Modeling and analysis of vehicle path dispersion at signalized intersections using explainable backpropagation neural networks

IF 6.2 3区 综合性期刊 Q1 Multidisciplinary
Jing Zhao , Ruoming Ma , Jian Sun , Rongji Zhang , Cheng Zhang
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Abstract

The dispersion of vehicular paths is a common phenomenon in the inner area of signalized intersections due to heterogeneous driver behavior and interactions. This study aims to develop an explainable neural network-based model to describe the vehicle path dispersion by exploring the relationship between the path dispersion and external factors. A backpropagation neural network model was established to analyze the effects of external factors on the dispersion of through and left-turn paths based on real trajectory data collected from 20 intersections in Shanghai, China. Twelve influencing factors in varying geometric, traffic, signalization, and traffic management conditions were considered. The predictive power and transferability of the model were verified by applying the trained model on the four new intersections. The contributions of the influencing factors on the path dispersion were explored based on the neural interpretation diagram, relative importance of influencing factors, and sensitivity analysis to offer explanatory insights for the proposed model. The results show that the mean absolute percentage errors of the path dispersion models for the through and left-turn movements are only 14.67% and 17.65%, respectively. The through path dispersion is primarily influenced by the number of exit lanes, the offset degree between the approach and exit lanes, and the traffic saturation degree on the through lane. In contrast, the path dispersion of the left turn is mainly affected by the number of exit lanes, the left-turn angle, and the setting of guide lines.

Abstract Image

基于可解释反向传播神经网络的信号交叉口车辆路径离散建模与分析
由于驾驶员行为和相互作用的异质性,车辆路径分散是信号交叉口内部区域的普遍现象。本研究旨在探讨道路离散度与外界因素的关系,建立一个可解释的神经网络模型来描述车辆路径离散度。以上海市20个交叉口的真实轨迹数据为基础,建立了反向传播神经网络模型,分析了外部因素对通行和左转路径离散度的影响。考虑了不同几何、交通、信号和交通管理条件下的12个影响因素。将训练好的模型应用于4个新路口,验证了模型的预测能力和可移植性。基于神经解释图、影响因素的相对重要性和敏感性分析,探讨了影响因素对路径离散度的贡献,为所提出的模型提供了解释性见解。结果表明,通过和左转运动的路径离散模型的平均绝对百分比误差分别仅为14.67%和17.65%。通径离散度主要受出口车道数、进出车道偏移程度和通径交通饱和程度的影响。而左转弯的路径离散度主要受出口车道数、左转弯角度和引导线设置的影响。
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来源期刊
Fundamental Research
Fundamental Research Multidisciplinary-Multidisciplinary
CiteScore
4.00
自引率
1.60%
发文量
294
审稿时长
79 days
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