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arxiv: 2102.04454 · v1 · pith:27IPH2KZnew · submitted 2021-02-07 · ⚛️ physics.optics · cs.LG

Manifold Learning for Knowledge Discovery and Intelligent Inverse Design of Photonic Nanostructures: Breaking the Geometric Complexity

classification ⚛️ physics.optics cs.LG
keywords designinversenanostructuresphotonicapproachcomplexitydiscoveryintelligent
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Here, we present a new approach based on manifold learning for knowledge discovery and inverse design with minimal complexity in photonic nanostructures. Our approach builds on studying sub-manifolds of responses of a class of nanostructures with different design complexities in the latent space to obtain valuable insight about the physics of device operation to guide a more intelligent design. In contrast to the current methods for inverse design of photonic nanostructures, which are limited to pre-selected and usually over-complex structures, we show that our method allows evolution from an initial design towards the simplest structure while solving the inverse problem.

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