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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >ReFOCUS+: Multi-Layers Real-Time Intelligent Route Guidance System With Congestion Detection and Avoidance
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ReFOCUS+: Multi-Layers Real-Time Intelligent Route Guidance System With Congestion Detection and Avoidance

机译:Refofus +:多层实时智能路线引导系统,具有拥塞检测和避免

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Due to random nature of traffic and unpredictability of human behaviors, one of challenging problems in transportation engineering is traffic congestion which has a direct impact on the economy and environment with the increase in traveling time, fuel consumption and emissions. One of approaches to reduce traffic congestions is the advance Route Guidance Systems (RGSs) which can propose alternative optimal routes for vehicles, which are in or will be entering congested roads or areas. Advanced RGSs, usually employ real-time and predicted traffic information of the roads to find the best possible route for vehicles in a way that total traffic congestions will be reduced. In this paper, The ReFOCUS+, a dynamic semi-distributed, multi-layer, and Fog-Cloud based advance route guidance system architecture has been introduced. The ReFOCUS+ architecture, employ Road Side Units (RSUs), to calculate different traffic-related factors such as current and predicted road congestions, area congestions, traveling time, etc. Then, the ReFOCUS+ uses traffic factors to proposes a novel method to detect congested roads in an area and, apply re-routing to vehicles to ease the traffic congestion within each area using a multi-metric fitness function, called Road Weight Measurement (RWM). To evaluate the performance of ReFOCUS+, a new open-source Python-based program has been developed which is able to connect to SUMO traffic simulator and control the simulation. The simulation results demonstrate that ReFOCUS+ outperforms existing solutions and improve traveling time, fuel consumption and gas emissions. (1) (1) The developed program and software in this paper available at https://www.github.com/hamednoori/ReFOCUS+
机译:由于人行为的交通和不可预测性的随机性,运输工程的挑战性问题是交通拥堵,这对经济和环境产生了直接影响,随着旅行时间,燃料消耗和排放的增加。减少交通拥堵的方法之一是预先路由指导系统(RGS),其可以提出替代的车辆的最佳航线,其进入或将进入拥挤的道路或区域。高级RGSS,通常采用实时和预测道路的交通信息,以便以总交通拥堵将减少的方式找到最佳的车辆路线。在本文中,已经介绍了Refofus +,动态半分布式,多层和基于雾云的高级路线引导系统架构。 Refofus +架构,采用道路侧单位(RSU),计算不同的交通相关因素,如当前和预测的道路拥堵,区域拥塞,旅行时间等,那么,Refofus +使用交通因素提出一种检测拥塞的新方法道路在一个区域,并将重新路由到车辆,以便使用多度量的适合功能,称为道路重量测量(RWM),以缓解每个区域内的交通拥堵。为了评估Refofus +的性能,已经开发了一种新的开源Python的程序,可以连接到Sumo流量模拟器并控制模拟。仿真结果表明,重新剖面+优于现有的解决方案,提高旅行时间,燃料消耗和气体排放。 (1)(1)本文发达的计划和软件在https://www.github.com/hamednoori/refocus+上提供

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