A graph CNN-LSTM neural network for short and long-term traffic forecasting based on trajectory data

被引:193
|
作者
Bogaerts, Toon [1 ,2 ]
Masegosa, Antonio D. [1 ,3 ]
Angarita-Zapata, Juan S. [1 ]
Onieva, Enrique [1 ]
Hellinckx, Peter [2 ]
机构
[1] Univ Deusto, DeustoTech, Fac Engn, Ave Univ 24, Bilbao 48007, Spain
[2] Univ Antwerp, IMEC, IDLab, Fac Appl Engn, Sint Pietersvliet 7, B-2000 Antwerp, Belgium
[3] Basque Fdn Sci, Ikerbasque, Bilbao 48011, Spain
基金
欧盟地平线“2020”;
关键词
Deep learning; Graph convolutional network; LSTM; Traffic forecasting; Trajectory data; GPS data; Long term; Short term; ITS; PREDICTION;
D O I
10.1016/j.trc.2020.01.010
中图分类号
U [交通运输];
学科分类号
08 ; 0823 ;
摘要
Traffic forecasting is an important research area in Intelligent Transportation Systems that is focused on anticipating traffic in order to mitigate congestion. In this work we propose a deep neural network that simultaneously extracts the spatial features of traffic, using graph convolution, and its temporal features by means of Long Short Term Memory (LSTM) cells to make both short-term and long-term predictions. The model is trained and tested using sparse trajectory (GPS) data coming from the ride-hailing service of DiDi in the cities of Xi'an and Chengdu in China. Besides, presenting the deep neural network, we also propose a data-reduction technique based on temporal correlation to select the most relevant road links to be used as input. Combining the suggested approaches, our model obtains better results compared to high-performance algorithms for traffic forecasting, such as LSTM or the algorithms presented in the TRANSFOR19 forecasting competition. The model is capable of maintaining its performance over different time-horizons from 5 min to up to 4 h with multi-step predictions.
引用
收藏
页码:62 / 77
页数:16
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