4.7 Article

Novel Online Sequential Learning-Based Adaptive Routing for Edge Software-Defined Vehicular Networks

期刊

IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS
卷 20, 期 5, 页码 2991-3004

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TWC.2020.3046275

关键词

Routing; Particle swarm optimization; Optimization; Wireless communication; Adaptive systems; Decision making; Routing protocols; Hybrid SDVNs; VANETs; adaptive routing scheme; penicillium reproduction algorithm; OS-ELM

资金

  1. National Natural Science Foundation for Young Scientists of China [61701322]
  2. Young and Middle-aged Science and Technology Innovation Talent Support Plan of Shenyang [RC190026]
  3. Liaoning Provincial Department of Education Science Foundation [JYT19052]

向作者/读者索取更多资源

POLAR is an adaptive routing scheme based on online learning that dynamically selects routing strategies for specific traffic scenarios by utilizing the computational power of edge servers and learning network traffic patterns. By dividing large geographical areas into grids using Geohash, POLAR facilitates real-time traffic data collection and processing for regional management in the controller. The scheme also incorporates a new Penicillium Reproduction Algorithm (PRA) to enhance the learning effectiveness of Online Sequential Extreme Learning Machine (OS-ELM), ultimately deployed in the control plane to generate decision-making models (routing policies) and choose optimal routing strategies based on real-time data. Extensive simulations demonstrate that POLAR outperforms traditional routing protocols in packet delivery ratio and latency.
To provide efficient networking services at the edge of Internet-of-Vehicles (IoV), Software-Defined Vehicular Network (SDVN) has been a promising technology to enable intelligent data exchange without giving additional duties to the resource constrained vehicles. Compared with conventional centralized SDVNs, hybrid SDVNs combine the centralized control of SDVNs and self-organized distributed routing of Vehicular Ad-hoc NETworks (VANETs) to mitigate the burden on the central controller caused by the frequent uplink and downlink transmissions. Although a wide variety of routing protocols have been developed, existing protocols are designed for specific scenarios without considering flexibility and adaptivity in dynamic vehicular networks. To address this problem, we propose an efficient online sequential learning-based adaptive routing scheme, namely, Penicillium reproduction-based Online Learning Adaptive Routing scheme (POLAR) for hybrid SDVNs. By utilizing the computational power of edge servers, this scheme can dynamically select a routing strategy for a specific traffic scenario by learning the pattern from network traffic. Firstly, this paper applies Geohash to divide the large geographical area into multiple grids, which facilitates the collection and processing of real-time traffic data for regional management in controller. Secondly, a new Penicillium Reproduction Algorithm (PRA) with outstanding optimization capabilities is designed to improve the learning effectiveness of Online Sequential Extreme Learning Machine (OS-ELM). Finally, POLAR is deployed in control plane to generate decision-making model (i.e., routing policy). Based on the real-time featured data, this scheme can choose the optimal routing strategy for a specific area. Extensive simulation results show that POLAR is superior to a single traditional routing protocol in terms of packet delivery ratio and latency.

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