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A Bayesian ridge regression analysis of congestion's impact on urban expressway safety

机译:交通拥堵对城市高速公路安全影响的贝叶斯岭回归分析

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摘要

With the rapid growth of traffic in urban areas, concerns about congestion and traffic safety have been heightened. This study leveraged both Automatic Vehicle Identification (AVI) system and Microwave Vehicle Detection System (MVDS) installed on an expressway in Central Florida to explore how congestion impacts the crash occurrence in urban areas. Multiple congestion measures from the two systems were developed. To ensure more precise estimates of the congestion's effects, the traffic data were aggregated into peak and non-peak hours. Multicollinearity among traffic parameters was examined. The results showed the presence of multicollinearity especially during peak hours. As a response, ridge regression was introduced to cope with this issue. Poisson models with uncorrelated random effects, correlated random effects, and both correlated random effects and random parameters were constructed within the Bayesian framework. It was proven that correlated random effects could significantly enhance model performance. The random parameters model has similar goodness-of-fit compared with the model with only correlated random effects. However, by accounting for the unobserved heterogeneity, more variables were found to be significantly related to crash frequency. The models indicated that congestion increased crash frequency during peak hours while during non-peak hours it was not a major crash contributing factor. Using the random parameter model, the three congestion measures were compared. It was found that all congestion indicators had similar effects while Congestion Index (CI) derived from MVDS data was a better congestion indicator for safety analysis. Also, analyses showed that the segments with higher congestion intensity could not only increase property damage only (PDO) crashes, but also more severe crashes. In addition, the issues regarding the necessity to incorporate specific congestion indicator for congestion's effects on safety and to take care of the multicollinearity between explanatory variables were also discussed. By including a specific congestion indicator, the model performance significantly improved. When comparing models with and without ridge regression, the magnitude of the coefficients was altered in the existence of multicollinearity. These conclusions suggest that the use of appropriate congestion measure and consideration of multicolilnearity among the variables would improve the models and our understanding about the effects of congestion on traffic safety. (C) 2015 Elsevier Ltd. All rights reserved.
机译:随着城市地区交通的快速增长,人们对交通拥堵和交通安全的担忧日益加剧。这项研究利用安装在佛罗里达州中部高速公路上的自动车辆识别(AVI)系统和微波车辆检测系统(MVDS)来探讨拥堵如何影响市区的撞车事故。从这两个系统开发了多种拥塞措施。为了确保更精确地估计拥堵的影响,将交通数据汇总为高峰时间和非高峰时间。检查交通参数之间的多重共线性。结果表明,尤其在高峰时段,存在多重共线性。作为响应,引入了岭回归来解决此问题。在贝叶斯框架内构建了具有不相关的随机效应,相关的随机效应,相关的随机效应和随机参数的泊松模型。事实证明,相关的随机效应可以显着提高模型性能。与仅具有相关随机效应的模型相比,随机参数模型具有相似的拟合优度。但是,通过考虑未观察到的异质性,发现更多变量与碰撞频率显着相关。这些模型表明,交通拥堵增加了高峰时段的撞车频率,而在非高峰时段则不是撞车的主要因素。使用随机参数模型,比较了三种拥塞措施。发现所有拥塞指标具有相似的效果,而从MVDS数据得出的拥塞指数(CI)是用于安全性分析的更好的拥塞指标。此外,分析表明,拥塞强度较高的路段不仅会增加仅财产损失(PDO)崩溃,而且还会加剧更严重的崩溃。此外,还讨论了有关必须纳入特定的拥堵指标以解决拥堵对安全的影响以及注意解释变量之间的多重共线性的问题。通过包含一个特定的拥塞指标,模型性能得到了显着改善。比较具有和不具有岭回归的模型时,由于存在多重共线性,系数的大小发生了变化。这些结论表明,使用适当的拥堵措施并考虑变量之间的多重冲突性将改善模型,并提高我们对拥堵对交通安全影响的理解。 (C)2015 Elsevier Ltd.保留所有权利。

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