Past research and practice have demonstrated that dynamic rerouting framework is effective in mitigating urban traffic congestion and thereby improve urban travel efficiency. It has been suggested that dynamic rerouting could be facilitated using emerging technologies such as fog-computing which offer advantages of low-latency capabilities and information exchange between vehicles and roadway infrastructure. To address this question, this study proposes a two-stage model that combines GAQ (Graph Attention Network - Deep Q Learning) and EBkSP (Entropy Based k Shortest Path) using a fog-cloud architecture, to reroute vehicles in a dynamic urban environment and therefore to improve travel efficiency in terms of travel speed. First, GAQ analyzes the traffic conditions on each road and for each fog area, and then assigns a road index based on the information attention from both local and neighboring areas. Second, EBkSP assigns the route for each vehicle based on the vehicle priority and route popularity. A case study experiment is carried out to investigate the efficacy of the proposed model. At the model training stage, different methods are used to establish the vehicle priorities, and their impact on the results is assessed. Also, the proposed model is tested under various scenarios with different ratios of rerouting and background (non-rerouting) vehicles. The results demonstrate that vehicle rerouting using the proposed model can help attain higher speed and reduces possibility of severe congestion. This result suggests that the proposed model can be deployed by urban transportation agencies for dynamic rerouting and ultimately, to reduce urban traffic congestion.
翻译:以往的研究和实践表明,动态改道框架对于减轻城市交通堵塞,从而提高城市旅行效率是有效的,建议利用雾式计算等新兴技术促进动态改道,如雾式计算,因为雾式计算具有低相对能力和车辆与公路基础设施之间信息交流的优势,为解决这一问题,本研究报告提出一个两阶段模式,将GAQ(格夫关注网络-深Q学习)和EBkSP(EBropy Based Troorest Path)结合起来,使用雾式云层结构,在动态城市环境中改变车辆路线,从而提高旅行效率。首先,GAQ分析每条道路和每个雾区交通状况,然后根据当地和邻近地区的信息关注情况,指定一条道路指数。第二,EBkSP根据车辆的优先程度和车道普及程度,为每辆汽车分配路线。 进行案例研究,以调查拟议模式的功效。 在示范培训阶段,采用不同方法确定车辆的优先路线,从而降低车辆交通速度,并评估其对结果的影响。