Learning Automata based Cache Update Policy in Fog-enabled Vehicular Adhoc Networks

R. R. Rout, M. Obaidat, Vineeth Kumar R, Sai Virinchi P, Nihanth Kumar B, Priyanka Parimi
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引用次数: 1

Abstract

Caching in Vehicular Adhoc Networks (VANETs) is a very important technique to reduce the transmission overhead and latency to improve the overall performance of the network. Increasing cache hit ratio is very important for delay sensitive applications. In this paper, average cache hit ratio maximization problem is identified and formulated while taking into account the time-varying topology of network, vehicular (user) mobility, varying requests and preferences of multiple users and the limited cache capacity of the Road Side Units (RSUs). A Learning Automata based cache update policy has been designed in order to determine the appropriate content to be cached in RSUs. The performance of the proposed learning automata based vehicular caching mechanism has been evaluated using simulations and analyzed in comparison with three other existing caching policies. Simulation results show that the efficacy of the proposed learning automata based caching approach can significantly improve the average cache hit ratio and reduce the latency in the vehicular ad-hoc network.
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基于学习自动机的雾驱动车辆自组织网络缓存更新策略
在车载自组织网络(vanet)中,缓存是一项非常重要的技术,它可以降低传输开销和延迟,从而提高网络的整体性能。提高缓存命中率对于延迟敏感的应用程序是非常重要的。本文在考虑网络时变拓扑、车辆(用户)移动性、多个用户的不同请求和偏好以及路旁单元(rsu)有限的缓存容量的情况下,确定并制定了平均缓存命中率最大化问题。设计了一个基于学习自动机的缓存更新策略,以确定要缓存到rsu中的适当内容。通过仿真对基于学习自动机的车辆缓存机制的性能进行了评估,并与其他三种现有的缓存策略进行了比较分析。仿真结果表明,所提出的基于学习自动机的缓存方法能够显著提高车辆自组织网络的平均缓存命中率,降低时延。
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