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首页> 外文期刊>Accident Analysis & Prevention >Applying a random parameters Negative Binomial Lindley model to examine multi-vehicle crashes along rural mountainous highways in Malaysia
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Applying a random parameters Negative Binomial Lindley model to examine multi-vehicle crashes along rural mountainous highways in Malaysia

机译:应用随机参数负二项式Lindley模型检查马来西亚农村山区公路上的多车碰撞

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Road safety in rural mountainous areas is a major concern as mountainous highways represent a complex road traffic environment due to complex topology and extreme weather conditions and are associated with more severe crashes compared to crashes along roads in flatter areas. The use of crash modelling to identify crash contributing factors along rural mountainous highways suffers from limitations in data availability, particularly in developing countries like Malaysia, and related challenges due to the presence of excess zero observations. To address these challenges, the objective of this study was to develop a safety performance function for multi-vehicle crashes along rural mountainous highways in Malaysia. To overcome the data limitations, an in-depth field survey, in addition to utilization of secondary data sources, was carried out to collect relevant information including roadway geometric factors, traffic characteristics, real-time weather conditions, cross-sectional elements, roadside features, and spatial characteristics. To address heterogeneity resulting from excess zeros, three specialized modelling techniques for excess zeros including Random Parameters Negative Binomial (RPNB), Random Parameters Negative Binomial - Lindley (RPNB-L) and Random Parameters Negative Binomial - Generalized Exponential (RPNB-GE) were employed. Results showed that the RPNB-L model outperformed the other two models in terms of prediction ability and model fit. It was found that heavy rainfall at the time of crash and the presence of minor junctions along mountainous highways increase the likelihood of multi-vehicle crashes, while the presence of horizontal curves along a steep gradient, the presence of a passing lane and presence of road delineation decrease the likelihood of multi-vehicle crashes. Findings of this study have significant implications for road safety along rural mountainous highways, particularly in the context of developing countries.
机译:农村山区的道路安全是一个主要问题,因为山区公路由于复杂的拓扑结构和极端天气条件而代表着一个复杂的道路交通环境,并且与平坦地区道路上的撞车事故相比,撞车事故更为严重。使用碰撞模型来识别农村山区公路沿线的碰撞成因受到数据可用性的限制,尤其是在像马来西亚这样的发展中国家,以及由于存在过多的零观测值而带来的相关挑战。为了应对这些挑战,本研究的目的是为马来西亚农村山区公路沿线的多车辆碰撞开发安全性能功能。为了克服数据的局限性,除了利用辅助数据源之外,还进行了深入的现场调查,以收集相关信息,包括道路几何因素,交通特征,实时天气状况,横断面要素,路边特征以及空间特征。为了解决由多余零产生的异质性,对多余零使用了三种专门的建模技术,包括随机参数负二项式(RPNB),随机参数负二项式-Lindley(RPNB-L)和随机参数负二项式-广义指数(RPNB-GE)。 。结果表明,在预测能力和模型拟合方面,RPNB-L模型优于其他两个模型。研究发现,撞车时的暴雨和山区公路上小的路口的出现增加了多辆车撞车的可能性,而沿陡峭坡度的水平曲线,通过车道和道路的存在轮廓线减少了多辆车撞车的可能性。这项研究的发现对农村山区公路的道路安全具有重要意义,特别是在发展中国家的情况下。

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