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Physics-Informed Machine Learning for Optical Modes in Composites

Published 13 Dec 2021 in physics.comp-ph, cond-mat.mtrl-sci, physics.app-ph, and physics.optics | (2112.07625v2)

Abstract: We demonstrate that embedding physics-driven constraints into machine learning process can dramatically improve accuracy and generalizability of the resulting model. Physics-informed learning is illustrated on the example of analysis of optical modes propagating through a spatially periodic composite. The approach presented can be readily utilized in other situations mapped onto an eigenvalue problem, a known bottleneck of computational electrodynamics. Physics-informed learning can be used to improve machine-learning-driven design, optimization, and characterization, in particular in situations where exact solutions are scarce or are slow to come up with.

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