City-Wide Traffic Congestion Prediction Based on CNN, LSTM and Transpose CNN

被引:95
作者
Ranjan, Navin [1 ]
Bhandari, Sovit [1 ]
Zhao, Hong Ping [1 ]
Kim, Hoon [1 ]
Khan, Pervez [1 ]
机构
[1] Incheon Natl Univ, IoT & Big Data Res Ctr, Dept Elect Engn, Incheon 22012, South Korea
基金
新加坡国家研究基金会;
关键词
Convolutional neural network; long short-term memory; partially convolutional neural network; spatiotemporal feature; traffic congestion forecasting; transport network; FLOW PREDICTION; NETWORK;
D O I
10.1109/ACCESS.2020.2991462
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Traffic congestion is a significant problem faced by large and growing cities that hurt the economy, commuters, and the environment. Forecasting the congestion level of a road network timely can prevent its formation and increase the efficiency and capacity of the road network. However, despite its importance, traffic congestion prediction is not a hot topic among the researcher and traffic engineers. It is due to the lack of high-quality city-wide traffic data and computationally efficient algorithms for traffic prediction. In this paper, we propose (i) an efficient and inexpensive city-wide data acquisition scheme by taking a snapshot of traffic congestion map from an open-source online web service; Seoul Transportation Operation and Information Service (TOPIS), and (ii) a hybrid neural network architecture formed by combing Convolutional Neural Network, Long Short-Term Memory, and Transpose Convolutional Neural Network to extract the spatial and temporal information from the input image to predict the network-wide congestion level. Our experiment shows that the proposed model can efficiently and effectively learn both spatial and temporal relationships for traffic congestion prediction. Our model outperforms two other deep neural networks (Auto-encoder and ConvLSTM) in terms of computational efficiency and prediction performance.
引用
收藏
页码:81606 / 81620
页数:15
相关论文
共 49 条
[1]   SegNet: A Deep Convolutional Encoder-Decoder Architecture for Image Segmentation [J].
Badrinarayanan, Vijay ;
Kendall, Alex ;
Cipolla, Roberto .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2017, 39 (12) :2481-2495
[2]  
Baidu, BAID MAPS
[3]   LEARNING LONG-TERM DEPENDENCIES WITH GRADIENT DESCENT IS DIFFICULT [J].
BENGIO, Y ;
SIMARD, P ;
FRASCONI, P .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 1994, 5 (02) :157-166
[4]   AADT prediction using support vector regression with data-dependent parameters [J].
Castro-Neto, Manoel ;
Jeong, Youngseon ;
Jeong, Myong K. ;
Han, Lee D. .
EXPERT SYSTEMS WITH APPLICATIONS, 2009, 36 (02) :2979-2986
[5]   Dynamic near-term traffic flow prediction: system-oriented approach based on past experiences [J].
Chang, H. ;
Lee, Y. ;
Yoon, B. ;
Baek, S. .
IET INTELLIGENT TRANSPORT SYSTEMS, 2012, 6 (03) :292-305
[6]   PCNN: Deep Convolutional Networks for Short-Term Traffic Congestion Prediction [J].
Chen, Meng ;
Yu, Xiaohui ;
Liu, Yang .
IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2018, 19 (11) :3550-3559
[7]  
Chen YY, 2016, 2016 IEEE 19TH INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS (ITSC), P132, DOI 10.1109/ITSC.2016.7795543
[8]   Machine Learning Approach to Short-Term Traffic Congestion Prediction in a Connected Environment [J].
Elfar, Amr ;
Talebpour, Alireza ;
Mahmassani, Hani S. .
TRANSPORTATION RESEARCH RECORD, 2018, 2672 (45) :185-195
[9]   Capturing correlation with subnetworks in route choice models [J].
Frejinger, E. ;
Blerlaire, M. .
TRANSPORTATION RESEARCH PART B-METHODOLOGICAL, 2007, 41 (03) :363-378
[10]  
Fu R, 2016, 2016 31ST YOUTH ACADEMIC ANNUAL CONFERENCE OF CHINESE ASSOCIATION OF AUTOMATION (YAC), P324, DOI 10.1109/YAC.2016.7804912