness of the design framework. Here, we utilized an invertible neural network (INN) to simultaneously model both the forward and inverse process. Unlike other frameworks, INN focuses on the forward process and implicitly captures a probabilistic model for the inverse process. Given a specific optical response, the INN enables the recovery of the complete posterior over the parameter space. This capability allows for the generation of novel designs that are not present in the training data. Through the integration of the INN with the angular spectrum method, we have developed an efficient and automated end-to-end metasurface design and evaluation framework. This novel approach eliminates the need for human intervention and significantly speeds up the design process. Utilizing this advanced framework, we have effectively designed high-efficiency metalenses and dual-polarization metasurface holograms. This approach extends beyond dielectric metasurface design, serving as a general method for modeling optical inverse design problems in diverse optical fields.
由于深度学习模型在设计高性能超表面方面具有准确性和效率等潜在优势,因此受到了广泛关注。基于深度学习的超表面设计框架通常包括用于预测光学响应的正向预测路径和用于生成几何配置的反向检索路径。在正向设计路径中,特定的几何配置对应于唯一的光学响应。然而,在逆向设计路径中,单个性能指标可能对应多个潜在设计。这种一对多的映射给深度学习模型带来了重大挑战,并可能阻碍其性能。虽然将逆向路径表示为概率分布是解决此问题的一种广泛采用的方法,但准确捕获后验分布以涵盖所有潜在解决方案仍然是一个持续的挑战。此外,在大多数开创性工作中,正向和逆向路径是使用单独的模型捕获的。然而,从正向路径获得的知识对逆向模型的训练没有帮助。模型的这种分离增加了系统的复杂性,并可能阻碍设计框架的整体效率和有效性。在这里,我们利用可逆神经网络(INN)同时对正向和逆向过程进行建模。与其他框架不同,INN专注于正向过程,并隐式捕获逆向过程的概率模型。给定特定的光学响应,INN能够在参数空间上恢复完整的后验分布。这种能力允许生成训练数据中不存在的新颖设计。通过将INN与角谱方法相结合,我们开发了一个高效且自动化的端到端超表面设计和评估框架。这种新颖的方法消除了人工干预的需要,并显著加快了设计过程。利用这个先进的框架,我们有效地设计了高效的金属透镜和双极化超表面全息图。这种方法不仅适用于介电超表面设计,还可作为一种通用方法,用于对各种光学领域中的光学逆向设计问题进行建模。