Deep Grid Scheduler for 5G NB-IoT Uplink Transmission

Since the birth of narrowband Internet of Things (NB-IoT), the Internet of Things (IoT) industry has made a considerable progress in the application for smart cities, smart manufacturing, and healthcare. Therefore, the number of UEs is increasing exponentially, which brings considerable pressure to...

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Main Authors: Han Zhong, Ruize Sun, Fengcheng Mei, Yong Chen, Fan Jin, Lei Ning
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Security and Communication Networks
Online Access:http://dx.doi.org/10.1155/2021/5263726
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spelling doaj-d9003b46327f42f49a3e5f532a35809b2021-08-23T01:33:26ZengHindawi-WileySecurity and Communication Networks1939-01222021-01-01202110.1155/2021/5263726Deep Grid Scheduler for 5G NB-IoT Uplink TransmissionHan Zhong0Ruize Sun1Fengcheng Mei2Yong Chen3Fan Jin4Lei Ning5College of Big Data and InternetCollege of Big Data and InternetCollege of Big Data and InternetCollege of Big Data and InternetShenzhen Winoble Technology Co., LtdCollege of Big Data and InternetSince the birth of narrowband Internet of Things (NB-IoT), the Internet of Things (IoT) industry has made a considerable progress in the application for smart cities, smart manufacturing, and healthcare. Therefore, the number of UEs is increasing exponentially, which brings considerable pressure to the efficient resource allocation for the bandwidth and power constrained NB-IoT networks. In view of the conventional algorithms that cannot dynamically adjust resource allocation, resulting in a low resource utilization and prone to resource fragmentation, this paper proposes a double deep Q-network (DDQN)-based NB-IoT dynamic resource allocation algorithm. It first builds an NB-IoT environment model based on the real environment. Then, the DDQN algorithm interacts with the NB-IoT environment model to learn and optimize resource allocation strategies until it converges to the optimum. Finally, the simulation results show that the DDQN-based NB-IoT dynamic resource allocation algorithm is better than the traditional algorithm in the resource utilization, average transmission rate, and UE average queuing time.http://dx.doi.org/10.1155/2021/5263726
collection DOAJ
language English
format Article
sources DOAJ
author Han Zhong
Ruize Sun
Fengcheng Mei
Yong Chen
Fan Jin
Lei Ning
spellingShingle Han Zhong
Ruize Sun
Fengcheng Mei
Yong Chen
Fan Jin
Lei Ning
Deep Grid Scheduler for 5G NB-IoT Uplink Transmission
Security and Communication Networks
author_facet Han Zhong
Ruize Sun
Fengcheng Mei
Yong Chen
Fan Jin
Lei Ning
author_sort Han Zhong
title Deep Grid Scheduler for 5G NB-IoT Uplink Transmission
title_short Deep Grid Scheduler for 5G NB-IoT Uplink Transmission
title_full Deep Grid Scheduler for 5G NB-IoT Uplink Transmission
title_fullStr Deep Grid Scheduler for 5G NB-IoT Uplink Transmission
title_full_unstemmed Deep Grid Scheduler for 5G NB-IoT Uplink Transmission
title_sort deep grid scheduler for 5g nb-iot uplink transmission
publisher Hindawi-Wiley
series Security and Communication Networks
issn 1939-0122
publishDate 2021-01-01
description Since the birth of narrowband Internet of Things (NB-IoT), the Internet of Things (IoT) industry has made a considerable progress in the application for smart cities, smart manufacturing, and healthcare. Therefore, the number of UEs is increasing exponentially, which brings considerable pressure to the efficient resource allocation for the bandwidth and power constrained NB-IoT networks. In view of the conventional algorithms that cannot dynamically adjust resource allocation, resulting in a low resource utilization and prone to resource fragmentation, this paper proposes a double deep Q-network (DDQN)-based NB-IoT dynamic resource allocation algorithm. It first builds an NB-IoT environment model based on the real environment. Then, the DDQN algorithm interacts with the NB-IoT environment model to learn and optimize resource allocation strategies until it converges to the optimum. Finally, the simulation results show that the DDQN-based NB-IoT dynamic resource allocation algorithm is better than the traditional algorithm in the resource utilization, average transmission rate, and UE average queuing time.
url http://dx.doi.org/10.1155/2021/5263726
work_keys_str_mv AT hanzhong deepgridschedulerfor5gnbiotuplinktransmission
AT ruizesun deepgridschedulerfor5gnbiotuplinktransmission
AT fengchengmei deepgridschedulerfor5gnbiotuplinktransmission
AT yongchen deepgridschedulerfor5gnbiotuplinktransmission
AT fanjin deepgridschedulerfor5gnbiotuplinktransmission
AT leining deepgridschedulerfor5gnbiotuplinktransmission
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