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Stochastic Link Flow Model for Signalized Traffic Networks with Uncertainty in Demand

机译:随机链路流量模型,用于需求不确定性的信号交通网络

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In order to investigate the stochastic features in urban traffic dynamics, we propose a Stochastic Link Flow Model (SLFM) for signalized traffic networks with demand uncertainties. In the proposed model, the link traffic state is described using four different link state modes, and the probability for each link state mode is determined based on the stochastic link states. The SLFM model is expressed as a finite mixture approximation of the link state probabilities and the dynamic link flow models for all the four link state modes. Using data from microscopic traffic simulator SUMO, we illustrate that the proposed model can provide a reliable estimation of the link traffic states, and as well as good estimations on the link state uncertainties propagating within a signalized traffic network.
机译:为了研究城市交通动态的随机特征,我们提出了一种随机链路流模型(SLFM),用于具有需求不确定性的信号化交通网络。在所提出的模型中,使用四种不同的链路状态模式描述链路业务状态,并且基于随机链路状态确定每个链路状态模式的概率。 SLFM模型表示为链路状态概率的有限混合物和所有四个链路状态模式的动态链路流模型。使用来自微观流量模拟器SUMO的数据,我们示出了所提出的模型可以提供链路交通状态的可靠估计,以及关于在信号交通网络内传播的链路状态不确定性的良好估计。

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