Stochastic modelling and analysis of mobility models for intelligent software defined internet of vehicles |
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Affiliation: | 1. PARADISE Research Laboratory, EECS, University of Ottawa, Canada;2. Gulf University for Science and Technology, Kuwait;1. Faculty of Information and Communication Technology, Balochistan University of Information Technology, Engineering and Management Sciences, (BUITEMS), Quetta 87300, Pakistan;2. Department of Computer Science and Engineering, Sungkyunkwan University, Suwon, Republic of Korea;3. Department of Electrical and Computer Engineering, Sungkyunkwan University, Suwon, Republic of Korea |
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Abstract: | Data traffic forwarding and network optimization is essential to effective congestion management in software-defined vehicular networks, and it is necessary for software-defined vehicle networks (SDVN). SDVN is needed to optimize connection performance and network controls in dense and sparse networks to govern data flow between nodes as effectively as possible. Intelligent software-defined internet of vehicles (iSDIoVs) has recently emerged as a potential technology for future vehicular networks. It manages the vehicular ad hoc networks systematically. The link connection of moving vehicles from the central SDN controller may fail. It impacts the efficiency and communication performance because of the lack of connection between vehicles and infrastructure (V2I). The researchers have analyzed the network performance and mobility models in a dense and sparse network to maximize network performance by iSDIoVs. By integrating heterogeneous systems such as IEEE 802.11p and cellular networks into vehicular ad-hoc networks, it is possible to reduce buffer occupancy in iSDIoV and control the mobility and delay bound analysis in V2V communication. The SDN will provide flexibility and reliability to the vehicular networks. An SDN controller manages the data flow in the vehicular network and controls the flow matching rules in the control plane. The iSDIoV and queuing models improve the response time and resource utilization and enhance the network complexity analysis for traffic management services. |
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Keywords: | Vehicular communications Intelligent transportation systems Software defined vehicular networks Internet of vehicles Queueing theory and Markov decision process Performance modelling |
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