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Evaluating the impact of bike network indicators on cyclist safety using macro-level collision prediction models

机译:使用宏观碰撞预测模型评估自行车网络指标对骑车人安全的影响

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Many cities worldwide are recognizing the important role that cycling plays in creating green and livable communities. However, vulnerable road users such as cyclists are usually subjected to an elevated level of injury risk which discourages many road users to cycle. This paper studies cyclist-vehicle collisions at 134 traffic analysis zones in the city of Vancouver to assess the impact of bike network structure on cyclist safety. Several network indicators were developed using Graph theory and their effect on cyclist safety was investigated. The indicators included measures of connectivity, directness, and topography of the bike network. The study developed several macro-level (zonal) collision prediction models that explicitly incorporated bike network indicators as explanatory variables. As well, the models incorporated the actual cyclist exposure (bike kilometers travelled) as opposed to relying on proxies such as population or bike network length. The macro-level collision prediction models were developed using generalized linear regression and full Bayesian techniqueS, with and Without spatial effects. The models showed that cyclist collisions were positively associated with bike and vehicle exposure. The exponents of the exposure variables were less than one which supports the "safety in numbers" hypothesis. Moreover, the models showed positive associations between cyclist collisions and the bike network connectivity and linearity indicators. In contrast, negative associations were found between cyclist collisions and the bike network continuity and topography indicators. The spatial effects were statistically significant in all of the developed models. (C) 2016 Elsevier Ltd. All rights reserved.
机译:全球许多城市都认识到自行车在创建绿色宜居社区中所起的重要作用。但是,易受伤害的道路使用者(如骑自行车的人)通常承受较高的伤害风险,这会阻止许多道路使用者骑车。本文研究了温哥华市134个交通分析区域的骑车人与汽车的碰撞,以评估自行车网络结构对骑车人安全性的影响。利用图论开发了几种网络指标,并研究了它们对骑车人安全性的影响。指标包括自行车网络的连通性,直接性和地形的度量。该研究开发了几个宏观(区域)碰撞预测模型,这些模型明确将自行车网络指标纳入解释变量。同样,这些模型结合了实际的骑车人暴露(行驶的自行车公里数),而不是依靠人口或自行车网络长度之类的代理。宏观碰撞预测模型是使用广义线性回归和全贝叶斯技术开发的,具有和不具有空间效应。这些模型表明,骑车人的碰撞与自行车和车辆暴露呈正相关。暴露变量的指数小于支持“数字安全性”假设的指数。此外,模型显示了骑车人的碰撞与自行车网络的连通性和线性指标之间的正相关。相反,发现骑车人的碰撞与自行车网络的连续性和地形指标之间存在负相关关系。在所有已开发的模型中,空间效应在统计学上均具有显着意义。 (C)2016 Elsevier Ltd.保留所有权利。

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