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Urban Traffic Travel Time Short-Term Prediction Model Based on Spatio-Temporal Feature Extraction

Authors :
Kang, Leilei
Hu, Guojing
Huang, Hao
Lu, Weike
Liu, Lan
Source :
Journal of Advanced Transportation. August 31, 2020, Vol. 2020
Publication Year :
2020

Abstract

In order to improve the accuracy of short-term travel time prediction in an urban road network, a hybrid model for spatiotemporal feature extraction and prediction of urban road network travel time is proposed in this research, which combines empirical dynamic modeling (EDM) and complex networks (CN) with an XGBoost prediction model. Due to the highly nonlinear and dynamic nature of travel time series, it is necessary to consider time dependence and the spatial reliance of travel time series for predicting the travel time of road networks. The dynamic feature of the travel time series can be revealed by the EDM method, a nonlinear approach based on Chaos theory. Further, the spatial characteristic of urban traffic topology can be reflected from the perspective of complex networks. To fully guarantee the reasonability and validity of spatio-temporal features, which are dug by empirical dynamic modeling and complex networks (EDMCN), for urban traffic travel time prediction, an XGBoost prediction model is established for those characteristics. Through the in-depth exploration of the travel time and topology of a particular road network in Guiyang, the EDMCN-XGBoost prediction model's performance is verified. The results show that, compared with the single XGBoost, autoregressive moving average, artificial neural network, support vector machine, and other models, the proposed EDMCN-XGBoost prediction model presents a better performance in forecasting.<br />1. Introduction Intelligent transportation system (ITS) is currently the most effective technical solution to improve public transportation service and management [1, 2]. The successful application of ITS is inseparable from [...]

Subjects

Subjects :
Neural network
Neural networks

Details

Language :
English
ISSN :
01976729
Volume :
2020
Database :
Gale General OneFile
Journal :
Journal of Advanced Transportation
Publication Type :
Academic Journal
Accession number :
edsgcl.640831967
Full Text :
https://doi.org/10.1155/2020/3247847