Machine learning for the free-form inverse design in nanophotonics
Doktorsavhandling, 2023
In this thesis, we present our approach utilizing deep neural networks for both the prediction of optical properties of nanostructures and their inverse design. First, we demonstrate the feasibility of employing neural networks to accurately predict the optical properties of nanostructured materials, with a particular emphasis on metasurfaces. Given the increasing need for miniaturization together with smaller optical losses, the emergence of metasurfaces---single layers of phase-modifying nanostructures---has heralded a significant advancement, enabling unprecedented manipulation of light beyond the capabilities of traditional materials.
Subsequently, we present methodologies to achieve inverse design of metasurfaces, guided by specific desired optical attributes and fabrication constraints. This is achieved through neural network design and the generation of training data, labeled with corresponding optical characteristics and manufacturability constraints. We implemented a conditional generative adversarial network comprised of five synergistic neural networks. This approach effectively mitigates challenges related to design non-uniqueness, mode collapse, and experimental feasibility.
Additionally, our research explores various techniques to optimize and stabilize neural network training and introduces novel network graph compositions, contributing to a versatile generator model capable of conceiving multiple metasurface unit cells with predefined, interconnected properties. This thesis thus provides insights and methodologies for inverse design, contributing to the continued evolution of nanophotonic design and applications.
Metasurface
CGAN
free-form inverse design
ZWFS
machine learning
Författare
Timo Gahlmann
Chalmers, Fysik, Kondenserad materie- och materialteori
Deep neural networks for the prediction of the optical properties and the free-form inverse design of metamaterials
Physical Review B,;Vol. 106(2022)
Artikel i vetenskaplig tidskrift
Machine Learning Techniques and Practical Advice for the Free-Form Inverse Design of Nanophotonic Devices
International Conference on Metamaterials, Photonic Crystals and Plasmonics,;(2023)p. 1520-1521
Paper i proceeding
T. Gahlmann, T. Wenger, and P. Tassin; Machine-learning-based inverse design of wideband metasurfaces with interdependent unit cells
In the space of the incredibly small, where the dance of light and matter unfolds, nanophotonics has emerged as a transformative field of study. This thesis journeys through the intricate process of shaping light at scales smaller than its own wavelength, a task generally too complex for human intuition. Here, we describe an approach that utilizes the capabilities of deep neural networks to predict and craft the optical properties of nanostructures, particularly metasurfaces.
Metasurfaces are thin films composed of nanostructures that manipulate light in ways traditional materials could not achieve. This work demonstrates that neural networks can accurately predict how these surfaces interact with light, paving the way for their custom design to meet specific needs and constraints.
Additionally, we have also refined techniques to optimize and stabilize the training of these neural networks, introducing innovative network structures that expand the potential for creating a multitude of metasurface designs.
This thesis unfolds a narrative from theoretical foundations to practical applications, demonstrating the profound capabilities of neural networks in bringing about a paradigm shift in how we approach light manipulation at the nanoscale.
Styrkeområden
Nanovetenskap och nanoteknik
Infrastruktur
C3SE (Chalmers Centre for Computational Science and Engineering)
Ämneskategorier (SSIF 2011)
Nanoteknik
Den kondenserade materiens fysik
ISBN
978-91-7905-934-7
Doktorsavhandlingar vid Chalmers tekniska högskola. Ny serie: 5400
Utgivare
Chalmers
PJ-salen
Opponent: Willie John Padilla, Professor in the Department of Electrical and Computer Engineering, Duke University, USA