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Bayesian Optimization With Improved Scalability and Derivative Information for Efficient Design of Nanophotonic Structures | IEEE Journals & Magazine | IEEE Xplore

Bayesian Optimization With Improved Scalability and Derivative Information for Efficient Design of Nanophotonic Structures


Abstract:

We propose the combination of forward shape derivatives and the use of an iterative inversion scheme for Bayesian optimization to find optimal designs of nanophotonic dev...Show More

Abstract:

We propose the combination of forward shape derivatives and the use of an iterative inversion scheme for Bayesian optimization to find optimal designs of nanophotonic devices. This approach widens the range of applicability of Bayesian optmization to situations where a larger number of iterations is required and where derivative information is available. This was previously impractical because the computational efforts required to identify the next evaluation point in the parameter space became much larger than the actual evaluation of the objective function. We demonstrate an implementation of the method by optimizing a waveguide edge coupler.
Published in: Journal of Lightwave Technology ( Volume: 39, Issue: 1, 01 January 2021)
Page(s): 167 - 177
Date of Publication: 11 September 2020

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