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Topological encoding method for data-driven photonics inverse design

Zhaocheng Liu, Zhaoming Zhu, Wenshan Cai

2020Optics Express51 citationsDOIOpen Access PDF

Abstract

Data-driven approaches have been proposed as effective strategies for the inverse design and optimization of photonic structures in recent years. In order to assist data-driven methods for the design of topology of photonic devices, we propose a topological encoding method that transforms photonic structures represented by binary images to a continuous sparse representation. This sparse representation can be utilized for dimensionality reduction and dataset generation, enabling effective analysis and optimization of photonic topologies with data-driven approaches. As a proof of principle, we leverage our encoding method for the design of two dimensional non-paraxial diffractive optical elements with various diffraction intensity distributions. We proved that our encoding method is able to assist machine-learning-based inverse design approaches for accurate and global optimization.

Topics & Concepts

PhotonicsComputer scienceEncoding (memory)Photonic crystalCurse of dimensionalityNetwork topologyInverseDimensionality reductionBinary numberBinary dataInverse problemTopology (electrical circuits)AlgorithmOpticsMathematicsArtificial intelligencePhysicsOperating systemCombinatoricsArithmeticGeometryMathematical analysisPhotonic Crystals and ApplicationsPhotonic and Optical DevicesMetamaterials and Metasurfaces Applications
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