Wireless Rechargeable Sensor Networks: Energy Provisioning Technologies, Charging Scheduling Schemes, and Challenges

IF 3.9 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Samah Abdel Aziz;Xingfu Wang;Ammar Hawbani;Bushra Qureshi;Saeed H. Alsamhi;Aisha Alabsi;Liang Zhao;Ahmed Al-Dubai;A.S. Ismail
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Abstract

Recently, a plethora of promising green energy provisioning technologies has been discussed in the orientation of prolonging the lifetime of energy-limited devices (e.g., sensor nodes). Wireless rechargeable sensor networks (WRSNs) have emerged among other fields that could greatly benefit from such technologies. Such an ad-hoc network comprises a base station(s) and multiple sensor nodes, which are primarily deployed in harsh environments, meeting the requirements of transmitting, receiving, collecting, and processing data. Unlike existing works, this survey paper focuses on energy provisioning technologies within the context of WRSNs by reviewing two interrelated domains. First, we introduce various energy provisioning techniques and their associated challenges, including conventional energy harvesting methods (e.g., solar, thermal, and mechanical). We highlight wireless power transfer (WPT) as one of the most applicable technologies for WRSNs, covering both radiative and non-radiative WPT. Additionally, we present radio frequency (RF) energy harvesting, including simultaneous wireless information and power transfer (SWIPT) and wireless powered communication networks (WPCNs), as well as backscatter communications. Furthermore, we compare hybrid energy harvesting techniques (e.g., solar-RF, vibro-acoustic, solar-thermal, etc.). Second, we introduce the fundamentals of wireless charging, reviewing various charger types (static and mobile), charging policies (including full and partial charging), charging modes (offline and online), and charging schemes (periodic and on-demand). We also present the collaborative charging mechanisms. Additionally, we address several key challenges facing WRSNs, such as energy consumption, multi-charger coordination, dynamic network recharging, monitoring & security threats, vehicle-to-vehicle (V2V) charging, and hybrid WRSNs Finally, we highlight trends and future directions for integrating advanced artificial intelligence (AI) technologies into WRSNs.
无线可充电传感器网络:能源供应技术、充电调度方案和挑战
最近,在延长能量受限设备(如传感器节点)寿命的方向上,讨论了大量有前途的绿色能源供应技术。无线可充电传感器网络(WRSNs)已经出现在其他领域,可以从这种技术中受益匪浅。这种自组织网络由一个基站和多个传感器节点组成,主要部署在恶劣环境中,满足数据的发送、接收、采集和处理要求。与现有工作不同,本调查论文通过回顾两个相互关联的领域,重点关注wrns背景下的能源供应技术。首先,我们介绍了各种能量供应技术及其相关的挑战,包括传统的能量收集方法(例如,太阳能,热能和机械)。无线功率传输(WPT)是wrns中最适用的技术之一,包括辐射和非辐射WPT。此外,我们还介绍了射频(RF)能量收集,包括同步无线信息和电力传输(SWIPT)和无线供电通信网络(wpcn),以及反向散射通信。此外,我们比较了混合能量收集技术(例如,太阳能射频,振动声,太阳能热等)。其次,我们介绍了无线充电的基本原理,回顾了各种充电器类型(静态和移动),充电策略(包括完全充电和部分充电),充电模式(离线和在线)以及充电方案(定期和按需)。我们还提出了协同收费机制。此外,我们还讨论了WRSNs面临的几个关键挑战,如能源消耗、多充电器协调、动态网络充电、监控和安全威胁、车对车(V2V)充电和混合WRSNs。最后,我们强调了将先进人工智能(AI)技术集成到WRSNs的趋势和未来方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IEEE Transactions on Sustainable Computing
IEEE Transactions on Sustainable Computing Mathematics-Control and Optimization
CiteScore
7.70
自引率
2.60%
发文量
54
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