利用CUPS为下一代汽车边缘计算构建动态映射

Zhaoxia Sun, P. Du, A. Nakao, L. Zhong, R. Onishi
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引用次数: 5

摘要

随着物联网和5G网络的发展,对下一代智能交通系统的需求正在快速增长。在智能交通系统中,动态映射被认为是减少交通事故和拥堵的关键技术之一。然而,随着车辆数量的不断增长,庞大的地图流量可能会使中心云超载,导致性能严重下降。在本文中,我们提出并原型化了一种基于CUPS(控制和用户平面分离)的动态映射边缘计算架构,并通过原型化量化了它的好处。我们的建议有几个优点:(1)我们可以减轻网络和中心云的开销,因为我们只需要从边缘服务器抽象和发送全局动态映射信息到中心云;(ii)我们可以减少响应延迟,因为动态映射流量可以从部署在离车辆更近的本地边缘服务器而不是云中的中央服务器生成和分发,从而与其他数据流量隔离。我们系统的能力已经被量化了。实验结果表明,与传统的基于中央云的方法相比,我们的系统吞吐量提高了4倍以上,响应延迟降低了67.8%。虽然这些结果仍然是从使用我们的原型系统的初步评估中获得的,但我们相信,我们提出的架构使我们能够深入了解如何利用CUPS和边缘计算来实现高效的动态映射应用程序。
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Building Dynamic Mapping with CUPS for Next Generation Automotive Edge Computing
With the development of IoT and 5G networks, the demand for the next-generation intelligent transportation system has been growing at a rapid pace. Dynamic mapping has been considered one of the key technologies to reduce traffic accidents and congestion in the intelligent transportation system. However, as the number of vehicles keeps growing, a huge volume of mapping traffic may overload the central cloud, leading to serious performance degradation. In this paper, we propose and prototype a CUPS (control and user plane separation)-based edge computing architecture for the dynamic mapping and quantify its benefits by prototyping. There are a couple of merits of our proposal: (i) we can mitigate the overhead of the networks and central cloud because we only need to abstract and send global dynamic mapping information from the edge servers to the central cloud; (ii) we can reduce the response latency since the dynamic mapping traffic can be isolated from other data traffic by being generated and distributed from a local edge server that is deployed closer to the vehicles than the central server in cloud. The capabilities of our system have been quantified. The experimental results have shown our system achieves throughput improvement by more than four times, and response latency reduction by 67.8% compared to the conventional central cloud-based approach. Although these results are still obtained from the preliminary evaluations using our prototype system, we believe that our proposed architecture gives insight into how we utilize CUPS and edge computing to enable efficient dynamic mapping applications.
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