A Network Slicing Framework for UAV-Aided Vehicular Networks

被引:17
|
作者
Skondras, Emmanouil [1 ]
Michailidis, Emmanouel T. [2 ]
Michalas, Angelos [3 ]
Vergados, Dimitrios J. [4 ]
Miridakis, Nikolaos, I [5 ]
Vergados, Dimitrios D. [1 ]
机构
[1] Univ Piraeus, Dept Informat, 80 Karaoli & Dimitriou St, Piraeus 18534, Greece
[2] Univ West Attica, Dept Elect & Elect Engn, Ancient Olive Grove Campus,250 Thivon & P Ralli, Athens 12244, Greece
[3] Univ Western Macedonia Karamanli & Ligeris, Dept Elect & Comp Engn, Kozani 50131, Greece
[4] Univ Western Macedonia, Dept Informat, Fourka Area, Kastoria 52100, Greece
[5] Univ West Attica, Dept Informat & Comp Engn, Egaleo Pk,Ag Spyridonos Str, Athens 12243, Greece
关键词
5G vehicular networks; unmanned aerial vehicles (UAVs); fuzzy multi-attribute decision-making (fuzzy MADM); LTE advance pro with FD-MIMO (LTE-A Pro FD-MIMO); LTE vehicle-to-everything (LTE-V2X); network slicing; computation offloading; software-defined networking (SDN); FUZZY AHP; CONNECTIVITY; ARCHITECTURE; CHALLENGES; EXTENSION; SELECTION;
D O I
10.3390/drones5030070
中图分类号
TP7 [遥感技术];
学科分类号
081102 ; 0816 ; 081602 ; 083002 ; 1404 ;
摘要
In a fifth generation (5G) vehicular network architecture, several point of access (PoA) types, including both road side units (RSUs) and aerial relay nodes (ARNs), can be leveraged to undertake the service of an increasing number of vehicular users. In such an architecture, the application of efficient resource allocation schemes is indispensable. In this direction, this paper describes a network slicing scheme for 5G vehicular networks that aims to optimize the performance of modern network services. The proposed architecture consists of ground RSUs and unmanned aerial vehicles (UAVs) acting as ARNs enabling the communication between ground vehicular nodes and providing additional communication resources. Both RSUs and ARNs implement the LTE vehicle-to-everything (LTE-V2X) technology, while the position of each ARN is optimized by applying a fuzzy multi-attribute decision-making (fuzzy MADM) technique. With regard to the proposed network architecture, each RSU maintains a local virtual resource pool (LVRP) which contains local RBs (LRBs) and shared RBs (SRBs), while an SDN controller maintains a virtual resource pool (VRP), where the SRBs of the RSUs are stored. In addition, each ARN maintains its own resource blocks (RBs). For users connected to the RSUs, if the remaining RBs of the current RSU can satisfy the predefined threshold value, the LRBs of the RSU are allocated to user services. On the contrary, if the remaining RBs of the current RSU cannot satisfy the threshold, extra RBs from the VRP are allocated to user services. Similarly, for users connected to ARNs, the satisfaction grade of each user service is monitored considering both the QoS and the signal-to-noise plus interference (SINR) factors. If the satisfaction grade is higher than the predefined threshold value, the service requirements can be satisfied by the remaining RBs of the ARN. On the contrary, if the estimated satisfaction grade is lower than the predefined threshold value, the ARN borrows extra RBs from the LVRP of the corresponding RSU to achieve the required satisfaction grade. Performance evaluation shows that the suggested method optimizes the resource allocation and improves the performance of the offered services in terms of throughput, packet transfer delay, jitter and packet loss ratio, since the use of ARNs that obtain optimal positions improves the channel conditions observed from each vehicular user.
引用
收藏
页数:29
相关论文
共 50 条
  • [21] UAV-Aided Decentralized Learning over Mesh Networks
    Zecchin, Matteo
    Gesbert, David
    Kountouris, Marios
    2022 30TH EUROPEAN SIGNAL PROCESSING CONFERENCE (EUSIPCO 2022), 2022, : 702 - 706
  • [22] Throughput Maximization for UAV-Aided Backscatter Communication Networks
    Hua, Meng
    Yang, Luxi
    Li, Chunguo
    Wu, Qingqing
    Swindlehurst, A. Lee
    IEEE TRANSACTIONS ON COMMUNICATIONS, 2020, 68 (02) : 1254 - 1270
  • [23] UAV-Aided NOMA Networks with Optimization of Trajectory and Precoding
    Pang, Xiaowei
    Li, Zan
    Chen, Xiaoming
    Cao, Yang
    Zhao, Nan
    Chen, Yunfei
    Ding, Zhiguo
    2018 10TH INTERNATIONAL CONFERENCE ON WIRELESS COMMUNICATIONS AND SIGNAL PROCESSING (WCSP), 2018,
  • [24] Modeling the Age of Information in UAV-aided Wireless Networks
    Lakiotakis, Emmanouil
    Pappas, Nikolaos
    Dimitropoulos, Xenofontas
    2022 IEEE CONFERENCE ON STANDARDS FOR COMMUNICATIONS AND NETWORKING, CSCN, 2022, : 105 - 110
  • [25] Routing Protocols for UAV-Aided Wireless Sensor Networks
    Arafat, Muhammad Yeasir
    Habib, Md Arafat
    Moh, Sangman
    APPLIED SCIENCES-BASEL, 2020, 10 (12):
  • [26] Reinforcement Learning-Based Trajectory Planning For UAV-aided Vehicular Communications
    Marini, Riccardo
    Spampinato, Leonardo
    Mignardi, Silvia
    Verdone, Roberto
    Buratti, Chiara
    2022 30TH EUROPEAN SIGNAL PROCESSING CONFERENCE (EUSIPCO 2022), 2022, : 967 - 971
  • [27] Control Efficient Power Allocation of Uplink NOMA in UAV-Aided Vehicular Platooning
    Sun, Yanglong
    Zheng, Ke
    Tang, Yuliang
    IEEE ACCESS, 2021, 9 : 139473 - 139488
  • [28] Analytical Description of Access Probability and RRA strategy for UAV-Aided Vehicular Applications
    Conserva, Francesca
    Verdone, Roberto
    PROCEEDINGS OF THE DRONET IX WORKSHOP 9TH ACM WORKSHOP ON MICRO AERIAL VEHICLE NETWORKS, SYSTEMS, AND APPLICATIONS, DRONET IX 2023, 2023, : 21 - 26
  • [29] Intelligent and efficient Metaverse rendering and caching in UAV-aided vehicular edge computing
    Yuan, Linlin
    Wu, Guoquan
    Jin, Kebing
    Li, Ya
    Tang, Jianhang
    Li, Shaobo
    VEHICULAR COMMUNICATIONS, 2025, 53
  • [30] Cooperative Path Selection Framework for Effective Data Gathering in UAV-Aided Wireless Sensor Networks
    Say, Sotheara
    Ernawan, Mohamad Erick
    Shimamoto, Shigeru
    IEICE TRANSACTIONS ON COMMUNICATIONS, 2016, E99B (10) : 2156 - 2167