Gradient-Based Optimization of Core-Shell Particles with Discrete Materials for Directional Scattering
Version 2 2025-06-10, 18:39Version 2 2025-06-10, 18:39
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Posted on 2025-06-10 - 18:39
Designing nanophotonic structures traditionally grapples with the complexities of
discrete parameters, such as real materials, often resorting to costly global optimization methods. This paper introduces an approach that leverages generative deep learning to map discrete
parameter sets into a continuous latent space, enabling direct gradient-based optimization. For
scenarios with non-differentiable physics evaluation functions, a neural network is employed as a
differentiable surrogate model. The efficacy of this methodology is demonstrated by optimizing
the directional scattering properties of core-shell nanoparticles composed of a selection of realistic materials. We derive suggestions for core-shell geometries with strong forward scattering
and minimized backscattering. Our findings reveal significant improvements in computational
efficiency and performance when compared to global optimization techniques. Beyond nanophotonics design problems, this framework holds promise for broad applications across all types of
inverse problems constrained by discrete variables.
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Soun, Dalin; Azéma, Antoine; Roach, Lucien; Drisko, Glenna; Wiecha, Peter (2025). Gradient-Based Optimization of Core-Shell Particles with Discrete Materials for Directional Scattering. Optica Publishing Group. Collection. https://doi.org/10.6084/m9.figshare.c.7844024.v2