Inverse Design of Optical Multilayer Thin Films using Robust Masked Diffusion Models
AI 摘要
利用掩码扩散模型OptoLlama进行光学薄膜逆向设计,性能优于现有方法。
主要贡献
- 提出了基于掩码扩散模型的OptoLlama
- 在薄膜逆向设计任务上取得了更好的性能
- 验证了扩散模型在光子设计中的潜力
方法论
将多层薄膜表示为token序列,训练掩码扩散语言模型,根据光谱预测薄膜结构。
原文摘要
Inverse design of optical multilayer stacks seeks to infer layer materials, thicknesses, and ordering from a desired target spectrum. It is a long-standing challenge due to the large design space and non-unique solutions. We introduce \texttt{OptoLlama}, a masked diffusion language model for inverse thin-film design from optical spectra. Representing multilayer stacks as sequences of material-thickness tokens, \texttt{OptoLlama} conditions generation on reflectance, absorptance, and transmittance spectra and learns a probabilistic mapping from optical response to structure. Evaluated on a representative test set of 3,000 targets, \texttt{OptoLlama} reduces the mean absolute spectral error by 2.9-fold relative to a nearest-neighbor template baseline and by 3.45-fold relative to the state-of-the-art data-driven baseline, called \texttt{OptoGPT}. Case studies on designed and expert-defined targets show that the model reproduces characteristic spectral features and recovers physically meaningful stack motifs, including distributed Bragg reflectors. These results establish diffusion-based sequence modeling as a powerful framework for inverse photonic design.