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Full Bayesian evaluation of the safety effects of reducing the posted speed limit in urban residential area

机译:降低城市居民区张贴速度限制的安全影响的完整贝叶斯评估

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Full Bayesian (FB) before-after evaluation is a newer approach than the empirical Bayesian (EB) evaluation in traffic safety research. While a number of earlier studies have conducted univariate and multivariate FB before-after safety evaluations and compared the results with the EB method, often contradictory conclusions have been drawn. To this end, the objectives of the current study were to (i) perform a before-after safety evaluation using both the univariate and multivariate FB methods in order to enhance our understanding of these methodologies, (ii) perform the EB evaluation and compare the results with those of the FB methods and (iii) apply the FB and EB methods to evaluate the safety effects of reducing the urban residential posted speed limit (PSL) for policy recommendation. In addition to three years of crash data for both the before and after periods, traffic volume, road geometry and other relevant data for both the treated and reference sites were collected and used. According to the model goodness-of-fit criteria, the current study found that the multivariate FB model for crash severities outperformed the univariate FB models. Moreover, in terms of statistical significance of the safety effects, the EB and FB methods led to opposite conclusions when the safety effects were relatively small with high standard deviation. Therefore, caution should be taken in drawing conclusions from the EB method. Based on the FB method, the PSL reduction was found effective in reducing crashes of all severities and thus is recommended for improving safety on urban residential collector roads. (C) 2015 Elsevier Ltd. All rights reserved.
机译:在交通安全研究中,全面贝叶斯(FB)前后评估是一种比经验贝叶斯(EB)评估新的方法。尽管许多较早的研究在安全性评估前后进行了单变量和多变量FB并将结果与​​EB方法进行了比较,但经常得出矛盾的结论。为此,当前研究的目标是(i)使用单变量和多变量FB方法进行事前安全性评估,以加深我们对这些方法的理解,(ii)进行EB评估并比较结果与FB方法的结果相同;(iii)应用FB和EB方法来评估降低城市居民张贴限速(PSL)的安全效果,以提出政策建议。除了之前和之后三年的碰撞数据外,还收集并使用了经过处理和参照地点的交通量,道路几何形状和其他相关数据。根据模型拟合优度标准,当前研究发现,用于碰撞严重性的多元FB模型优于单变量FB模型。此外,就安全效果的统计意义而言,当安全效果相对较小且标准差较高时,EB和FB方法得出相反的结论。因此,在从EB方法得出结论时应谨慎行事。基于FB方法,发现降低PSL可有效减少所有严重事故,因此建议提高城市居民集散道路的安全性。 (C)2015 Elsevier Ltd.保留所有权利。

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