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On the performance of social-based and location-aware forwarding strategies in urban vehicular networks

机译:论城市车辆网络中社会基于和地点感知转发策略的表现

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摘要

High vehicular mobility in urban scenarios originates inter-vehicles communication discontinuities, a highly important factor when designing a forwarding strategy for vehicular networks. Store, carry and forward mechanisms enable the usage of vehicular networks in a large set of applications, such as sensor data collection in IoT, contributing to smart city platforms. This work evaluates the performance of several location-based and social-aware forwarding schemes through emulations and in a real scenario. Gateway Location Awareness (GLA), a location-aware ranking classification, makes use of velocity, heading angle and distance to the gateway, to select the vehicles with higher chance to deliver the information in a shorter period of time, thus differentiating nodes through their movement patterns. Aging Social-Aware Ranking (ASAR) exploits the social behavior of each vehicle, where nodes are ranked based on a historical contact table, differentiating vehicles with a high number of contacts from those who barely contact with other vehicles. To merge both location and social aforementioned algorithms, a HYBRID approach emerges, thus generating a more intelligent mechanism. For each strategy, we evaluate the influence of several parameters in the network performance, as well as we comparatively evaluate the strategies in different scenarios. Experiment results, obtained both in emulated (with real traces of both mobility and vehicular connectivity from a real city-scale urban vehicular network) and real scenarios, show the performance of GLA, ASAR and HYBRID schemes, and their results are compared to lower- and upper-bounds. The obtained results show that these strategies are a good tradeoff to maximize data delivery ratio and minimize network overhead, while making use of mobile networks as a smart city network infrastructure. (C) 2019 Elsevier B.V. All rights reserved.
机译:城市情景中的高车辆移动性起源于车间通信不连续性,在设计车辆网络的转发策略时是一个非常重要的因素。商店,携带和转发机制使得在大量应用中的使用车辆网络,例如IOT中的传感器数据收集,有助于智能城市平台。这项工作通过模拟和实际方案评估了几个基于位置和社交意识的转发方案的性能。网关位置意识(GLA),位置感知排名分类,利用速度,标题角度和到网关的距离,选择具有更高机会的车辆,以便在较短的时间内提供信息,从而通过其区分节点运动模式。老化的社交意识排名(ASAR)利用每个车辆的社交行为,其中节点基于历史接触台排序,将具有大量与其他车辆接触的人的车辆区分车辆。为了合并两个地点和社交上述算法,出现了混合方法,从而产生更智能的机制。对于每种策略,我们评估了几个参数在网络性能中的影响,以及我们相对评价不同场景的策略。在模拟(具有来自真正的城市规模城市车辆网络的移动性和车辆连接的实际痕迹)和实际情况,显示了GLA,ASAR和混合方案的性能,并将其结果与较低 - 和上限。所获得的结果表明,这些策略是一种良好的权衡,以最大限度地提高数据传递比率并最大限度地减少网络开销,同时利用移动网络作为智能城市网络基础架构。 (c)2019 Elsevier B.v.保留所有权利。

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