比较高速公路路段碰撞风险水平预测的机器学习技术

IF 1.8 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Safety Pub Date : 2023-05-20 DOI:10.3390/safety9020032
D. Nikolaou, Apostolos Ziakopoulos, Anastasios Dragomanovits, Julia Roussou, G. Yannis
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引用次数: 1

摘要

就每百万公里车辆伤亡事故而言,高速公路通常是最安全的道路环境;然而,鉴于那里发生的撞车事故的严重性,道路安全仍有改进的空间。本研究的目的是比较五种机器学习技术在预测高速公路路段碰撞风险水平方面的分类性能。为此,研究人员利用了668个高速公路路段的碰撞风险水平、驾驶行为指标和道路几何特征数据。将所利用的数据集分为训练子集和测试子集,比例分别为75%和25%。训练子集用于训练模型,而测试子集用于评估模型的性能。模型的响应变量是考虑的高速公路路段的碰撞风险水平,而预测因子是各种道路设计特征和自然驾驶行为指标。考虑的技术有逻辑回归、决策树、随机森林、支持向量机和k近邻。在5种技术中,随机森林模型的分类性能最好(总体准确率为89.3%,宏观平均精度为89.0%,宏观平均召回率为88.4%,宏观平均F1得分为88.6%)。此外,计算了Shapley加性解释,以协助对模型结果的解释。这项研究的发现特别有用,因为随机森林模型可以作为一种非常有前途的前瞻性道路安全工具,用于识别潜在的危险高速公路路段。
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Comparing Machine Learning Techniques for Predictions of Motorway Segment Crash Risk Level
Motorways are typically the safest road environment in terms of injury crashes per million vehicle kilometres; however, given the high severity of crashes occurring therein, there is still space for road safety improvements. The objective of this study is to compare the classification performance of five machine learning techniques for predictions of crash risk levels of motorway segments. To that end, data on crash risk levels, driving behaviour metrics, and road geometry characteristics of 668 motorway segments were exploited. The utilized dataset was divided into training and test subsets, with a proportion of 75% and 25%, respectively. The training subset was used to train the models, whereas the test subset was used for the evaluation of their performance. The response variable of the models was the crash risk level of the considered motorway segments, while the predictors were various road design characteristics and naturalistic driving behaviour metrics. The techniques considered were Logistic Regression, Decision Tree, Random Forest, Support Vector Machine, and K-Nearest Neighbours. Among the five techniques, the Random Forest model achieved the best classification performance (overall accuracy: 89.3%, macro-averaged precision: 89.0%, macro-averaged recall: 88.4%, macro-averaged F1 score: 88.6%). Moreover, the Shapley additive explanations were calculated in order to assist with the interpretation of the model’s outcomes. The findings of this study are particularly useful as the Random Forest model could be used as a highly promising proactive road safety tool for identifying potentially hazardous motorway segments.
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来源期刊
Safety
Safety Social Sciences-Safety Research
CiteScore
3.20
自引率
5.30%
发文量
71
审稿时长
7 weeks
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