Models for ranking railway crossings for safety improvement

Sandra Kasalica, M. Obradović, A. Blagojevic, D. Jeremić, M. Vuković
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引用次数: 6

Abstract

Analysis of high-risk locations, accident frequency and severity for railway crossing is necessary in order to improve the safety and consequently diminish the number of accidents and their severity. In order to extract the necessary parameters that quantify the risk associated with railway crossings in Serbia, we have carefully analyzed available statistical models commonly used in this kind of studies. A zeroinflated Poisson model and a multinomial logistic model were used for the assessment of accident frequency and accident severity respectively. In order to quantitatively evaluate the risk, a well known measure – total risk was modified and a new measure for risk – empirical risk was introduced. The road sign warning device (p = 2.76 ∙ 10), exposure to traffic (p = 4.3 ∙ 10), and maximum train speed at a given crossing (p = 1.36 ∙ 10) were significantly associated with probability of accident frequency and significantly influenced the expected total number of fatalities or injuries caused by traffic accidents.
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铁路道口安全改进排序模型
有必要对铁路道口的高风险地点、事故频率和严重程度进行分析,以提高安全性,从而减少事故数量及其严重程度。为了提取量化塞尔维亚铁路道口相关风险的必要参数,我们仔细分析了这类研究中常用的可用统计模型。分别使用零膨胀泊松模型和多项式逻辑模型来评估事故频率和事故严重程度。为了定量评估风险,修改了一个众所周知的衡量标准——总风险,并引入了一个新的风险衡量标准——经验风险。路标警告装置(p=2.76∙10)、暴露在交通中(p=4.3∙10。
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来源期刊
CiteScore
7.90
自引率
0.00%
发文量
25
审稿时长
15 weeks
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