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An application of Bayesian multilevel model to evaluate variations in stochastic and dynamic transition of traffic conditions

机译:贝叶斯多级模型在交通状况随机和动态转型中评价变化的应用

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摘要

Abstract This study seeks to investigate the variations associated with lane lateral locations and days of the week in the stochastic and dynamic transition of traffic regimes (DTTR). In the proposed analysis, hierarchical regression models fitted using Bayesian frameworks were used to calibrate the transition probabilities that describe the DTTR. Datasets of two sites on a freeway facility located in Jacksonville, Florida, were selected for the analysis. The traffic speed thresholds to define traffic regimes were estimated using the Gaussian mixture model (GMM). The GMM revealed that two and three regimes were adequate mixture components for estimating the traffic speed distributions for Site 1 and 2 datasets, respectively. The results of hierarchical regression models show that there is considerable evidence that there are heterogeneity characteristics in the DTTR associated with lateral lane locations. In particular, the hierarchical regressions reveal that the breakdown process is more affected by the variations compared to other evaluated transition processes with the estimated intra-class correlation (ICC) of about 73%. The transition from congestion on-set/dissolution (COD) to the congested regime is estimated with the highest ICC of 49.4% in the three-regime model, and the lowest ICC of 1% was observed on the transition from the congested to COD regime. On the other hand, different days of the week are not found to contribute to the variations (the highest ICC was 1.44%) on the DTTR. These findings can be used in developing effective congestion countermeasures, particularly in the application of intelligent transportation systems, such as dynamic lane-management strategies.
机译:摘要本研究旨在探讨在交通制度(DTTR)的随机动态过渡一周的车道外侧的位置和相关天的变化。在所提出的分析,分层回归模型使用贝叶斯框架被用于校准描述该DTTR转移概率安装。在位于佛罗里达州杰克逊维尔高速公路设施两个网站的数据集,被选作分析。交通速度阈值来限定流量制度分别使用高斯混合模型(GMM)来估计。所述GMM显示,两个和三个制度是用于估算交通速度分布分别站点1和2点的数据集,充足的混合物组分。分层回归模型的结果表明,有大量证据表明,有在DTTR与横向车道位置相关联的异质性特征。具体地讲,分层回归表明击穿过程更受变化相比具有约73%的所估计的组内相关(ICC)其他评价过渡过程。从拥塞的过渡上设定的/溶解(COD)的拥塞机制估计用的49.4%在三政权模型最高ICC,并且观察在过渡从拥塞COD制度的1%的最低ICC 。在另一方面,没有发现每周不同的日子作出贡献的变化上DTTR(最高ICC为1.44%)。这些研究结果可以制定有效对策拥挤,特别是在智能交通系统,如动态车道管理策略的应用中使用。

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