无线通信网络的频谱效率和能源效率

Y. Qian
{"title":"无线通信网络的频谱效率和能源效率","authors":"Y. Qian","doi":"10.1109/mwc.2020.9241874","DOIUrl":null,"url":null,"abstract":"In the October 2020 issue of IEEE Wireless Communications Magazine, we are pleased to present a special issue on “Spectrum and Energy Efficient Wireless Communications” with a collection of 12 articles. In this issue, we are also very glad to present 12 articles accepted from the open call. Driven by new-generation mobile devices and bandwidth consuming applications such as video streaming, wireless traffic volume is expected to continue expanding tremendously in the next few years. Sustaining this growing trend will in turn require higher spectrum capacity from the network side. Research has shown that capacity demand increases much faster than the current spectrum efficiency improvement, in particular at hot spot areas. From recent data, global mobile data traffic increased nearly 11-fold in the last few years. In contrast, the peak data rate from 3G wireless technology to 4G wireless technology only increased 55 percent in the last decade. Clearly there is a huge gap between the capacity growth of new wireless access technologies and the fast growth of wireless traffic volume for the next-generation wireless networks. In the meantime, energy efficiency, commonly defined as information bits per unit of energy, has become another essential requirement for the design of future wireless communication networks besides spectrum efficiency. Energy efficient communications have attracted great attention due to the ever-increasing demand to preserve energy resources and to protect the environment. Furthermore, mobile devices, such as smart phones and tablets, are widely used to conduct new applications such as video content distribution, location-aware advertisement, video chatting, video streaming, music and movie downloading, etc. In the year 2012, mobile video traffic exceeded 50 percent of the total wireless traffic volume for the first time. Mobile video has increased 14-fold since then, accounting for 69 percent of the total mobile data traffic by the end of last year. How to support energy and bandwidth consuming video applications with high QoE is becoming another challenging issue in future wireless networks. Clearly, there is an urgency for a new disruptive paradigm to bridge the gap between the increasing capacity, energy and QoE demands and the deficiency of radio spectrum resources. As wireless channel efficiency is approaching its fundamental limit, improvements in future wireless system capacity can be alternatively realized by networking technologies such as node density increase through underlay and overlay deployments, or by going to a higher spectrum such as millimeter wave to seek more spectrum bandwidth. In addition to delivering the required network spectrum efficiency, energy efficiency and QoE, the anticipated tremendous proliferation of machine-type devices and consumer-wearable devices also makes the underlay wireless network desirable. These small devices usually have limited onboard processing power and battery size. If they need powerful computing capability to process extensive content information, they will have to heavily rely on their surrounding local networks and computing platforms to facilitate these computing-intensive and thus power consuming applications. Using high performance and very low latency communication links to offload mobile device computing load into nearby powerful computing clouds becomes an essential direction to pursue. This paradigm shift in the next decade also calls for the cluster-based underlay networking technologies, in which a cluster head of a number of underlay devices can be selected as the representative of the entire cluster for both communication and control purposes. Spectrum and energy efficient wireless communications is one of the most important topics today in the next generation wireless networking area, and attracting more and more attention from industry, research, and academia. This special issue focuses on the challenges and novel solutions for spectrum and energy efficient wireless communication networks. Thanks to the guest editors, Q. Liang, T. S. Durrani, J. Koh, Q. Wu, and X. Wang, who did an excellent job in editing this special issue for our readers. Please stay tuned for new developments in the research area of spectrum and energy efficient wireless communications, and read the editorial for more details about the papers in this special issue. In addition to the 12 articles in the special issue, we have also included 12 accepted open call articles. The first article, “Dense Small Satellite Networks for Modern Terrestrial Communication Systems: Benefits, Infrastructure, and Technologies” by N. Hassan et al., demonstrates several components of dense small satellite networks (DSSN) infrastructure, including satellite formations, orbital paths, inter-satellite communication links, and communication architectures for data delivery from source to destination. It also reviews important technologies for DSSN as well as the challenges involved in the use of these technologies in DSSN. Several open research directions to enhance the benefits of DSSN for MTCS are also identified in the article. A case study showing the integration benefits of DSSN in mobile terrestrial communication systems is also included. The second article, “Overcoming the Channel Estimation Barrier in Massive MIMO Communication via Deep Learning” by Z. Liu et al., discusses the application of deep learning (DL) for massive MIMO channel estimation in wireless networks by integrating the underlying characteristics of channels in future high-speed cellular deployment. It develops important insights derived from the physical radio frequency channel properties and presents a comprehensive overview on the application of DL for accurately estimating channel state information (CSI) with low overhead. The article provides examples of successful DL application in CSI estimation for massive MIMO wireless systems and highlights several promising directions for future research. In the third article, “Energy-aware Task Offloading in Internet of Things”, J. Li et al. introduce a new energy-aware task offloading scheme in IoT to determine the optimal offloading strategy. First, they investigate the architecture of mobile edge computing (MEC) in IoT. Second, they discuss the challenges of task offloading in MEC for IoT. Third, they propose the framework of task offloading for MEC, the optimal offloading strategy for computing task is achieved. Finally, the article demonstrates experiment results to show that the proposed scheme can significantly improve the efficiency of task offloading compared with the conventional scheme. Yi Qian","PeriodicalId":13497,"journal":{"name":"IEEE Wirel. Commun.","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2020-10-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":"{\"title\":\"Spectrum Efficiency and Energy Efficiency in Wireless Communication Networks\",\"authors\":\"Y. Qian\",\"doi\":\"10.1109/mwc.2020.9241874\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"In the October 2020 issue of IEEE Wireless Communications Magazine, we are pleased to present a special issue on “Spectrum and Energy Efficient Wireless Communications” with a collection of 12 articles. In this issue, we are also very glad to present 12 articles accepted from the open call. Driven by new-generation mobile devices and bandwidth consuming applications such as video streaming, wireless traffic volume is expected to continue expanding tremendously in the next few years. Sustaining this growing trend will in turn require higher spectrum capacity from the network side. Research has shown that capacity demand increases much faster than the current spectrum efficiency improvement, in particular at hot spot areas. From recent data, global mobile data traffic increased nearly 11-fold in the last few years. In contrast, the peak data rate from 3G wireless technology to 4G wireless technology only increased 55 percent in the last decade. Clearly there is a huge gap between the capacity growth of new wireless access technologies and the fast growth of wireless traffic volume for the next-generation wireless networks. In the meantime, energy efficiency, commonly defined as information bits per unit of energy, has become another essential requirement for the design of future wireless communication networks besides spectrum efficiency. Energy efficient communications have attracted great attention due to the ever-increasing demand to preserve energy resources and to protect the environment. Furthermore, mobile devices, such as smart phones and tablets, are widely used to conduct new applications such as video content distribution, location-aware advertisement, video chatting, video streaming, music and movie downloading, etc. In the year 2012, mobile video traffic exceeded 50 percent of the total wireless traffic volume for the first time. Mobile video has increased 14-fold since then, accounting for 69 percent of the total mobile data traffic by the end of last year. How to support energy and bandwidth consuming video applications with high QoE is becoming another challenging issue in future wireless networks. Clearly, there is an urgency for a new disruptive paradigm to bridge the gap between the increasing capacity, energy and QoE demands and the deficiency of radio spectrum resources. As wireless channel efficiency is approaching its fundamental limit, improvements in future wireless system capacity can be alternatively realized by networking technologies such as node density increase through underlay and overlay deployments, or by going to a higher spectrum such as millimeter wave to seek more spectrum bandwidth. In addition to delivering the required network spectrum efficiency, energy efficiency and QoE, the anticipated tremendous proliferation of machine-type devices and consumer-wearable devices also makes the underlay wireless network desirable. These small devices usually have limited onboard processing power and battery size. If they need powerful computing capability to process extensive content information, they will have to heavily rely on their surrounding local networks and computing platforms to facilitate these computing-intensive and thus power consuming applications. Using high performance and very low latency communication links to offload mobile device computing load into nearby powerful computing clouds becomes an essential direction to pursue. This paradigm shift in the next decade also calls for the cluster-based underlay networking technologies, in which a cluster head of a number of underlay devices can be selected as the representative of the entire cluster for both communication and control purposes. Spectrum and energy efficient wireless communications is one of the most important topics today in the next generation wireless networking area, and attracting more and more attention from industry, research, and academia. This special issue focuses on the challenges and novel solutions for spectrum and energy efficient wireless communication networks. Thanks to the guest editors, Q. Liang, T. S. Durrani, J. Koh, Q. Wu, and X. Wang, who did an excellent job in editing this special issue for our readers. Please stay tuned for new developments in the research area of spectrum and energy efficient wireless communications, and read the editorial for more details about the papers in this special issue. In addition to the 12 articles in the special issue, we have also included 12 accepted open call articles. The first article, “Dense Small Satellite Networks for Modern Terrestrial Communication Systems: Benefits, Infrastructure, and Technologies” by N. Hassan et al., demonstrates several components of dense small satellite networks (DSSN) infrastructure, including satellite formations, orbital paths, inter-satellite communication links, and communication architectures for data delivery from source to destination. It also reviews important technologies for DSSN as well as the challenges involved in the use of these technologies in DSSN. Several open research directions to enhance the benefits of DSSN for MTCS are also identified in the article. A case study showing the integration benefits of DSSN in mobile terrestrial communication systems is also included. The second article, “Overcoming the Channel Estimation Barrier in Massive MIMO Communication via Deep Learning” by Z. Liu et al., discusses the application of deep learning (DL) for massive MIMO channel estimation in wireless networks by integrating the underlying characteristics of channels in future high-speed cellular deployment. It develops important insights derived from the physical radio frequency channel properties and presents a comprehensive overview on the application of DL for accurately estimating channel state information (CSI) with low overhead. The article provides examples of successful DL application in CSI estimation for massive MIMO wireless systems and highlights several promising directions for future research. In the third article, “Energy-aware Task Offloading in Internet of Things”, J. Li et al. introduce a new energy-aware task offloading scheme in IoT to determine the optimal offloading strategy. First, they investigate the architecture of mobile edge computing (MEC) in IoT. Second, they discuss the challenges of task offloading in MEC for IoT. Third, they propose the framework of task offloading for MEC, the optimal offloading strategy for computing task is achieved. Finally, the article demonstrates experiment results to show that the proposed scheme can significantly improve the efficiency of task offloading compared with the conventional scheme. Yi Qian\",\"PeriodicalId\":13497,\"journal\":{\"name\":\"IEEE Wirel. Commun.\",\"volume\":null,\"pages\":null},\"PeriodicalIF\":0.0000,\"publicationDate\":\"2020-10-01\",\"publicationTypes\":\"Journal Article\",\"fieldsOfStudy\":null,\"isOpenAccess\":false,\"openAccessPdf\":\"\",\"citationCount\":\"1\",\"resultStr\":null,\"platform\":\"Semanticscholar\",\"paperid\":null,\"PeriodicalName\":\"IEEE Wirel. Commun.\",\"FirstCategoryId\":\"1085\",\"ListUrlMain\":\"https://doi.org/10.1109/mwc.2020.9241874\",\"RegionNum\":0,\"RegionCategory\":null,\"ArticlePicture\":[],\"TitleCN\":null,\"AbstractTextCN\":null,\"PMCID\":null,\"EPubDate\":\"\",\"PubModel\":\"\",\"JCR\":\"\",\"JCRName\":\"\",\"Score\":null,\"Total\":0}","platform":"Semanticscholar","paperid":null,"PeriodicalName":"IEEE Wirel. Commun.","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1109/mwc.2020.9241874","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 1

摘要

在2020年10月的《IEEE无线通信杂志》上,我们很高兴地发表了一期关于“频谱和节能无线通信”的特刊,其中包含12篇文章。在这一期,我们也很高兴地从公开征集中选出12篇文章。在新一代移动设备和视频流等带宽消耗应用的推动下,无线流量预计将在未来几年继续大幅增长。维持这种增长趋势反过来又需要网络方面提供更高的频谱容量。研究表明,容量需求的增长速度远远快于当前频谱效率的提高,特别是在热点区域。从最近的数据来看,全球移动数据流量在过去几年中增长了近11倍。相比之下,从3G无线技术到4G无线技术的峰值数据速率在过去十年中仅增长了55%。显然,新无线接入技术的容量增长与下一代无线网络无线业务量的快速增长之间存在巨大差距。与此同时,除了频谱效率之外,能效(通常定义为单位能量的信息位数)已经成为未来无线通信网络设计的另一个基本要求。由于节约能源和保护环境的需求日益增长,节能通信引起了人们的广泛关注。此外,智能手机和平板电脑等移动设备被广泛用于视频内容分发、位置感知广告、视频聊天、视频流、音乐和电影下载等新应用。2012年,移动视频流量首次超过无线总流量的50%。自那时以来,移动视频增长了14倍,截至去年年底,占移动数据流量总量的69%。如何支持高QoE、高能耗、高带宽的视频应用成为未来无线网络的又一挑战。显然,迫切需要一种新的颠覆性范例,以弥合不断增长的容量、能源和QoE需求与无线电频谱资源不足之间的差距。随着无线信道效率接近其基本极限,未来无线系统容量的改进可以通过网络技术来实现,例如通过底层和覆盖部署增加节点密度,或者通过向更高的频谱(如毫米波)寻求更多的频谱带宽。除了提供所需的网络频谱效率、能源效率和QoE之外,机器类型设备和消费者可穿戴设备的预期巨大扩散也使底层无线网络成为人们的理想选择。这些小型设备通常具有有限的板载处理能力和电池尺寸。如果他们需要强大的计算能力来处理大量的内容信息,他们将不得不严重依赖周围的本地网络和计算平台来实现这些计算密集型的、因此耗电的应用程序。利用高性能和极低延迟的通信链路,将移动设备的计算负荷转移到附近强大的计算云,成为一个重要的发展方向。未来十年的这种范式转变还需要基于集群的底层网络技术,在这种技术中,可以选择许多底层设备的集群头作为整个集群的代表,以实现通信和控制目的。频谱和节能无线通信是当今下一代无线网络领域的重要课题之一,越来越受到工业界、研究界和学术界的关注。本期特刊重点介绍频谱和节能无线通信网络面临的挑战和新的解决方案。感谢本期特刊的特约编辑梁琦、杜拉尼、高锟、吴琦和王晓霞,他们为我们的读者出色地编辑了本期特刊。请继续关注频谱和节能无线通信研究领域的新进展,并阅读本期特刊的社论,了解更多有关论文的详细信息。除了特刊中的12篇文章外,我们还收录了12篇接受公开征集的文章。第一篇文章,“现代地面通信系统的密集小卫星网络:利益、基础设施和技术”,由N. Hassan等人撰写,展示了密集小卫星网络(dsn)基础设施的几个组成部分,包括卫星结构、轨道路径、卫星间通信链路和用于从源到目的地的数据传输的通信架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spectrum Efficiency and Energy Efficiency in Wireless Communication Networks
In the October 2020 issue of IEEE Wireless Communications Magazine, we are pleased to present a special issue on “Spectrum and Energy Efficient Wireless Communications” with a collection of 12 articles. In this issue, we are also very glad to present 12 articles accepted from the open call. Driven by new-generation mobile devices and bandwidth consuming applications such as video streaming, wireless traffic volume is expected to continue expanding tremendously in the next few years. Sustaining this growing trend will in turn require higher spectrum capacity from the network side. Research has shown that capacity demand increases much faster than the current spectrum efficiency improvement, in particular at hot spot areas. From recent data, global mobile data traffic increased nearly 11-fold in the last few years. In contrast, the peak data rate from 3G wireless technology to 4G wireless technology only increased 55 percent in the last decade. Clearly there is a huge gap between the capacity growth of new wireless access technologies and the fast growth of wireless traffic volume for the next-generation wireless networks. In the meantime, energy efficiency, commonly defined as information bits per unit of energy, has become another essential requirement for the design of future wireless communication networks besides spectrum efficiency. Energy efficient communications have attracted great attention due to the ever-increasing demand to preserve energy resources and to protect the environment. Furthermore, mobile devices, such as smart phones and tablets, are widely used to conduct new applications such as video content distribution, location-aware advertisement, video chatting, video streaming, music and movie downloading, etc. In the year 2012, mobile video traffic exceeded 50 percent of the total wireless traffic volume for the first time. Mobile video has increased 14-fold since then, accounting for 69 percent of the total mobile data traffic by the end of last year. How to support energy and bandwidth consuming video applications with high QoE is becoming another challenging issue in future wireless networks. Clearly, there is an urgency for a new disruptive paradigm to bridge the gap between the increasing capacity, energy and QoE demands and the deficiency of radio spectrum resources. As wireless channel efficiency is approaching its fundamental limit, improvements in future wireless system capacity can be alternatively realized by networking technologies such as node density increase through underlay and overlay deployments, or by going to a higher spectrum such as millimeter wave to seek more spectrum bandwidth. In addition to delivering the required network spectrum efficiency, energy efficiency and QoE, the anticipated tremendous proliferation of machine-type devices and consumer-wearable devices also makes the underlay wireless network desirable. These small devices usually have limited onboard processing power and battery size. If they need powerful computing capability to process extensive content information, they will have to heavily rely on their surrounding local networks and computing platforms to facilitate these computing-intensive and thus power consuming applications. Using high performance and very low latency communication links to offload mobile device computing load into nearby powerful computing clouds becomes an essential direction to pursue. This paradigm shift in the next decade also calls for the cluster-based underlay networking technologies, in which a cluster head of a number of underlay devices can be selected as the representative of the entire cluster for both communication and control purposes. Spectrum and energy efficient wireless communications is one of the most important topics today in the next generation wireless networking area, and attracting more and more attention from industry, research, and academia. This special issue focuses on the challenges and novel solutions for spectrum and energy efficient wireless communication networks. Thanks to the guest editors, Q. Liang, T. S. Durrani, J. Koh, Q. Wu, and X. Wang, who did an excellent job in editing this special issue for our readers. Please stay tuned for new developments in the research area of spectrum and energy efficient wireless communications, and read the editorial for more details about the papers in this special issue. In addition to the 12 articles in the special issue, we have also included 12 accepted open call articles. The first article, “Dense Small Satellite Networks for Modern Terrestrial Communication Systems: Benefits, Infrastructure, and Technologies” by N. Hassan et al., demonstrates several components of dense small satellite networks (DSSN) infrastructure, including satellite formations, orbital paths, inter-satellite communication links, and communication architectures for data delivery from source to destination. It also reviews important technologies for DSSN as well as the challenges involved in the use of these technologies in DSSN. Several open research directions to enhance the benefits of DSSN for MTCS are also identified in the article. A case study showing the integration benefits of DSSN in mobile terrestrial communication systems is also included. The second article, “Overcoming the Channel Estimation Barrier in Massive MIMO Communication via Deep Learning” by Z. Liu et al., discusses the application of deep learning (DL) for massive MIMO channel estimation in wireless networks by integrating the underlying characteristics of channels in future high-speed cellular deployment. It develops important insights derived from the physical radio frequency channel properties and presents a comprehensive overview on the application of DL for accurately estimating channel state information (CSI) with low overhead. The article provides examples of successful DL application in CSI estimation for massive MIMO wireless systems and highlights several promising directions for future research. In the third article, “Energy-aware Task Offloading in Internet of Things”, J. Li et al. introduce a new energy-aware task offloading scheme in IoT to determine the optimal offloading strategy. First, they investigate the architecture of mobile edge computing (MEC) in IoT. Second, they discuss the challenges of task offloading in MEC for IoT. Third, they propose the framework of task offloading for MEC, the optimal offloading strategy for computing task is achieved. Finally, the article demonstrates experiment results to show that the proposed scheme can significantly improve the efficiency of task offloading compared with the conventional scheme. Yi Qian
求助全文
通过发布文献求助,成功后即可免费获取论文全文。 去求助
来源期刊
自引率
0.00%
发文量
0
×
引用
GB/T 7714-2015
复制
MLA
复制
APA
复制
导出至
BibTeX EndNote RefMan NoteFirst NoteExpress
×
提示
您的信息不完整,为了账户安全,请先补充。
现在去补充
×
提示
您因"违规操作"
具体请查看互助需知
我知道了
×
提示
确定
请完成安全验证×
copy
已复制链接
快去分享给好友吧!
我知道了
右上角分享
点击右上角分享
0
联系我们:info@booksci.cn Book学术提供免费学术资源搜索服务,方便国内外学者检索中英文文献。致力于提供最便捷和优质的服务体验。 Copyright © 2023 布克学术 All rights reserved.
京ICP备2023020795号-1
ghs 京公网安备 11010802042870号
Book学术文献互助
Book学术文献互助群
群 号:481959085
Book学术官方微信