Self-adaptive deep reinforcement learning for THz beamforming with silicon metasurfaces in 6G communications

Exponential growth in data rate demands has driven efforts to develop novel beamforming techniques for realizing massive multiple-input and multiple-output (MIMO) systems in sixth-generation (6G) terabits per second wireless communications. Existing beamforming techniques rely on conventional optimi...

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Main Authors: Tan, Yi Ji, Zhu, Changyan, Tan, Thomas CaiWei, Kumar, Abhishek, Wong, Liang Jie, Chong, Yidong, Singh, Ranjan
Other Authors: School of Physical and Mathematical Sciences
Format: Article
Language:English
Published: 2022
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Online Access:https://hdl.handle.net/10356/161695
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1616952023-02-28T20:08:49Z Self-adaptive deep reinforcement learning for THz beamforming with silicon metasurfaces in 6G communications Tan, Yi Ji Zhu, Changyan Tan, Thomas CaiWei Kumar, Abhishek Wong, Liang Jie Chong, Yidong Singh, Ranjan School of Physical and Mathematical Sciences School of Electrical and Electronic Engineering Agency for Science, Technology and Research Centre for Disruptive Photonic Technologies (CDPT) Science::Physics Deep Reinforcement Learning Terahertz Beamforming Terahertz Time-Domain Spectroscopy Exponential growth in data rate demands has driven efforts to develop novel beamforming techniques for realizing massive multiple-input and multiple-output (MIMO) systems in sixth-generation (6G) terabits per second wireless communications. Existing beamforming techniques rely on conventional optimization algorithms that are too computationally expensive for real-time applications and require complex digital processing yet to be achieved for phased array antennas at terahertz frequencies. Here, we develop an intelligent and self-adaptive beamforming scheme enabled by deep reinforcement learning, which can predict the spatial phase profiles required to produce arbitrary desired radiation patterns in real-time. Our deep learning model adaptively trains an artificial neural network in real-time by comparing the input and predicted intensity patterns via automatic differentiation of the phase-to-intensity function. As a proof of concept, we experimentally demonstrate two-dimensional beamforming by spatially modulating broadband terahertz waves using silicon metasurfaces designed with the aid of the deep learning model. Our work offers an efficient and robust deep learning model for real-time self-adaptive beamforming to enable multi-user massive MIMO systems for 6G terahertz wireless communications, as well as intelligent metasurfaces for other terahertz applications in imaging and sensing. National Research Foundation (NRF) Published version YJ Tan acknowledges the A*STAR Graduate Scholarship funding from the Agency for Science, Technology and Research, Singapore. The authors also acknowledge the funding support from the National Research Foundation, Singapore (Grant No. NRF-CRP23-2019-0005). 2022-09-16T08:03:40Z 2022-09-16T08:03:40Z 2022 Journal Article Tan, Y. J., Zhu, C., Tan, T. C., Kumar, A., Wong, L. J., Chong, Y. & Singh, R. (2022). Self-adaptive deep reinforcement learning for THz beamforming with silicon metasurfaces in 6G communications. Optics Express, 30(15), 27763-27779. https://dx.doi.org/10.1364/OE.458823 1094-4087 https://hdl.handle.net/10356/161695 10.1364/OE.458823 2-s2.0-85134357684 15 30 27763 27779 en NRF-CRP23-2019-0005 Optics Express 10.21979/N9/WPX1SE © 2022 Optica Publishing Group under the terms of the OSA Open Access Publishing Agreement. Users may use, reuse, and build upon the article, or use the article for text or data mining, so long as such uses are for noncommercial purposes and appropriate attribution is maintained. All other rights are reserved. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Science::Physics
Deep Reinforcement Learning
Terahertz Beamforming
Terahertz Time-Domain Spectroscopy
spellingShingle Science::Physics
Deep Reinforcement Learning
Terahertz Beamforming
Terahertz Time-Domain Spectroscopy
Tan, Yi Ji
Zhu, Changyan
Tan, Thomas CaiWei
Kumar, Abhishek
Wong, Liang Jie
Chong, Yidong
Singh, Ranjan
Self-adaptive deep reinforcement learning for THz beamforming with silicon metasurfaces in 6G communications
description Exponential growth in data rate demands has driven efforts to develop novel beamforming techniques for realizing massive multiple-input and multiple-output (MIMO) systems in sixth-generation (6G) terabits per second wireless communications. Existing beamforming techniques rely on conventional optimization algorithms that are too computationally expensive for real-time applications and require complex digital processing yet to be achieved for phased array antennas at terahertz frequencies. Here, we develop an intelligent and self-adaptive beamforming scheme enabled by deep reinforcement learning, which can predict the spatial phase profiles required to produce arbitrary desired radiation patterns in real-time. Our deep learning model adaptively trains an artificial neural network in real-time by comparing the input and predicted intensity patterns via automatic differentiation of the phase-to-intensity function. As a proof of concept, we experimentally demonstrate two-dimensional beamforming by spatially modulating broadband terahertz waves using silicon metasurfaces designed with the aid of the deep learning model. Our work offers an efficient and robust deep learning model for real-time self-adaptive beamforming to enable multi-user massive MIMO systems for 6G terahertz wireless communications, as well as intelligent metasurfaces for other terahertz applications in imaging and sensing.
author2 School of Physical and Mathematical Sciences
author_facet School of Physical and Mathematical Sciences
Tan, Yi Ji
Zhu, Changyan
Tan, Thomas CaiWei
Kumar, Abhishek
Wong, Liang Jie
Chong, Yidong
Singh, Ranjan
format Article
author Tan, Yi Ji
Zhu, Changyan
Tan, Thomas CaiWei
Kumar, Abhishek
Wong, Liang Jie
Chong, Yidong
Singh, Ranjan
author_sort Tan, Yi Ji
title Self-adaptive deep reinforcement learning for THz beamforming with silicon metasurfaces in 6G communications
title_short Self-adaptive deep reinforcement learning for THz beamforming with silicon metasurfaces in 6G communications
title_full Self-adaptive deep reinforcement learning for THz beamforming with silicon metasurfaces in 6G communications
title_fullStr Self-adaptive deep reinforcement learning for THz beamforming with silicon metasurfaces in 6G communications
title_full_unstemmed Self-adaptive deep reinforcement learning for THz beamforming with silicon metasurfaces in 6G communications
title_sort self-adaptive deep reinforcement learning for thz beamforming with silicon metasurfaces in 6g communications
publishDate 2022
url https://hdl.handle.net/10356/161695
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