Design of Tunable Metasurface Using Deep Neural Networks for Field Localized Wireless Power Transfer

Wireless power transfer (WPT), a convenient method for powering multiple devices, enables a truly wireless connection, eliminating the need for periodic charging and replacing a battery. To further enhance WPT, the unique characteristics of metamaterial, such as its field focusing and evanescent wav...

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Main Authors: Huu Nguyen Bui, Jie-Seok Kim, Jong-Wook Lee
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9239375/
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spelling doaj-12084bfa567d4b07b1ed65fe5a1497472021-03-30T03:41:22ZengIEEEIEEE Access2169-35362020-01-01819486819487810.1109/ACCESS.2020.30335279239375Design of Tunable Metasurface Using Deep Neural Networks for Field Localized Wireless Power TransferHuu Nguyen Bui0Jie-Seok Kim1Jong-Wook Lee2https://orcid.org/0000-0002-9160-2183Information and Communication System-on-Chip (SoC) Research Center, School of Electronics and Information, Kyung Hee University, Yongin, South KoreaInformation and Communication System-on-Chip (SoC) Research Center, School of Electronics and Information, Kyung Hee University, Yongin, South KoreaInformation and Communication System-on-Chip (SoC) Research Center, School of Electronics and Information, Kyung Hee University, Yongin, South KoreaWireless power transfer (WPT), a convenient method for powering multiple devices, enables a truly wireless connection, eliminating the need for periodic charging and replacing a battery. To further enhance WPT, the unique characteristics of metamaterial, such as its field focusing and evanescent wave amplification, have been successfully utilized. With subwavelength characteristics, computational challenges arise when the number of metamaterial unit cells is increased. In this work, we investigate a deep neural network (DNN)-based design of the tunable metamaterial for WPT. Using structures specifically designed for different tasks, the DNN predicts the frequency spectra and synthesizes the unit cell's design parameters. When trained using a set of ~23000 randomly selected designs, we achieve an accumulated mean square error (MSE) of less than 1.5&#x00D7; 10<sup>-3</sup> for 97.3% of the 1929 test set. For synthesizing the unit cell's design parameters, the MSE is less than 2.5 &#x00D7; 10<sup>-3</sup> for 95.7% of the test set. The data-driven method is further extended to a generative adversarial network (GAN) to create the WPT paths and predict the frequency spectra of them. To achieve high efficiency, we propose a cost function focusing on the spectra's transmission peak. After training using 80 000 measured data, the GAN can create WPT paths that efficiently connect the transmitter and the receiver on the metasurface. The results show that the DNN provides an alternative and efficient design method for the metamaterial, replacing traditional EM-simulation-based approaches.https://ieeexplore.ieee.org/document/9239375/Wireless power transfertunable metamaterialmetasurfacefield localizationdeep neural networkgenerative adversarial network
collection DOAJ
language English
format Article
sources DOAJ
author Huu Nguyen Bui
Jie-Seok Kim
Jong-Wook Lee
spellingShingle Huu Nguyen Bui
Jie-Seok Kim
Jong-Wook Lee
Design of Tunable Metasurface Using Deep Neural Networks for Field Localized Wireless Power Transfer
IEEE Access
Wireless power transfer
tunable metamaterial
metasurface
field localization
deep neural network
generative adversarial network
author_facet Huu Nguyen Bui
Jie-Seok Kim
Jong-Wook Lee
author_sort Huu Nguyen Bui
title Design of Tunable Metasurface Using Deep Neural Networks for Field Localized Wireless Power Transfer
title_short Design of Tunable Metasurface Using Deep Neural Networks for Field Localized Wireless Power Transfer
title_full Design of Tunable Metasurface Using Deep Neural Networks for Field Localized Wireless Power Transfer
title_fullStr Design of Tunable Metasurface Using Deep Neural Networks for Field Localized Wireless Power Transfer
title_full_unstemmed Design of Tunable Metasurface Using Deep Neural Networks for Field Localized Wireless Power Transfer
title_sort design of tunable metasurface using deep neural networks for field localized wireless power transfer
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Wireless power transfer (WPT), a convenient method for powering multiple devices, enables a truly wireless connection, eliminating the need for periodic charging and replacing a battery. To further enhance WPT, the unique characteristics of metamaterial, such as its field focusing and evanescent wave amplification, have been successfully utilized. With subwavelength characteristics, computational challenges arise when the number of metamaterial unit cells is increased. In this work, we investigate a deep neural network (DNN)-based design of the tunable metamaterial for WPT. Using structures specifically designed for different tasks, the DNN predicts the frequency spectra and synthesizes the unit cell's design parameters. When trained using a set of ~23000 randomly selected designs, we achieve an accumulated mean square error (MSE) of less than 1.5&#x00D7; 10<sup>-3</sup> for 97.3% of the 1929 test set. For synthesizing the unit cell's design parameters, the MSE is less than 2.5 &#x00D7; 10<sup>-3</sup> for 95.7% of the test set. The data-driven method is further extended to a generative adversarial network (GAN) to create the WPT paths and predict the frequency spectra of them. To achieve high efficiency, we propose a cost function focusing on the spectra's transmission peak. After training using 80 000 measured data, the GAN can create WPT paths that efficiently connect the transmitter and the receiver on the metasurface. The results show that the DNN provides an alternative and efficient design method for the metamaterial, replacing traditional EM-simulation-based approaches.
topic Wireless power transfer
tunable metamaterial
metasurface
field localization
deep neural network
generative adversarial network
url https://ieeexplore.ieee.org/document/9239375/
work_keys_str_mv AT huunguyenbui designoftunablemetasurfaceusingdeepneuralnetworksforfieldlocalizedwirelesspowertransfer
AT jieseokkim designoftunablemetasurfaceusingdeepneuralnetworksforfieldlocalizedwirelesspowertransfer
AT jongwooklee designoftunablemetasurfaceusingdeepneuralnetworksforfieldlocalizedwirelesspowertransfer
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