Interpretable inverse design of optical multilayer thin films based on extended neural adjoint and regression activation mapping
Sungjun Kim, Jungho Kim

TL;DR
This paper introduces an extended neural adjoint framework for the inverse design of optical multilayer thin films, achieving high accuracy, diversity, and interpretability through novel neural network architecture and visualization techniques.
Contribution
It presents a scalable neural adjoint method with a new architecture and a feature visualization approach, F-RAM, enhancing interpretability and performance in optical thin film design.
Findings
Material loss improves accuracy and diversity.
ENA outperforms Res-GLOnet in inverse design tasks.
F-RAM provides consistent feature importance across structures.
Abstract
We propose an extended neural adjoint (ENA) framework, which meets six key criteria for artificial intelligence-assisted inverse design of optical multilayer thin films (OMTs): accuracy, efficiency, diversity, scalability, flexibility, and interpretability. To enhance the scalability of the existing neural adjoint method, we present a novel forward neural network architecture for OMTs and introduce a material loss function into the existing neural adjoint loss function, facilitating the exploration of material configurations of OMTs. Furthermore, we present the detailed formulation of the regression activation mapping for the presented forward neural network architecture (F-RAM), a feature visualization method aimed at improving interpretability. We validated the efficacy of the material loss by conducting an ablation study, where each component of the loss function is systematically…
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Taxonomy
TopicsPhase-change materials and chalcogenides · Magneto-Optical Properties and Applications · Laser Material Processing Techniques
