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Delay-Bounded and Cost-Limited RSU Deployment in Urban Vehicular Ad Hoc Networks

机译:在城市车载自组织网络中有延迟限制和成本限制的RSU部署

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摘要

As an auxiliary facility, roadside units (RSUs) can well improve the shortcomings incurred by ad hoc networks and promote network performance in a vehicular ad hoc network (VANET). However, deploying a large number of RSUs will lead to high installation and maintenance costs. Therefore, trying to find the best locations is a key issue when deploying RSUs with the set delay and budget. In this paper, we study the delay-bounded and cost-limited RSU deployment (DBCL) problem in urban VANET. We prove it is non-deterministic polynomial-time hard (NP-hard), and a binary differential evolution scheme is proposed to maximize the number of roads covered by deploying RSUs. Opposite-based learning is introduced to initialize the first generation, and a binary differential mutation operator is designed to obtain binary coding. A random variable is added to the traditional crossover operator to increase population diversity. Also, a greedy-based individual reparation and promotion algorithm is adopted to repair infeasible solutions violating given constraints, and to gain optimal feasible solutions with the compromise of given limits. Moreover, after selection, a solution promotion algorithm is executed to promote the best solution found in generation. Simulation is performed on analog trajectories sets, and results show that our proposed algorithm has a higher road coverage ratio and lower packet loss compared with other schemes.
机译:作为辅助设施,路边单元(RSU)可以很好地改善ad hoc网络的缺点并提高车辆ad hoc网络(VANET)的网络性能。但是,部署大量RSU将导致高昂的安装和维护成本。因此,在按设定的延迟和预算部署RSU时,尝试找到最佳位置是一个关键问题。在本文中,我们研究了城市VANET中延迟受限且成本受限的RSU部署(DBCL)问题。我们证明它是非确定性的多项式时间硬(NP-hard),并提出了一种二进制差分进化方案,以最大化部署RSU所覆盖的道路数量。引入了基于对立的学习以初始化第一代,并设计了二进制差分变异算子以获得二进制编码。将一个随机变量添加到传统的交叉算子以增加总体多样性。此外,采用基于贪婪的个体修复和提升算法来修复违反给定约束的不可行解决方案,并在给定限制的折衷下获得最佳可行解。此外,选择之后,将执行解决方案促进算法以促进生成的最佳解决方案。对模拟轨迹集进行了仿真,结果表明,与其他方案相比,本文提出的算法具有更高的道路覆盖率和更低的丢包率。

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