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Applying fast and frugal tree heuristic algorithm to identify factors influencing crash severity of bicycle-vehicle crashes in Tamilnadu

机译:应用快速和节俭树启发式算法识别影响自行车车辆撞车撞击严重程度的因素

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Though bicycle as a mode of transport has many environmental and societal benefits as well as health benefits, bicyclists are one of the most vulnerable road users. According to the report by the Ministry of Road Transport and Highways (MoRTH, 2017), there is a sharp increase in the number of fatal victims in respect of bicyclists in 2017 over 2016. The number of cyclists killed jumped from 2585 in 2016 to 3559 in 2017, a 37.7% increase. In the present study, we present the analysis of the effect of the crash, geometric, environmental and cyclist characteristics on the bicycle-vehicle involved collisions by using the crash dataset of nine years (2009-2017) from Tamilnadu RADMS (Road Accident Data Management System) database with the application of fast and frugal tree (FFT) heuristic algorithm. The complete dataset (9978 crashes) was divided into two separate datasets: training data (6984 crashes) for the development of model and testing data (2984 crashes) for the performance evaluation. FFT algorithm identifies five major hues or variable attributes that influence the severity of bicycle crashes. The five major hues include the number of lanes, road separation, intersection, colliding vehicle type and road category. From the results of the present study, FFT acts as a complementary tool to other complex machine learning algorithms such as support vector machines, random forest, logistic regression and CART. The findings of the present study provide important insights for reducing the severity of bicycle-involved crashes at the planning and operations levels.
机译:虽然自行车作为一种运输方式,但骑自行车的人是最脆弱的道路用户之一。根据公路运输和公路部的报告(MOTHE,2017),2017年骑自行车的人的致命受害者数量急剧增加。骑自行车者的数量从2016年的2585年跳跃到3559 2017年,增加37.7%。在本研究中,我们通过使用九年(2009-2017)的碰撞数据集从Tamilnadu Radms(道路事故数据管理)分析了自行车车辆涉及碰撞的碰撞,几何,环境和骑自行车的特征的影响(道路事故数据管理系统)数据库具有快速和节俭树(FFT)启发式算法的应用。完整的数据集(9978崩溃)分为两个单独的数据集:培训数据(6984崩溃),用于开发模型和测试数据(2984崩溃),以进行性能评估。 FFT算法识别影响自行车崩溃严重性的五个主要色调或可变属性。五个主要色调包括车道,道路分离,交叉路口,碰撞车型和道路类别。从本研究的结果,FFT作为其他复杂机器学习算法的互补工具,如支持向量机,随机林,逻辑回归和推车。本研究的调查结果为减少涉及的自行车崩溃的严重程度提供了重要的见解,在规划和运营水平上减少了自行车碰撞的严重程度。

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