Training Deep Neural Networks for the Inverse Design of Nanophotonic Structures 论文

2018ACS Photonics引用 1093
Neural Networks and Reservoir ComputingPhotonic Crystals and ApplicationsMetamaterials and Metasurfaces Applications

摘要

Data inconsistency leads to a slow training process when deep neural networks are used for the inverse design of photonic devices, an issue that arises from the fundamental property of nonuniqueness in all inverse scattering problems. Here we show that by combining forward modeling and inverse design in a tandem architecture, one can overcome this fundamental issue, allowing deep neural networks to be effectively trained by data sets that contain nonunique electromagnetic scattering instances. This paves the way for using deep neural networks to design complex photonic structures that require large training data sets.