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An adaptive approach to enhanced traffic signal optimization by using soft-computing techniques

机译:一种通过软计算技术增强交通信号优化的自适应方法

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摘要

This paper presents an application of diverse soft-computing techniques to adaptive traffic light controls. The proposed methodology consists of two main phases: off-line and on-line. First, clustering techniques and optimization methods are used at the off-line stage to discover the prototypes which characterize the traffic mobility patterns at an intersection. After this process an optimum timing plan is decided for each mobility pattern detected. In the on-line phase, a prediction model is then constructed on the basis of the prototypes found. Fuzzy Logic based techniques are used to formally represent the prototypes in the prediction model and these prototypes are parametrically defined through frameworks. During the on-line phase an intelligent transportation system, by using the prediction model, matches the current traffic conditions to the mobility patterns detected at the off-line stage in order to identify the most suitable one to be used. The use of these techniques supposes a substantial contribution to the significance of the prediction model, making it robust in the face of anomalous mobility patterns, and efficient from the point of view of real-time computation.
机译:本文介绍了各种软计算技术在自适应交通信号灯控制中的应用。拟议的方法包括两个主要阶段:离线和在线。首先,在离线阶段使用聚类技术和优化方法来发现表征交叉路口交通移动性模式的原型。在此过程之后,为检测到的每个移动性模式确定最佳时序计划。在在线阶段,然后根据找到的原型构建预测模型。基于模糊逻辑的技术用于在预测模型中正式表示原型,并且这些原型通过框架进行参数定义。在在线阶段,智能交通系统通过使用预测模型,将当前交通状况与在离线阶段检测到的移动性模式进行匹配,以识别最适合使用的交通模式。这些技术的使用对预测模型的重要性做出了重大贡献,使其在面对异常移动性模式时变得健壮,并且从实时计算的角度来看非常有效。

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