卢旺达道路交通碰撞预测模型的监督机器学习算法比较

IF 1 4区 工程技术 Q4 ENGINEERING, CIVIL
Gatesi Jean de Dieu, Shuai Bin, Wencheng Huang, Ntakiyemungu Mathieu
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引用次数: 0

摘要

随着国家的发展,各种交通方式迅速增长,道路交通事故也随之发生。卢旺达还面临道路交通事故严重程度的同样挑战,死亡人数每年都在逐步增加。为了克服这些挑战,该研究的重点是比较八种监督机器学习算法的分类性能,以便可视化哪一种算法最能预测卢旺达的坠机严重程度,并确定潜在的坠机影响因素。从2010年到2022年,道路交通碰撞、注册车辆和AADT的定量数据集被使用。ML算法包括LR、SVM、NB、K-NN、RF、DT、LBR和J48。模型结果表明,RF、DT、J48、LBR和K-NN 5种分类器的准确率均在80%以上。在卢旺达,RF预测坠机严重程度的能力最高,准确率超过97%。最确定的影响因素是AADT、注册车辆、碰撞原因和涉及的车辆。模型结果可为道路基础设施规划设计中的道路安全决策者提供有用的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of supervised machine learning algorithms for road traffic crash prediction models in Rwanda
As the country developed, and there was a rapid growth of various modes of transport, as well as the occurrence of road traffic crashes. Rwanda also faced the same challenges of road traffic crash severity, in which every year the number of fatalities increased progressively. To overcome these challenges, the study has focused on comparing the classification performance of eight supervised machine learning algorithms in order to visualize which is the best to predict crash severity and identify the potential crash-influential factors in Rwanda. The quantitative datasets of road traffic crashes, registered vehicles, and AADT have been used from 2010 to 2022. The ML algorithms, including LR, SVM, NB, K-NN, RF, DT, LBR, and J48, have been employed. The model results indicated that five algorithms, including RF, DT, J48, LBR, and K-NN classifiers, have shown better accuracy, greater than 80%. The RF had the highest ability to predict the crash severity in Rwanda, with an accuracy greater than 97%. The most identified influential factors were AADT, registered vehicles, causes of crashes, and vehicles involved. The model results can be applied to provide useful information to road safety decision-makers during the planning and design of road infrastructure.
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来源期刊
CiteScore
2.60
自引率
0.00%
发文量
42
审稿时长
5 months
期刊介绍: Transport is essential reading for those needing information on civil engineering developments across all areas of transport. This journal covers all aspects of planning, design, construction, maintenance and project management for the movement of goods and people. Specific topics covered include: transport planning and policy, construction of infrastructure projects, traffic management, airports and highway pavement maintenance and performance and the economic and environmental aspects of urban and inter-urban transportation systems.
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