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Investigation of key factors for accident severity at railroad grade crossings by using a logit model

机译:用logit模型研究铁路平交道口事故严重程度的关键因素

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Although several studies have used logit or probit models and their variants to fit data of accident severity on roadway segments, few have investigated accident severity at a railroad grade crossing (RGC). Compared to accident risk analysis in terms of accident frequency and severity of a highway system, investigation of the factors contributing to traffic accidents at an RGC may be more complicated because of additional highway-railway interactions. Because the proportional odds assumption was violated while fitting cumulative logit modeled by the proportional odds models with stepwise variable selection to ordinal accident severity data collected at 592 RGCs in Taiwan as suggested by Strokes et al. [Strokes, M.E. Davis, C.S. Koch, G.G. 2000. Categorical Data Analysis Using the SAS System, second ed. SAS Institute, Inc. Cary, NC, p. 249], a generalized logit model with stepwise variable selection was used instead to identify explanatory variables (factors or covariates) that were significantly associated with the severity of collisions. Hence, the fitted model was used to predict the level of accident severity, given a set of values in the explanatory variables. Number of daily trains, highway separation, number of daily trucks, obstacle detection device, and approaching crossing markings significantly affected levels of accident severity at an RGC (p-value = 0.0009, 0.0008, 0.0112, 0.0017, and 0.0003, respectively). Finally, marginal effect analysis on the number of daily trains and law enforcement camera was conducted to evaluate the effect of the number of daily trains and presence of a law enforcement camera on the potential accident severity.
机译:尽管一些研究已经使用logit或probit模型及其变体来拟合道路段事故严重性的数据,但是很少有人研究过铁路平交道口(RGC)的事故严重性。与就公路系统的事故频率和严重性而言的事故风险分析相比,在RGC上对导致交通事故的因素进行调查可能会更加复杂,因为公路与铁路之间存在更多的相互作用。因为违反了按比例赔率的假设,而根据Strokes等人的建议,对由按比例赔率模型建模的累积logit进行逐步变量选择,以拟合台湾592个RGC收集的有序事故严重性数据。 [Strokes,M.E。Davis,C.S。Koch,G.G。 2000年。使用SAS系统进行分类数据分析,第二版。 SAS Institute,Inc.,卡里,北卡罗来纳州,p。 [249],而是使用带有逐步变量选择的广义logit模型来识别与碰撞的严重程度显着相关的解释变量(因子或协变量)。因此,给定解释变量中的一组值,拟合模型用于预测事故严重程度。每天的火车数量,高速公路的间隔,每天的卡车数量,障碍物检测设备和接近的交叉口标志严重影响了RGC的事故严重程度(p值分别为0.0009、0.0008、0.0112、0.0017和0.0003)。最后,对每日列车数量和执法摄像机进行了边际效应分析,以评估每日列车数量和执法摄像机的存在对潜在事故严重性的影响。

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