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首页> 外文期刊>Journal of Safety Research >Random parameter models for accident prediction on two-lane undivided highways in India
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Random parameter models for accident prediction on two-lane undivided highways in India

机译:印度两车道未分割公路事故预测的随机参数模型

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摘要

Introduction: Generalized linear modeling (GLM), with the assumption of Poisson or negative binomial error structure, has been widely employed in road accident modeling. A number of explanatory variables related to traffic, road geometry, and environment that contribute to accident occurrence have been identified and accident prediction models have been proposed. The accident prediction models reported in literature largely employ the fixed parameter modeling approach, where the magnitude of influence of an explanatory variable is considered to be fixed for any observation in the population. Similar models have been proposed for Indian highways too, which include additional variables representing traffic composition. The mixed traffic on Indian highways comes with a lot of variability within, ranging from difference in vehicle types to variability in driver behavior. This could result in variability in the effect of explanatory variables on accidents across locations. Random parameter models, which can capture some of such variability, are expected to be more appropriate for the Indian situation. Method: The present study is an attempt to employ random parameter modeling for accident prediction on two-lane undivided rural highways in India. Three years of accident history, from nearly 200 km of highway segments, is used to calibrate and validate the models. Results: The results of the analysis suggest that the model coefficients for traffic volume, proportion of cars, motorized two-wheelers and trucks in traffic, and driveway density and horizontal and vertical curvatures are randomly distributed across locations. Conclusions: The paper is concluded with a discussion on modeling results and the limitations of the present study.
机译:简介:广义线性建模(GLM)在具有泊松或负二项式误差结构的前提下,已广泛应用于道路事故建模。已经识别出许多与交通,道路几何形状和环境有关的,有助于事故发生的解释性变量,并提出了事故预测模型。文献中报道的事故预测模型在很大程度上采用了固定参数建模方法,对于人口中的任何观察,解释变量的影响大小被认为是固定的。也已经为印度高速公路提出了类似的模型,其中包括代表交通组成的其他变量。印度高速公路上的混合交通在内部具有很大的可变性,从车辆类型的差异到驾驶员行为的可变性不等。这可能会导致解释变量对不同地点的事故的影响存在差异。可以捕获一些这种可变性的随机参数模型,预计将更适合印度的情况。方法:本研究是尝试将随机参数模型用于印度两车道未分割农村公路的事故预测。来自近200公里高速公路段的三年事故历史被用于校准和验证模型。结果:分析结果表明,交通量,汽车,机动两轮车和卡车在交通中的比例以及车道密度以及水平和垂直曲率的模型系数随机分布在各个位置。结论:本文最后讨论了建模结果和本研究的局限性。

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