Data driven design of optical resonators
Joeri Lenaerts, Hannah Pinson, Vincent Ginis

TL;DR
This paper discusses using deep learning for inverse design of optical resonators, enabling faster and more efficient creation of devices with desired optical properties compared to traditional brute force methods.
Contribution
It demonstrates the application of neural networks to inverse design of Fabry-Pérot resonators, highlighting the advantages of gradient-based optimization in optical device design.
Findings
Neural networks can accurately predict optical responses.
Gradient-based inverse design accelerates the optimization process.
Analytical description of Fabry-Pérot resonator facilitates the study.
Abstract
Optical devices lie at the heart of most of the technology we see around us. When one actually wants to make such an optical device, one can predict its optical behavior using computational simulations of Maxwell's equations. If one then asks what the optimal design would be in order to obtain a certain optical behavior, the only way to go further would be to try out all of the possible designs and compute the electromagnetic spectrum they produce. When there are many design parameters, this brute force approach quickly becomes too computationally expensive. We therefore need other methods to create optimal optical devices. An alternative to the brute force approach is inverse design. In this paradigm, one starts from the desired optical response of a material and then determines the design parameters that are needed to obtain this optical response. There are many algorithms known in…
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Taxonomy
TopicsPhotonic and Optical Devices · Semiconductor Lasers and Optical Devices · Advanced Fiber Optic Sensors
