计算机科学
人工神经网络
纳米光子学
光子学
分路器
深度学习
反向
人工智能
电子工程
工程类
数学
光学
物理
几何学
作者
Keisuke Kojima,Mohammad H. Tahersima,Toshiaki Koike‐Akino,Devesh K. Jha,Yingheng Tang,Ye Wang,Kieran Parsons
标识
DOI:10.1109/jlt.2021.3050083
摘要
Deep learning is now playing a major role in designing photonic devices, including nanostructured photonics. In this article, we investigate three models for designing nanophonic power splitters with multiple splitting ratios. The first model is a forward regression model, wherein the trained deep neural network (DNN) is used within the optimization loop. The second is an inverse regression model, in which the trained DNN constructs a structure with the desired target performance given as input. The third model is a generative network, which can randomly produce a series of optimized designs for a target performance. Focusing on the nanophotonic power splitters, we show how the devices can be designed by these three types of DNN models.
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