Development of crash prediction models by assessing the role of perpetrators and victims: a comparison of ANN & logistic model using historical crash data.

IF 2.3 4区 医学 Q2 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Malaya Mohanty, Rachita Panda, Srinivasa Rao Gandupalli, Didriksha Sonowal, Muskan Muskan, Riya Chakraborty, Mukund R Dangeti
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引用次数: 7

Abstract

Road traffic injuries cost countries 3% of their annual GDP. In developing countries like India, every year around 150,000 people die on roads. The type of vehicles involved in a crash contribute majorly to the outcome of casualty (injury/death). Barring few studies, literature are less regarding the role of vehicle as perpetrator and victim on road crash fatalities. Historical crash data has been used in the present study to examine the role of vehicles (both as perpetrator & victim). The study reveals that victim's effect is more as compared to perpetrator/accused for determining the outcome of crash. Heavy vehicles as perpetrator, and self-hitting vehicles along with pedestrians as victims have higher fatality rates. Binary logistic regression and artificial neural network (ANN) has been utilized for developing prediction models. Binary logistic model predicted around 75% of outcomes correctly with default cut-off value (0.5). However, based on reported crash data, where 19% of total crashes lead to deaths, 0.19 has been proposed as cut-off value which increases the accuracy of the predictions. Accuracy of ANN technique directly depends on the number of crashes reported for a definite pair of perpetrator and victim and the type of validation technique used (Holdback/K-Fold) along with the type of hidden layer chosen for the study based on different types of sigmoid activation function. ROC curves in ANN suggest that the analysis can predict 75% of the outcomes which can be increased by deleting the pairs of vehicles which are present/have occurred in very less number. A comparison has been made between the two techniques based on their advantages and limitations. The developed models can be used as safety indicators based on composition of traffic flow on urban roads.

通过评估肇事者和受害者的角色来开发碰撞预测模型:使用历史碰撞数据的ANN和logistic模型的比较。
道路交通伤害造成的损失占各国年度国内生产总值的3%。在印度等发展中国家,每年大约有15万人死于交通事故。碰撞中涉及的车辆类型主要影响伤亡(受伤/死亡)的结果。除了少数研究外,文献较少考虑车辆作为肇事者和受害者在道路交通事故死亡中的作用。在本研究中使用了历史碰撞数据来检查车辆的角色(作为肇事者和受害者)。研究表明,与肇事者/被告相比,受害者对事故结果的影响更大。肇事者是重型车辆,受害者是自撞车辆和行人,死亡率更高。二元逻辑回归和人工神经网络(ANN)被用于建立预测模型。二元逻辑模型在默认临界值(0.5)下正确预测了约75%的结果。然而,根据报告的事故数据,总事故中有19%导致死亡,建议将0.19作为临界值,以提高预测的准确性。人工神经网络技术的准确性直接取决于对确定的肇事者和受害者报告的崩溃次数、使用的验证技术类型(Holdback/K-Fold)以及基于不同类型的s型激活函数为研究选择的隐藏层类型。人工神经网络中的ROC曲线表明,分析可以预测75%的结果,可以通过删除存在/已经出现的车辆对来增加结果。根据这两种技术的优点和局限性,对它们进行了比较。所建立的模型可以作为基于城市道路交通流构成的安全指标。
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来源期刊
International Journal of Injury Control and Safety Promotion
International Journal of Injury Control and Safety Promotion PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
4.40
自引率
13.00%
发文量
48
期刊介绍: International Journal of Injury Control and Safety Promotion (formerly Injury Control and Safety Promotion) publishes articles concerning all phases of injury control, including prevention, acute care and rehabilitation. Specifically, this journal will publish articles that for each type of injury: •describe the problem •analyse the causes and risk factors •discuss the design and evaluation of solutions •describe the implementation of effective programs and policies The journal encompasses all causes of fatal and non-fatal injury, including injuries related to: •transport •school and work •home and leisure activities •sport •violence and assault
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