Attention-based Conv-LSTM and Bi-LSTM networks for large-scale traffic speed prediction

被引:0
作者
Xiaojian Hu
Tong Liu
Xiatong Hao
Chenxi Lin
机构
[1] Southeast University,Jiangsu Key Laboratory of Urban ITS
[2] Southeast University,Jiangsu Province Collaborative Innovation Center of Modern Urban Traffic Technologies
[3] National Demonstration Center for Experimental Road and Traffic Engineering Education (Southeast University),School of Transportation
[4] Southeast University,undefined
来源
The Journal of Supercomputing | 2022年 / 78卷
关键词
Traffic speed prediction; Conv-LSTM; Bi-LSTM; Attention mechanism; Spatiotemporal; Periodic;
D O I
暂无
中图分类号
学科分类号
摘要
Timely and accurate traffic speed prediction has gained increasing importance for urban traffic management and helping one to make advisable travel decision. However, the existing approaches have difficulty extracting features of large-scale traffic data. This study proposed a hybrid deep learning method named AB-ConvLSTM for large-scale traffic speed prediction. The proposed model consists of a convolutional-long short-term memory (Conv-LSTM) module, an attention mechanism module, and two bidirectional LSTM (Bi-LSTM) modules. Conv-LSTM networks are used to extract the spatiotemporal features of traffic speed data. In addition, the attention mechanism module is introduced to enhance the performance of Conv-LSTM by automatically capturing the importance of different historical periods to the final prediction and assigning corresponding weights. What's more, two Bi-LSTM networks are designed to extract daily and weekly periodic features and capture variation tendency from forward and backward traffic data. Experimental results carried out on urban road networks show that the proposed model consistently outperforms the competing models.
引用
收藏
页码:12686 / 12709
页数:23
相关论文
共 147 条
  • [1] Mackenzie J(2019)An evaluation of HTM and LSTM for short-term arterial traffic flow prediction IEEE Trans Intell Transp Syst 20 1847-1857
  • [2] Roddick JF(2014)Short-term traffic forecasting: where we are and where we’re going Transp Res Pt C Emerg Technol 43 3-19
  • [3] Zito R(2003)Modeling and forecasting vehicular traffic flow as a seasonal ARIMA process: theoretical basis and empirical results J Transp Eng A Syst 129 664-672
  • [4] Vlahogianni EI(2016)Short-term speed predictions exploiting big data on large urban road networks Transp Res Pt C Emerg Technol 73 183-201
  • [5] Karlaftis MG(2019)Traffic flow prediction based on combination of support vector machine and data denoising schemes Phys A 2432 91-98
  • [6] Golias JC(2014)Use of support vector machine models for real-time prediction of crash risk on urban expressways Transport Res Rec 27 219-232
  • [7] Williams BM(2013)Short-term traffic speed forecasting hybrid model based on Chaos-wavelet analysis-support vector machine theory Transp Res Pt C Emerg Technol 40 173-201
  • [8] Hoel LA(2012)A Bayesian method for estimating traffic flows based on plate scanning Transportation 142 04016018-34
  • [9] Fusco G(2016)k-Nearest neighbor model for multiple-time-step prediction of short-term traffic condition J Transp Eng A Syst 62 21-157
  • [10] Colombaroni C(2016)A spatiotemporal correlative k-nearest neighbor model for short-term traffic multistep forecasting Transp Res Pt C Emerg Technol 43 143-157