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ARTNet: <b>A</b> i-Based <b>R</b> esource Allocation and <b>T</b> ask Offloading in a Reconfigurable Internet of Vehicular <b>Net</b> works

Muhammad Ibrar, Aamir Akbar, Syed Rooh Ullah Jan, Mian Ahmad Jan, Lei Wang, Houbing Song, Nadir Shah

2020IEEE Transactions on Network Science and Engineering49 citationsDOIOpen Access PDF

Abstract

The convergence of Software-Defined Networking (SDN) and Internet of Vehicular (IoV) integrated with Fog Computing (FC), known as Software Defined Vehicular based FC (SDV-F), has recently been established to take advantage of both paradigms and efficiently control the wireless networks. SDV-F tackles numerous problems, such as scalability, load-balancing, energy consumption, and security. It lags, however, in providing a promising approach to enable ultra-reliable and delay-sensitive applications with high vehicle mobility over SDV-F. We propose ARTNet, an AI-based Vehicle-to-Everything (V2X) framework for resource distribution and optimized communication using the SDV-F architecture. ARTNet offers ultra-reliable and low-latency communications, particularly in highly dynamic environments, which is still a challenge in IoV. ARTNet is composed of intelligent agents/controllers, to make decisions intelligently about (i) maximizing resource utilization at the fog layer, and (ii) minimizing the average end-to-end delay of time-critical IoV applications. Moreover, ARTNet is designed to assign a task to fog nodes based on their states. Our experimental results show that considering a dynamic IoV environment, ARTNet can efficiently distribute the fog layer tasks while minimizing the delay.

Topics & Concepts

Computer scienceScalabilityDistributed computingSoftware-defined networkingVehicular ad hoc networkWirelessComputer networkResource allocationLatency (audio)The InternetTelecommunicationsWireless ad hoc networkDatabaseWorld Wide WebIoT and Edge/Fog ComputingVehicular Ad Hoc Networks (VANETs)Blockchain Technology Applications and Security