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Analysis of Stochasticity and Heterogeneity of Car-Following Behavior Based on Data-Driven Modeling

弹道 加速度 百分位 计算机科学 随机建模 期限(时间) 概率逻辑 标准差 离散化 概率分布 模拟 计量经济学 统计 数学 人工智能 物理 数学分析 经典力学 量子力学 天文
作者
Yasuhiro Shiomi,Guopeng Li,Victor L. Knoop
出处
期刊:Transportation Research Record [SAGE]
卷期号:2677 (12): 604-619
标识
DOI:10.1177/03611981231169279
摘要

Traffic dynamics on freeways are stochastic in nature because of errors in perception and operation of drivers as well as the heterogeneity between and within drivers. This stochasticity is often represented in car-following models by a stochastic term, which is assumed to follow a normal distribution for the convenience of mathematical processing. However, the validity of this assumption has not been studied yet. In this study, we focused on the shape of the distribution of a stochastic term in the car-following model that predicts an acceleration after a time step. Based on vehicle trajectory data on a freeway in Japan, a car-following model is first developed by using data-driven methodology in which long short-term memory (LSTM) network is applied. In this LSTM network, the acceleration value is discretized and the model parameters are trained with the focal loss function. The relationship between the predicted distributions’ modality, standard deviation (SD), and [Formula: see text] with respect to traffic states is then examined. The findings demonstrate that: 1) the developed model can accurately predict the accelerations; 2) a probabilistic distribution tends to have a large SD and multimodality around a merging point and at the beginning of and along stop-and-go waves; and 3) driving behavior can be classed in one of four clusters based on the variation of the percentile value that a driver takes within the probability distribution. The proposed model and the insights are helpful for improving microscopic simulation models when considering new traffic management measures.

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