Development of models to study traffic accidents on the final sections of access roads to the cities: a case study of three major Iranian cities

Q2 Engineering Archives of Transport Pub Date : 2021-09-30 DOI:10.5604/01.3001.0015.2646
M. Fallah Tafti, R. Roshani
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引用次数: 2

Abstract

The final sections of main access roads to the cities require especial attention as the frequency of accidents in these road sections are considerably higher than other parts of interurban roads. These road sections operate as an interface between the rural roads and urban streets. The previous researches available on this subject are limited and they have also mainly focused on a narrow range of factors contributing to the accidents in these areas. The main contribution of this research is to consider a relatively comprehensive range of potential factors , and to examine their impacts through the development and comparison of both conventional probabilistic models and Artificial Neural Network (ANN) models. For this purpose, information related to the main access roads of three major Iranian cities were collected. This information consisted of accident frequency data together with the field observations of traffic characteristics, road-way conditions and roadside features of these roads. Various ANN and probabilistic models were developed. The frequency of accidents, i.e. fatal, injured, or damaged accidents, was considered as the output of the developed models. The results indicated that a hybrid of ANN models, each comprised of 10 input variables representing traffic, roadway and roadside conditions, outperformed several probabilistic models, i.e. Poisson, Negative binomial, Zero-truncated Poisson, and Zero-truncated Negative Binomial models, also developed under similar conditions in this study. Moreo-ver, effective roadway width, roadway lighting condition, the standard deviation of vehicles speed, percentage of drivers violating the speed limit, average annual daily traffic, percentage of heavy goods vehicles, the density of road-side commercial and industrial landuses, the density of median U-turns, the density of local access roads, and the effective width of the left-side shoulder were identified as the most effective factors contributing to the accidents in these areas. The developed ANN model can be used as a tool to predict accident rates in these road sections, and to estimate a potential reduction in the accident rates, following any improvements in the major factors contributing to the traffic accidents in these areas.
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发展模型以研究通往城市的道路最后路段的交通事故:对伊朗三个主要城市的个案研究
通往城市的主要道路的最后一段需要特别注意,因为这些路段的事故频率比城市间道路的其他部分要高得多。这些路段是农村道路和城市街道之间的接口。以往关于这一主题的研究是有限的,他们也主要集中在这些地区造成事故的狭窄范围的因素。本研究的主要贡献是考虑了相对全面的潜在因素,并通过传统概率模型和人工神经网络(ANN)模型的发展和比较来检查它们的影响。为此目的,收集了有关伊朗三个主要城市主要通道的资料。这些信息包括事故频率数据,以及对这些道路的交通特征、道路状况和路边特征的实地观察。开发了各种人工神经网络和概率模型。事故的频率,即致命、受伤或损坏事故,被认为是所开发模型的输出。结果表明,由10个代表交通、道路和路边状况的输入变量组成的人工神经网络混合模型优于本研究在类似条件下开发的几种概率模型,即泊松模型、负二项模型、零截断泊松模型和零截断负二项模型。有效道路宽度、道路照明条件、车辆速度标准差、超速驾驶比例、年平均日交通量、重型货车百分比、路边商业和工业用地密度、中位u型弯道密度、局部通道密度和左肩有效宽度是造成这些地区交通事故的最有效因素。开发的人工神经网络模型可以用作预测这些路段事故率的工具,并在这些地区导致交通事故的主要因素得到改善后,估计事故率的潜在降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Archives of Transport
Archives of Transport Engineering-Automotive Engineering
CiteScore
2.50
自引率
0.00%
发文量
26
审稿时长
24 weeks
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