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Macro-level analysis of bicycle safety: Focusing on the characteristics of both crash location and residence

机译:自行车安全性的宏观分析:着重于碰撞位置和驻留特性

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Over the last decade, bicycle ridership has been encouraged as a sustainable mode of transportation as it is economic and has less impact on the environment. Still, higher crash risk for bicyclists remains a deterrent for people to choose bicycling as their major mode of travel. As a first step in investigating bicycle safety, it is essential to identify not only the characteristics of the areas with the excessive number of bicycle crashes; but also those of the areas where crash-prone bicyclists reside. Therefore, this study aims to identify contributing factors for two subjects: (1) the number of bicycle crashes in the crash location's ZIP code and (2) the number of crash-involved bicyclists in their residence's ZIP. In order to achieve these objectives, a multivariate Bayesian Poisson lognormal CAR (conditional autoregressive) model was developed to identify the contributing factors for each subject. Regarding the model performance, the multivariate model outperformed its univariate counterpart in terms of DIC (deviance information criterion). Subsequently, hot zones for the two target zones were identified based on the modeling results. It is expected that practitioners are able to understand the contributing factors for bicycle crashes and identify hotspots from the results suggested in this study. In addition, they could implement safety countermeasures for the identified problematic locations to effectively reduce bicycle crashes.
机译:在过去的十年中,鼓励骑自行车作为一种可持续的交通方式,因为它既经济又对环境的影响较小。尽管如此,骑自行车的人更高的撞车风险仍然阻止人们选择骑自行车作为他们的主要出行方式。作为研究自行车安全性的第一步,不仅要识别出自行车撞车次数过多的区域的特征,而且还必须识别出其特征。以及容易发生撞车事故的地区。因此,本研究旨在确定两个主题的影响因素:(1)撞车地点的邮政编码中的自行车撞车次数,以及(2)住所邮政编码中的涉及撞车的骑自行车者的数量。为了实现这些目标,开发了多元贝叶斯泊松对数正态CAR(条件自回归)模型来识别每个受试者的影响因素。关于模型性能,在DIC(偏离信息标准)方面,多元模型优于其单变量模型。随后,根据建模结果确定了两个目标区域的热点区域。可以期望从业者能够了解导致自行车撞车的因素,并从本研究建议的结果中识别出热点。此外,他们可以对发现的问题位置实施安全对策,以有效减少自行车撞车事故。

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