Neural Network Design of Multilayer Metamaterial for Temporal Differentiation

Controlling wave−matter interactions with metamaterials (MTMs) for the calculation of mathematical operations has become an important paradigm for analogue computing given their ability to dramatically increase computational processing speeds. Here, motivated by the importance of performing mathemat...

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Veröffentlicht in:Advanced optical materials 2023-03, Vol.11 (5), p.n/a
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description Controlling wave−matter interactions with metamaterials (MTMs) for the calculation of mathematical operations has become an important paradigm for analogue computing given their ability to dramatically increase computational processing speeds. Here, motivated by the importance of performing mathematical operations on temporal signals, multilayer MTMs with the ability to calculate the derivative of temporally modulated signals are proposed, designed, and studied. To do this, a neural network (NN) based algorithm is used to design the multilayer structures (alternating layers of indium tin oxide (ITO) and titanium dioxide (TiO2)) that can calculate the first temporal derivative of the envelope of an impinging electromagnetic signal modulated at telecom wavelengths (1550 nm). Different designs are presented using multiple incident temporal signals including a modulated Gaussian as well as modulated arbitrary functions, demonstrating an excellent agreement between the predicted results (NN results) and the theoretical (ideal) values. It is shown how the proposed NN‐based algorithm can complete its search of the design space for the layer thicknesses of the multilayer MTM after just a few seconds, with a low mean square error in the order of (or below) 10−4 when comparing the predicted results with the theoretical spectrum of the ideal temporal derivative. The neural network design of multilayer metamaterials for temporal differentiation is presented. Differentiation operations are performed on multiple incident signals demonstrating that the transfer function of the obtained devices correctly emulates a temporal differential operator. Such designs could find important applications in integrated photonics for high‐speed and energy‐efficient computational processes.
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subjects Algorithms
analog computing
Derivatives
Design
Indium tin oxides
Materials science
Mathematical analysis
Metamaterials
Multilayers
Network design
Neural networks
Optics
temporal differentiation
Thickness
Titanium dioxide
title Neural Network Design of Multilayer Metamaterial for Temporal Differentiation
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