基于位置关系和随机森林的汽车与电动自行车碰撞现场伤害严重程度评估模型

IF 1 4区 数学 Q1 MATHEMATICS Electronic Research Archive Pub Date : 2023-01-01 DOI:10.3934/era.2023173
Ye Yu, Zhiyuan Liu
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引用次数: 0

摘要

弱势道路使用者通常更容易受到致命伤害。准确、快速地评估事故现场VRU损伤严重程度,可为应急响应决策提供及时支持。然而,在事故现场评估VRU伤害严重程度通常需要医学知识和医疗设备。很少有研究探索利用现场位置关系评估伤害严重程度的可能性,这可能为现场运输专业人员评估事故严重程度提供新的视角。基于事故现场汽车、电动自行车和骑车人最终休息位置之间的关系,提出了基于数据驱动的汽车-电动自行车事故现场伤害严重程度评估模型。利用随机森林从事故参与者的现场位置关系中学习事故特征,评估骑车人的受伤严重程度。为了更准确地反映预测变量的重要程度,采用了条件排列重要度来说明预测变量之间的相关性。利用模拟的汽车与电动自行车碰撞数据对该模型进行了验证。结果表明,该模型在识别致命事故和非致命事故方面具有良好的总体精度和平衡性。部分信息下的模型性能证实,在评估损伤严重程度时,电动自行车的位置信息比骑车人的位置信息更重要。
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A data-driven on-site injury severity assessment model for car-to-electric-bicycle collisions based on positional relationship and random forest
Vulnerable road users (VRUs) are usually more susceptible to fatal injuries. Accurate and rapid assessment of VRU injury severity at the accident scene can provide timely support for decision-making in emergency response. However, evaluating VRU injury severity at the accident scene usually requires medical knowledge and medical devices. Few studies have explored the possibility of using on-site positional relationship to assess injury severity, which could provide a new perspective for on-site transportation professionals to assess accident severity. This study proposes a data-driven on-site injury severity assessment model for car-to-electric-bicycle accidents based on the relationship between the final resting positions of the car, electric bicycle and cyclist at the accident scene. Random forest is employed to learn the accident features from the at-scene positional relationship among accident participants, by which injury severity of the cyclist is assessed. Conditional permutation importance, which can account for correlation among predictor variables, is adopted to reflect the importance of predictor variables more accurately. The proposed model is demonstrated using simulated car-to-electric-bicycle collision data. The results show that the proposed model has good performance in terms of overall accuracy and is balanced in recognizing both fatal and non-fatal accidents. Model performance under partial information confirms that the position information of the electric bicycle is more important than the position information of the cyclist in assessing injury severity.
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CiteScore
1.30
自引率
12.50%
发文量
170
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