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Analyzing the efficiency of context-based grouping on collaboration in VANETs with large-scale simulation

机译:使用大规模仿真分析VANET中基于上下文的协作分组效率

摘要

Vehicle-to-vehicle and vehicle-to-infrastructure communication systems enable vehicles to share information captured by their local sensors with other interested vehicles. To ensure that this information is delivered at the right time and location, context-aware routing is vital for intelligent inter-vehicular communication. Traditional network addressing and routing schemes do not scale well for large vehicular networks. The conventional network multicasting and broadcasting cause significant overhead due to a large amount of irrelevant and redundant transmissions. To address these challenges, we first take into account contextual properties such as location, direction, and information interest to reduce the network traffic overhead. Second, to improve the relevancy of the received information we leverage the mobility patterns of vehicles and the road layouts to further optimize the peer-to-peer routing of the information. Third, to ensure our approach is scalable, we propose a context-based grouping mechanism in which relevant information is shared in an intelligent way within and between the groups. We evaluate our approach based on groups with common spatio-temporal characteristics. Our simulation experiments show that our context-based routing scheme and grouping mechanism significantly reduces the propagation of irrelevant and redundant information.
机译:车辆到车辆和车辆到基础设施的通信系统使车辆能够与其他感兴趣的车辆共享由其本地传感器捕获的信息。为了确保在正确的时间和位置传递此信息,上下文感知路由对于智能的车辆间通信至关重要。传统的网络寻址和路由方案不适用于大型车载网络。常规的网络多播和广播由于大量无关且冗余的传输而导致大量开销。为了解决这些挑战,我们首先考虑上下文属性,例如位置,方向和信息兴趣,以减少网络流量开销。第二,为了提高接收到的信息的相关性,我们利用车辆的移动性模式和道路布局进一步优化信息的点对点路由。第三,为了确保我们的方法具有可扩展性,我们提出了一种基于上下文的分组机制,在该机制中,相关信息以智能的方式在组内和组之间共享。我们基于具有共同的时空特征的群体评估我们的方法。我们的仿真实验表明,基于上下文的路由方案和分组机制显着减少了不相关和冗余信息的传播。

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