Projects per year
Abstract
The simulation of nanophotonic structures relies on electromagnetic solvers, which play a crucial role in understanding their behavior. However, these solvers often come with a significant computational cost, making their application in design tasks, such as optimization, impractical. To address this challenge, machine learning techniques have been explored for accurate and efficient modeling and design of photonic devices. Deep neural networks, in particular, have gained considerable attention in this field. They can be used to create both forward and inverse models. An inverse modeling approach avoids the need for coupling a forward model with an optimizer and directly performs the prediction of the optimal design parameters values. In this paper, we propose an inverse modeling method for nanophotonic structures, based on a mixture density network model enhanced by transfer learning. Mixture density networks can predict multiple possible solutions at a time including their respective importance as Gaussian distributions. However, multiple challenges exist for mixture density network models. An important challenge is that an upper bound on the number of possible simultaneous solutions needs to be specified in advance. Also, another challenge is that the model parameters must be jointly optimized, which can result computationally expensive. Moreover, optimizing all parameters simultaneously can result numerically unstable and lead to degenerate predictions. The proposed approach copes with these limitations using transfer learning-based techniques, while obtaining accurate results in the prediction of the design solutions given an optical response as an input. A dimensionality reduction step is also explored. Numerical results validate the proposed method.
Original language | English |
---|---|
Pages (from-to) | 55218-55224 |
Number of pages | 7 |
Journal | IEEE Access |
Volume | 12 |
DOIs | |
Publication status | Published - 2024 |
Bibliographical note
Publisher Copyright:© 2013 IEEE.
Keywords
- DESIGN
Fingerprint
Dive into the research topics of 'Transfer Learning-Assisted Inverse Modeling in Nanophotonics Based on Mixture Density Networks'. Together they form a unique fingerprint.-
OZRMETH8: “PHUTURE 2030”: B-PHOT’s roadmap for cutting-edge photonics research and disruptive technology
1/01/23 → 31/12/29
Project: Fundamental
-
HERC47: Pilot line for advanced freeform glass optics: prototyping, replication and metrology
Thienpont, H., Ottevaere, H., Van Erps, J., Duerr, F., Vervaeke, M., Torfs, D. & De Meyer, L.
1/05/18 → 30/04/22
Project: Fundamental