Modelling risky driving behaviour

IF 2.1 4区 工程技术 Q3 TRANSPORTATION European Journal of Transport and Infrastructure Research Pub Date : 2019-09-23 DOI:10.18757/EJTIR.2019.19.3.4385
Gila Albert, S. Bekhor
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Abstract

This paper aims to demonstrate that advanced technique of modelling may provide insights and improve our understanding of driver behavior in risky decision-making situations. The paper introduces a Hybrid choice model in order to explain the overtaking decision on two-lane highways, which is well known as a risky decision in the safety literature. This model integrates a latent variable model and an overtaking choice model by combining their measurement and structural equations. Specifically, the paper investigates the role of four personality latent variables: Thrill and Adventure Seeking, Boredom Susceptibility, Geographic Ability, and Driving Anger. Respondents to a web-based survey ranked their likelihood to overtake on two-lane highways; two scenarios were captured via short videos: the first presenting a straight section of a road with good visibility, and the second approaching a curve with reduced visibility. Several indicators were collected via self-reported questionnaire. Results indicate that, two out of the four personality latent variables investigated, Thrill and Adventure Seeking and Geographic Ability provide significant explanation for overtaking decision. Both of them are positively correlated with higher risky overtaking behavior. The Hybrid model, by considering latent variables alongside observable variables and attributes of the decision, enhances the comprehension of overtaking behaviour, and therefore may be deployed for explaining other decisions related to risky driving behaviour.
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模拟危险驾驶行为
本文旨在证明先进的建模技术可以提供见解,并提高我们对风险决策情况下驾驶员行为的理解。本文引入混合选择模型来解释双车道公路上的超车决策,这是安全文献中众所周知的风险决策。该模型将潜在变量模型和超车选择模型相结合,将两者的测量方程和结构方程相结合。具体而言,本文研究了四个人格潜在变量:刺激与冒险寻求、无聊敏感性、地理能力和驾驶愤怒。一项网络调查的受访者对他们在双车道高速公路上超车的可能性进行了排名;通过短视频捕捉到两种场景:第一个场景呈现的是能见度较好的直线路段,第二个场景呈现的是能见度较低的弯道。通过自我报告问卷收集多项指标。结果表明,在被调查的四个人格潜变量中,刺激和冒险寻求和地理能力两个变量对超车决策有显著的解释作用。两者都与高风险超车行为呈正相关。混合模型通过考虑潜在变量和可观察变量以及决策属性,增强了对超车行为的理解,因此可以用于解释与危险驾驶行为相关的其他决策。
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来源期刊
CiteScore
3.80
自引率
0.00%
发文量
0
审稿时长
30 weeks
期刊介绍: The European Journal of Transport and Infrastructure Research (EJTIR) is a peer-reviewed scholarly journal, freely accessible through the internet. EJTIR aims to present the results of high-quality scientific research to a readership of academics, practitioners and policy-makers. It is our ambition to be the journal of choice in the field of transport and infrastructure both for readers and authors. To achieve this ambition, EJTIR distinguishes itself from other journals in its field, both through its scope and the way it is published.
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