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On the stochastic fundamental diagram for freeway traffic: Model development, analytical properties, validation, and extensive applications

机译:在高速公路交通的随机基本图上:模型开发,分析特性,验证和广泛的应用

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In this research, we apply a new calibration approach to generate stochastic traffic flow fundamental diagrams. We first prove that the percentile based fundamental diagrams are obtainable based on the proposed model. We further prove the proposed model has continuity, differentiability and convexity properties so that it can be easily solved by Gauss Newton method. By selecting different percentile values from 0 to 1, the speed distributions at any given densities can be derived. The model has been validated based on the GA400 data and the calibrated speed distributions perfectly fit the speed-density data. This proposed methodology has wide applications. First, new approaches can be proposed to evaluate the performance of calibrated fundamental diagrams by taking into account not only the residual but also ability to reflect the stochasticity of samples. Secondly, stochastic fundamental diagrams can be used to develop and evaluate traffic control strategies. In particular, the proposed stochastic fundamental diagram is applicable to model and optimize the connected and automated vehicles at the macroscopic level with an objective to reduce the stochasticity of traffic flow. Last but not the least, this proposed methodology can be applied to generate the stochastic models for most regression models with scattered samples. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在这项研究中,我们应用了一种新的校准方法来生成随机交通流基本图。我们首先证明,基于提出的模型可以得到基于百分位数的基础图。我们进一步证明了该模型具有连续性,可微性和凸性,因此可以通过高斯牛顿法轻松求解。通过从0到1选择不同的百分数值,可以得出任何给定密度下的速度分布。该模型已根据GA400数据进行了验证,并且校准后的速度分布完全适合速度密度数据。该提议的方法具有广泛的应用。首先,可以提出新的方法来评估校准的基本图的性能,不仅要考虑残差,还要考虑反映样本随机性的能力。其次,可以使用随机基本图来开发和评估交通控制策略。特别地,所提出的随机基本图适用于在宏观水平上对连接的和自动的车辆进行建模和优化,以降低交通流的随机性。最后但并非最不重要的一点是,该建议的方法可以应用于为大多数具有分散样本的回归模型生成随机模型。 (C)2017 Elsevier Ltd.保留所有权利。

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