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Data enhanced iterative few-sample learning algorithm-based inverse design of 2D programmable chiral metamaterials
2022
Nanophotonics
A data enhanced iterative few-sample (DEIFS) algorithm is proposed to achieve the accurate and efficient inverse design of multi-shaped 2D chiral metamaterials. Specifically, three categories of 2D diffractive chiral structures with different geometrical parameters, including widths, separation spaces, bridge lengths, and gold lengths are studied utilising both the conventional rigorous coupled wave analysis (RCWA) approach and DEIFS algorithm, with the former approach assisting the training
doi:10.1515/nanoph-2022-0310
fatcat:ytx77tpmojhgzel2qxo6iknrya