Distributed transmission and optimization of relay-assisted space-air-ground IoT systems

被引:0
作者
Ying Sun
机构
[1] China Southern Power Grid,Guangdong Power Grid Co., Ltd
来源
EURASIP Journal on Advances in Signal Processing | / 2024卷
关键词
Space-air-ground networks; IoT networks; Distributed transmission; Relaying;
D O I
暂无
中图分类号
学科分类号
摘要
This paper investigates the integration of relay-assisted Internet of Things (IoT) systems, focusing on the use of multiple relays to enhance the system performance. The central metric of interest in this study is system outage probability, evaluated in terms of latency. Our research provides a comprehensive analysis of system outage probability, considering different relay selection criteria to optimize the system’s transmission performance. Three relay selection strategies are employed to enhance the system transmission performance. Specifically, the first strategy, optimal relay selection, aims to identify the relay that minimizes the latency and maximizes the data transmission reliability. The second approach, partial relay selection, focuses on selecting a subset of relays strategically to balance the system resources and achieve the latency reduction. The third strategy, random relay selection, explores the potential of opportunistic relay selection without prior knowledge. Through a rigorous investigation, our paper evaluates the impact of these relay selection criteria on the performance of relay-assisted edge computing systems. By assessing the system outage probability in relation to latency, we provide valuable insights into the trade-offs and advantages associated with each selection strategy. Our findings contribute to the design and optimization of reliable and efficient edge computing systems, with implications for various applications, including the IoT and intelligent data processing.
引用
收藏
相关论文
共 113 条
  • [1] Na Z(2021)UAV-supported clustered NOMA for 6G-enabled internet of things: trajectory planning and resource allocation IEEE Internet Things J. 8 15041-15048
  • [2] Liu Y(2023)Edge learning for B5G networks with distributed signal processing: semantic communication, edge computing, and wireless sensing IEEE J. Sel. Top. Signal Process. 17 9-39
  • [3] Shi J(2021)Reinforcement learning-based multislot double-threshold spectrum sensing with Bayesian fusion for industrial big spectrum data IEEE Trans. Ind. Informatics 17 3391-3400
  • [4] Liu C(2021)UAV-based wide-area internet of things: an integrated deployment architecture IEEE Netw. 35 122-128
  • [5] Gao Z(2023)Physical-layer authentication for ambient backscatter-aided NOMA symbiotic systems IEEE Trans. Commun. 71 2288-2303
  • [6] Xu W(2020)Big-data-based intelligent spectrum sensing for heterogeneous spectrum communications in 5G IEEE Wirel. Commun. 27 67-73
  • [7] Yang Z(2023)Online distributed optimization for energy-efficient computation offloading in air-ground integrated networks IEEE Trans. Veh. Technol. 72 5110-5124
  • [8] Ng DWK(2022)Joint communication and trajectory optimization for multi-UAV enabled mobile internet of vehicles IEEE Trans. Intell. Transp. Syst. 23 15354-15366
  • [9] Levorato M(2021)Uplink resource allocation for noma-based hybrid spectrum access in 6G-enabled cognitive internet of things IEEE Internet Things J. 8 15049-15058
  • [10] Eldar YC(2023)Toward ubiquitous and intelligent 6G networks: from architecture to technology Sci. China Inf. Sci. 66 130300-58