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Traffic congestion reduce mechanism by adaptive road routing recommendation in smart city

机译:智慧城市中基于自适应道路路由推荐的交通拥堵减少机制

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摘要

Using fuzzy logic, we propose a model with a neural network for public transport, normal cars, and motorcycles. The model controls traffic-light systems to reduce traffic congestion and help vehicles with high priority pass through. A fuzzy neural network (FNN) calculates the traffic-light system and extends or terminates the green signal according to the traffic situation at the given junction while also computing from adjacent intersections. In the presence of public transports, the system decides which signal(s) should be red and how much of an extension should be given to green signals for the priority-based vehicle. The system also monitors the density of car flows and makes real-time decisions accordingly. In order to verify the proposed design algorithm, we adapted the simulations of sumo, ns2, and GLD to our model, and further results depict the performance of the proposed FNN in handling traffic congestion and priority-based traffic. The promising results present the efficiency and the scope of the proposed multi-module architecture for future development in traffic control.
机译:使用模糊逻辑,我们为公共交通,普通汽车和摩托车提出了带有神经网络的模型。该模型控制交通信号灯系统,以减少交通拥堵并帮助高优先级车辆通过。模糊神经网络(FNN)可计算交通灯系统,并根据给定路口的交通状况扩展或终止绿色信号,同时还可从相邻路口进行计算。在存在公共交通工具的情况下,系统会决定哪些信号应为红色,对于优先级车辆应为绿色信号提供多少扩展。该系统还监视车流密度并做出相应的实时决策。为了验证所提出的设计算法,我们将相扑,ns2和GLD的仿真调整到我们的模型,进一步的结果描述了所提出的FNN在处理交通拥堵和基于优先级的交通方面的性能。令人鼓舞的结果表明了所提出的多模块体系结构的效率和范围,以用于交通控制的未来发展。

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