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A flexible traffic stream model and its three representations of traffic flow

机译:灵活的交通流模型及其交通流的三种表示形式

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To connect microscopic driving behaviors with the macro-correspondence (i.e., the fundamental diagram), this study proposes a flexible traffic stream model, which is derived from a novel car-following model under steady-state conditions. Its four driving behavior related parameters, i.e., reaction time, calmness parameter, speed-and spacing-related sensitivities, have an apparent effect in shaping the fundamental diagram. Its boundary conditions and homogenous case are also analyzed in detail and compared with other two models (i.e., Longitudinal Control Model and Intelligent Driver Model). Especially, these model formulations and properties under Lagrangian coordinates provide a new perspective to revisit the traffic flow and complement with those under Eulerian coordinate. One calibration methodology that incorporates the monkey algorithm with dynamic adaptation is employed to calibrate this model, based on real-field data from a wide range of locations. Results show that this model exhibits the well flexibility to fit these traffic data and performs better than other nine models. Finally, a concrete example of transportation application is designed, in which the impact of three critical parameters on vehicle trajectories and shock waves with three representations (i.e., respectively defined in x-t, n-t and x-n coordinates) is tested, and macro-and micro-solutions on shock waves well agree with each other. In summary, this traffic stream model with the advantages of flexibility and efficiency has the good potential in level of service analysis and transportation planning. (C) 2016 Elsevier Ltd. All rights reserved.
机译:为了将微观驾驶行为与宏观对应关系(即基本图)联系起来,本研究提出了一种灵活的交通流模型,该模型是从稳态条件下的新型汽车跟随模型得出的。它的四个与驾驶行为相关的参数,即反应时间,镇静参数,与速度和间距相关的灵敏度,在塑造基本图时具有明显的效果。还详细分析了其边界条件和同类情况,并将其与其他两个模型(即纵向控制模型和智能驾驶员模型)进行了比较。特别是,这些模型公式和特性在拉格朗日坐标下提供了重新审视交通流并与欧拉坐标下的模型互补的新视角。基于来自广泛位置的真实数据,采用了一种结合了猴子算法和动态自适应的校准方法来校准该模型。结果表明,该模型具有很好的灵活性,可以拟合这些交通数据,并且比其他九个模型表现更好。最后,设计了一个具体的运输应用示例,在其中测试了三个关键参数对车辆轨迹和冲击波的影响,并以三种表示形式(即分别在xt,nt和xn坐标中定义)进行了测试,并对宏观和微观冲击波的解决方案彼此一致。总而言之,这种具有灵活性和效率优势的交通流模型在服务分析和运输计划水平上具有良好的潜力。 (C)2016 Elsevier Ltd.保留所有权利。

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