Crash Distribution Dataset: Development and Validation for the Undivided Rural Roads in Oromia, Ethiopia

IF 1.1 Q3 TRANSPORTATION SCIENCE & TECHNOLOGY Transport and Telecommunication Journal Pub Date : 2022-02-01 DOI:10.2478/ttj-2022-0002
Alamirew Mulugeta Tola, T. A. Demissie, F. Saathoff, A. Gebissa
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引用次数: 1

Abstract

Abstract Predicting the number of crashes that may occur as a result of specific highway features is critical in evaluating different treatment or design alternatives. Since different highway geometric characteristics can influence crash distribution datasets, Highway Safety Manual’s (HSM’s) predictive method encourages users to predict crashes based on their severity and collision type proportions. This study used crash data from rural two-way two-lane road segments in the Oromia region over seven years to develop Oromia’s fixed crash distribution dataset on Interactive Highway Safety Design Model (IHSDM) software. The crash distribution dataset has two parts; the crash severity proportions and the collision type percentages. The developed Oromia’s fixed crash distribution dataset was compared and validated against the default HSM crash configuration. As a result, the Crash Prediction Model (CPM) evaluation results confirmed that the developed crash severity proportion (the first part of the crash distribution dataset) estimates are more accurate and closer to the observed values. Furthermore, the findings show that crashes in the Oromia region are severer than in the states where the HSM crash configuration was developed. According to the second part of the crash distribution dataset evaluation (collision type percentage), the developed fixed crash distribution dataset outperforms the default HSM configuration in most collision type proportions, but not in all. For instance, from the ten collision type proportions developed, Right-Angle and sides-wipe collision proportions are predicted more precisely by the default HSM configuration. This points to the need for developing collision type proportion (the second part of the crash distribution dataset) as a function rather than a fixed configuration for a better result, based on the availability of complete crash data (i.e. crash location). In general, the study revealed that in order to exploit the full potential of HSM’s predictive approach, researchers must develop a jurisdiction crash distribution dataset using local crash data. The methodology demonstrated in this study to develop the jurisdiction’s crash distribution dataset has been validated as true thus, safety practitioners are encouraged to adopt it.
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碰撞分布数据集:埃塞俄比亚奥罗米亚未分割农村道路的开发与验证
摘要在评估不同的处理方法或设计方案时,预测由于特定公路特征而可能发生的碰撞数量是至关重要的。由于不同的公路几何特征会影响碰撞分布数据集,《公路安全手册》(HSM)的预测方法鼓励用户根据严重程度和碰撞类型比例来预测碰撞。本研究使用奥罗米亚地区农村双向双车道路段7年来的碰撞数据,在交互式公路安全设计模型(IHSDM)软件上开发了奥罗米亚的固定碰撞分布数据集。崩溃分布数据集由两部分组成;碰撞严重程度比例和碰撞类型百分比。开发的Oromia固定崩溃分布数据集与默认HSM崩溃配置进行了比较和验证。因此,碰撞预测模型(CPM)评估结果证实,开发的碰撞严重程度比例(碰撞分布数据集的第一部分)估计更准确,更接近观测值。此外,研究结果表明,奥罗米亚地区的撞车事故比高速公路撞车配置开发的州更严重。根据碰撞分布数据集评估的第二部分(碰撞类型百分比),所开发的固定碰撞分布数据集在大多数碰撞类型比例上优于默认HSM配置,但并非全部。例如,从开发的十种碰撞类型比例中,直角和擦边碰撞比例可以通过默认HSM配置更精确地预测。这表明需要将碰撞类型比例(碰撞分布数据集的第二部分)开发为一个函数,而不是基于完整碰撞数据(即碰撞位置)的固定配置,以获得更好的结果。总的来说,研究表明,为了充分利用HSM预测方法的潜力,研究人员必须利用当地事故数据开发一个辖区事故分布数据集。本研究中展示的开发司法管辖区碰撞分布数据集的方法已被验证为正确,因此鼓励安全从业人员采用它。
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来源期刊
Transport and Telecommunication Journal
Transport and Telecommunication Journal TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
3.00
自引率
0.00%
发文量
21
审稿时长
35 weeks
期刊最新文献
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