Traffic flow prediction model based on drivers' cognition of road network

被引:0
作者
Li S. [1 ]
An W. [1 ]
Wang P. [1 ]
机构
[1] School of Computer Science and Technology, Changchun University of Science and Technology, No.7186 Weixing Road, Chaoyang, Changchun, Jilin
来源
Wang, Peng (wangpeng@cust.edu.cn) | 1600年 / Fuji Technology Press卷 / 24期
关键词
Game decision-making; Probability distribution; Spatiotemporal directed graph convolution; Traffic flow prediction;
D O I
10.20965/JACIII.2020.P0900
中图分类号
学科分类号
摘要
The traditional traffic flow prediction method is based on data modeling, when emergencies occur, it is impossible to accurately analyze the changes in traffic characteristics. This paper proposes a traffic flow prediction model (BAT-GCN) which is based on drivers' cognition of the road network. Firstly, drivers can judge the capacity of different paths by analyzing the travel time in the road network, which bases on the drivers' cognition of road network space. Secondly, under the condition that the known road information is obtained, people through game decision-making for different road sections to establish the probability model of path selection; Finally, drivers obtain the probability distribution of different paths in the regional road network and build the prediction model by combining the spatiotemporal directed graph convolution neural network. The experimental results show that the BAT-GCN model reduces the prediction error compared with other baseline models in the peak period. © 2020 Fuji Technology Press. All rights reserved.
引用
收藏
页码:900 / 907
页数:7
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