Network Scale Travel Time Prediction using Deep Learning

被引:44
作者
Hou, Yi [1 ]
Edara, Praveen [2 ]
机构
[1] Natl Renewable Energy Lab, Golden, CO 80401 USA
[2] Univ Missouri, Columbia, MO USA
关键词
TRAFFIC FLOW PREDICTION;
D O I
10.1177/0361198118776139
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
In recent years, deep learning models have been receiving increased attention within the artificial intelligence (AI) community because of their high prediction accuracy. In this paper, two deep learning models, long short-term memory (LSTM) and convolutional neural network (CNN), are proposed to predict travel time in a road network. One major advantage of using deep learning for travel time prediction is that it can make accurate predictions for all the segments in the transportation network with a single model structure, instead of building customized models for each segment separately. The proposed models were evaluated on a transportation network in the City of Saint Louis, Missouri. The prediction results show that deep learning can provide accurate prediction for both congested and uncongested traffic conditions, and can successfully capture the traffic dynamics of unexpected incidents or special events. The study findings show that deep learning offers a promising approach to real-time prediction of travel times on a network scale.
引用
收藏
页码:115 / 123
页数:9
相关论文
共 40 条
  • [1] Application of the ARIMA models to urban roadway travel time prediction - A case study
    Billings, Daniel
    Jiann-Shiou Yang
    [J]. 2006 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN, AND CYBERNETICS, VOLS 1-6, PROCEEDINGS, 2006, : 2529 - +
  • [2] Dynamic freeway travel-time prediction with probe vehicle data - Link based versus path based
    Chen, M
    Chien, SIJ
    [J]. TRANSPORTATION DATA AND INFORMATION TECHNOLOGY: PLANNING AND ADMINISTRATION, 2001, (1768): : 157 - 161
  • [4] Duan Y, 2014, P 17 INT IEEE C INT
  • [5] A bayesian dynamic linear model approach for real-time short-term freeway travel time prediction
    Fei, Xiang
    Lu, Chung-Cheng
    Liu, Ke
    [J]. TRANSPORTATION RESEARCH PART C-EMERGING TECHNOLOGIES, 2011, 19 (06) : 1306 - 1318
  • [6] Geroliminis N, 2012, P 15 INT IEEE C INT
  • [7] Harvey Andrew C, 1990, Forecasting, Structural Time Series Models, and the Kalman Filter
  • [8] Hochreiter S, 1997, NEURAL COMPUT, V9, P1735, DOI [10.1162/neco.1997.9.8.1735, 10.1007/978-3-642-24797-2, 10.1162/neco.1997.9.1.1]
  • [9] Hoogendoorn S. P, 2003, 13 EWGT MIN EUR C PO
  • [10] Hou Y, 2017, IEEE INT C INTELL TR