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Meent: Differentiable Electromagnetic Simulator for Machine Learning

Authors :
Kim, Yongha
Jung, Anthony W.
Kim, Sanmun
Octavian, Kevin
Heo, Doyoung
Park, Chaejin
Shin, Jeongmin
Nam, Sunghyun
Park, Chanhyung
Park, Juho
Han, Sangjun
Lee, Jinmyoung
Kim, Seolho
Jang, Min Seok
Park, Chan Y.
Publication Year :
2024

Abstract

Electromagnetic (EM) simulation plays a crucial role in analyzing and designing devices with sub-wavelength scale structures such as solar cells, semiconductor devices, image sensors, future displays and integrated photonic devices. Specifically, optics problems such as estimating semiconductor device structures and designing nanophotonic devices provide intriguing research topics with far-reaching real world impact. Traditional algorithms for such tasks require iteratively refining parameters through simulations, which often yield sub-optimal results due to the high computational cost of both the algorithms and EM simulations. Machine learning (ML) emerged as a promising candidate to mitigate these challenges, and optics research community has increasingly adopted ML algorithms to obtain results surpassing classical methods across various tasks. To foster a synergistic collaboration between the optics and ML communities, it is essential to have an EM simulation software that is user-friendly for both research communities. To this end, we present Meent, an EM simulation software that employs rigorous coupled-wave analysis (RCWA). Developed in Python and equipped with automatic differentiation (AD) capabilities, Meent serves as a versatile platform for integrating ML into optics research and vice versa. To demonstrate its utility as a research platform, we present three applications of Meent: 1) generating a dataset for training neural operator, 2) serving as an environment for the reinforcement learning of nanophotonic device optimization, and 3) providing a solution for inverse problems with gradient-based optimizers. These applications highlight Meent's potential to advance both EM simulation and ML methodologies. The code is available at https://github.com/kc-ml2/meent with the MIT license to promote the cross-polinations of ideas among academic researchers and industry practitioners.<br />Comment: under review

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.12904
Document Type :
Working Paper