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Evaluating the influence of road lighting on traffic safety at accesses using an artificial neural network

机译:利用人工神经网络评估道路照明对阅览通道对交通安全的影响

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摘要

Objectives: This article focuses on the effect of road lighting on road safety at accesses to quantitatively analyze the relationship between road lighting and road safety.Methods: An artificial neural network (ANN) was applied in this study. This method is one of the most popular machine learning methods and does not require any predefined assumptions. This method was applied using field data collected from 10 road segments in Nanjing, Jiangsu Province, China.Results: The results show that the impact of road lighting on road safety at accesses is significant. In addition, road lighting has a greater influence when vehicle speeds are higher or the number of lanes is greater. A threshold illuminance was also found, and the results show that the safety level at accesses will become stable when reaching this value.Conclusions: Improved illuminance can decrease the speed variation among vehicles and improve safety levels. In addition, high-grade roads need better illuminance at accesses. A threshold value can also be obtained based on related variables and used to develop scientific guidelines for traffic management organizations.
机译:目的:本文侧重于道路照明对道路安全的影响,以定量分析道路照明和道路安全之间的关系。本研究应用了人工神经网络(ANN)。该方法是最受欢迎的机器学习方法之一,不需要任何预定义的假设。使用从江苏省南京的10条路段收集的现场数据应用了该方法。结果表明,道路照明在接近的道路安全的影响是显着的。此外,当车速较高或车道数量更大时,道路照明具有更大的影响。还发现了阈值照度,结果表明,在达到该值时,访问的安全水平将变得稳定。结论:改进的照度可以降低车辆之间的速度变化并提高安全水平。此外,高档道路在接入时需要更好的照度。还可以基于相关变量获得阈值,并用于为交通管理组织开发科学指南。

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