Max-Min Fair Energy Beamforming for Wireless Powered Communication With Non-Linear Energy Harvesting

This paper considers a max-min rate optimization problem with practical non-linear energy harvesting (NLEH) in which a multi-antenna hybrid access point transfers power to the devices via energy beamforming (BF), followed by the devices sending their data simultaneously by consuming the harvested en...

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Main Authors: Luiggi Cantos, Yun Hee Kim
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8721050/
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spelling doaj-175aa06a90694aada23c4487b455822d2021-03-29T23:47:48ZengIEEEIEEE Access2169-35362019-01-017695166952310.1109/ACCESS.2019.29186498721050Max-Min Fair Energy Beamforming for Wireless Powered Communication With Non-Linear Energy HarvestingLuiggi Cantos0https://orcid.org/0000-0001-5954-1061Yun Hee Kim1https://orcid.org/0000-0003-1013-7046Department of Electronic Engineering, Kyung Hee University, Seoul, South KoreaDepartment of Electronic Engineering, Kyung Hee University, Seoul, South KoreaThis paper considers a max-min rate optimization problem with practical non-linear energy harvesting (NLEH) in which a multi-antenna hybrid access point transfers power to the devices via energy beamforming (BF), followed by the devices sending their data simultaneously by consuming the harvested energy. Using a sigmoid NLEH model with sensitivity, we tackle the joint energy BF and time allocation problem in two steps by solving the NLEH-aware energy BF problem for given time allocation and then solving the convex time allocation problem formulated with the aforementioned energy BF solution. We propose several iterative methods to solve the non-convex energy BF problem with and without approximation of the NLEH function. In addition, we present an asymptotic energy BF problem for a large-antenna system that can be solved at low complexity. The results show that the algorithms developed with a simple NLEH approximation provide almost the same performance with the algorithms developed with the exact NLEH function. Furthermore, the sensitivity region of the NLEH should be considered more carefully than the saturation region in the max-min rate optimization problem.https://ieeexplore.ieee.org/document/8721050/Energy beamformingInternet-of-Thingslarge antenna systemsnon-linear energy harvestingwireless powered communication
collection DOAJ
language English
format Article
sources DOAJ
author Luiggi Cantos
Yun Hee Kim
spellingShingle Luiggi Cantos
Yun Hee Kim
Max-Min Fair Energy Beamforming for Wireless Powered Communication With Non-Linear Energy Harvesting
IEEE Access
Energy beamforming
Internet-of-Things
large antenna systems
non-linear energy harvesting
wireless powered communication
author_facet Luiggi Cantos
Yun Hee Kim
author_sort Luiggi Cantos
title Max-Min Fair Energy Beamforming for Wireless Powered Communication With Non-Linear Energy Harvesting
title_short Max-Min Fair Energy Beamforming for Wireless Powered Communication With Non-Linear Energy Harvesting
title_full Max-Min Fair Energy Beamforming for Wireless Powered Communication With Non-Linear Energy Harvesting
title_fullStr Max-Min Fair Energy Beamforming for Wireless Powered Communication With Non-Linear Energy Harvesting
title_full_unstemmed Max-Min Fair Energy Beamforming for Wireless Powered Communication With Non-Linear Energy Harvesting
title_sort max-min fair energy beamforming for wireless powered communication with non-linear energy harvesting
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description This paper considers a max-min rate optimization problem with practical non-linear energy harvesting (NLEH) in which a multi-antenna hybrid access point transfers power to the devices via energy beamforming (BF), followed by the devices sending their data simultaneously by consuming the harvested energy. Using a sigmoid NLEH model with sensitivity, we tackle the joint energy BF and time allocation problem in two steps by solving the NLEH-aware energy BF problem for given time allocation and then solving the convex time allocation problem formulated with the aforementioned energy BF solution. We propose several iterative methods to solve the non-convex energy BF problem with and without approximation of the NLEH function. In addition, we present an asymptotic energy BF problem for a large-antenna system that can be solved at low complexity. The results show that the algorithms developed with a simple NLEH approximation provide almost the same performance with the algorithms developed with the exact NLEH function. Furthermore, the sensitivity region of the NLEH should be considered more carefully than the saturation region in the max-min rate optimization problem.
topic Energy beamforming
Internet-of-Things
large antenna systems
non-linear energy harvesting
wireless powered communication
url https://ieeexplore.ieee.org/document/8721050/
work_keys_str_mv AT luiggicantos maxminfairenergybeamformingforwirelesspoweredcommunicationwithnonlinearenergyharvesting
AT yunheekim maxminfairenergybeamformingforwirelesspoweredcommunicationwithnonlinearenergyharvesting
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