Analysis of traffic rule violations among bike riders. A structural equation model

IF 0.7 Q4 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Operations Research and Decisions Pub Date : 2022-01-01 DOI:10.37190/ord220302
B. Adhikari, A. Behera, Rabindra Mahapatra, H. Das
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Abstract

Bikes are becoming an increasingly popular and reliable mode of transportation in developing countries because of their efficiency and ability to navigate through rough terrain and narrow roadways. Bikes are more vulnerable to road accidents and their riders’ safety is the main concern at present days. Hence, it is essential to reduce the possibility of accidents caused by bike riders. The main reason for bike accidents is bike rider behaviours in the form of traffic rules violations. The paper’s main aim is to categorize the importance of seven attributes on traffic rules violations, including bike rider behaviours, road features, ambient conditions, driving skills, type of license, bike age/tenure and riding without a safety device (helmet). Bike riders’ violations that can lead to an accident and the impact of attributes have been analyzed using the structural equation modelling (SEM) technique. To analyze these attributes, 450 bike riders have been interviewed in Bhubaneswar, India. It has been concluded that bike rider behaviours are the most significant attribute of violations. Since most bike riders are young, with low income and education, paying more attention to their training and education before issuing a driving license is necessary. In addition, those who do not use safety devices (helmets) are more susceptible to committing violations. This relates to the lack of enough control and enforcement in developing cities. Also, it shows that the current traffic fines for not using safety devices (helmets) are not enforced enough. Finally, considering this research’s outcomes can help minimize traffic rules violations among bike riders, which is a step towards safer roads.
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自行车骑行者交通违章行为分析。结构方程模型
在发展中国家,自行车正成为一种越来越受欢迎和可靠的交通方式,因为它们效率高,而且能够通过崎岖的地形和狭窄的道路。自行车更容易发生交通事故,骑自行车的人的安全是目前主要关注的问题。因此,减少由骑自行车的人引起的事故的可能性是至关重要的。自行车事故的主要原因是骑自行车的人违反交通规则的行为。本文的主要目的是对七个属性对交通规则违规的重要性进行分类,包括骑自行车的人的行为,道路特征,环境条件,驾驶技能,许可证类型,自行车的年龄/使用期和骑自行车没有安全装置(头盔)。利用结构方程建模(SEM)技术,分析了自行车骑行者的违规行为对事故的影响及其属性。为了分析这些特征,我们在印度布巴内斯瓦尔采访了450名骑自行车的人。结果表明,骑自行车者的行为是最显著的违规属性。由于大多数骑自行车的人都是年轻人,收入低,受教育程度低,因此在颁发驾驶执照之前,更多地关注他们的培训和教育是必要的。此外,不使用安全装置(头盔)的人更容易发生违规行为。这与发展中城市缺乏足够的控制和执法有关。此外,它还表明,目前对不使用安全装置(头盔)的交通罚款力度不够。最后,考虑到这项研究的结果可以帮助减少骑自行车者违反交通规则的行为,这是迈向更安全道路的一步。
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来源期刊
Operations Research and Decisions
Operations Research and Decisions OPERATIONS RESEARCH & MANAGEMENT SCIENCE-
CiteScore
1.00
自引率
25.00%
发文量
16
审稿时长
15 weeks
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