On Decentralized Route Planning Using the Road Side Units as Computing Resources

J. P. Talusan, Michael Wilbur, A. Dubey, K. Yasumoto
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引用次数: 3

Abstract

Residents in cities typically use third-party platforms such as Google Maps for route planning services. While providing near real-time processing, these state of the art centralized deployments are limited to multiprocessing environments in data centers. This raises privacy concerns, increases risk for critical data and causes vulnerability to network failure. In this paper, we propose to use decentralized road side units (RSU) (owned by the city) to perform route planning. We divide the city road network into grids, each assigned an RSU where traffic data is kept locally, increasing security and resiliency such that the system can perform even if some RSUs fail. Route generation is done in two steps. First, an optimal grid sequence is generated, prioritizing shortest path calculation accuracy but not RSU load. Second, we assign route planning tasks to the grids in the sequence. Keeping in mind RSU load and constraints, tasks can be allocated and executed in any non-optimal grid but with lower accuracy. We evaluate this system using Metropolitan Nashville road traffic data. We divided the area into 613 grids, configuring load and neighborhood sizes to meet delay constraints while maximizing model accuracy. The results show that there is a 30% decrease in processing time with a decrease in model accuracy of 99% to 92.3%, by simply increasing the search area to the optimal grid’s immediate neighborhood.
以路边单元为计算资源的分散路径规划研究
城市居民通常使用谷歌Maps等第三方平台进行路线规划服务。虽然提供了接近实时的处理,但这些先进的集中式部署仅限于数据中心的多处理环境。这引起了隐私问题,增加了关键数据的风险,并导致网络故障的脆弱性。在本文中,我们建议使用分散的道路侧单元(RSU)(由城市拥有)来进行路线规划。我们将城市道路网络划分为网格,每个网格分配一个RSU,其中交通数据保存在本地,从而提高安全性和弹性,即使某些RSU发生故障,系统也可以正常运行。路由生成分两步完成。首先,生成最优网格序列,优先考虑最短路径计算精度,而不是RSU负载。其次,我们将路线规划任务按顺序分配给网格。记住RSU负载和约束,任务可以在任何非最优网格中分配和执行,但精度较低。我们使用纳什维尔大都会道路交通数据来评估这个系统。我们将区域划分为613个网格,配置负载和邻域大小以满足延迟约束,同时最大化模型精度。结果表明,通过简单地将搜索区域增加到最优网格的邻近区域,处理时间减少了30%,模型精度降低了99%至92.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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