An Effective Self-Attention-Based Hybrid Model for Short-Term Traffic Flow Prediction

被引:6
作者
Li, Zhihong [1 ]
Wang, Xiaoyu [1 ]
Yang, Kairan [1 ]
机构
[1] Beijing Univ Civil Engn & Architecture, Dept Transportat, Beijing 100044, Peoples R China
关键词
TIME-SERIES; NEURAL-NETWORKS; MULTIVARIATE; LSTM; SVR;
D O I
10.1155/2023/9308576
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Vehicle exhaust is one of the main sources of carbon emissions. The short-term traffic flow prediction plays an important role in alleviating traffic congestion, optimizing the travel structure, and reducing traffic carbon emissions. The current advanced models of short-term traffic flow prediction are evaluated in this work, especially their inadequacies. To improve the prediction accuracy and ensure fine traffic management, an effective self-attention-based hybrid model is proposed to predict the short-term traffic flow. The proposed model includes an encoder-decoder neural network module and a self-attention mechanism module. The self-attention mechanism module is applied as a feature extraction unit in this hybrid model to enhance the ability of key information capture and to settle the problem on key information disappearing due to the increasing sequence length in traditional models. The dataset of the Guangdong freeway toll station is used for the experimental testing. Compared with several baseline models, the proposed model is more suitable for real-time prediction and can provide highly accurate results. Also, a better interpretability is presented in this proposed model. The experimental results showed that MAE, RMSE, and MAPE of the proposed model are 3.01, 4.38, and 12.99%, respectively. Our new hybrid model gives a higher accuracy than the support vector regression (SVR) model, LSTM neural network-attention (LSTM-attention) model, and temporal convolutional network (TCN) model. It shows that the proposed model in this work is favorable to the short-term traffic flow prediction.
引用
收藏
页数:10
相关论文
共 57 条
[21]   Short-term traffic flow prediction using seasonal ARIMA model with limited input data [J].
Kumar, S. Vasantha ;
Vanajakshi, Lelitha .
EUROPEAN TRANSPORT RESEARCH REVIEW, 2015, 7 (03)
[22]   Temporal Convolutional Networks: A Unified Approach to Action Segmentation [J].
Lea, Colin ;
Vidal, Rene ;
Reiter, Austin ;
Hager, Gregory D. .
COMPUTER VISION - ECCV 2016 WORKSHOPS, PT III, 2016, 9915 :47-54
[23]   Urban traffic flow forecasting using Gauss-SVR with cat mapping, cloud model and PSO hybrid algorithm [J].
Li, Ming-Wei ;
Hong, Wei-Chiang ;
Kang, Hai-Gui .
NEUROCOMPUTING, 2013, 99 :230-240
[24]   Short-term traffic state prediction from latent structures: Accuracy vs. efficiency [J].
Li, Wan ;
Wang, Jingxing ;
Fan, Rong ;
Zhang, Yiran ;
Guo, Qiangqiang ;
Siddique, Choudhury ;
Ban, Xuegang .
TRANSPORTATION RESEARCH PART C-EMERGING TECHNOLOGIES, 2020, 111 :72-90
[25]  
Li YG, 2018, Arxiv, DOI [arXiv:1707.01926, DOI 10.48550/ARXIV.1707.01926]
[26]   Fusion attention mechanism bidirectional LSTM for short-term traffic flow prediction [J].
Li, Zhihong ;
Xu, Han ;
Gao, Xiuli ;
Wang, Zinan ;
Xu, Wangtu .
JOURNAL OF INTELLIGENT TRANSPORTATION SYSTEMS, 2024, 28 (04) :511-524
[27]   A Deep Pedestrian Tracking SSD-Based Model in the Sudden Emergency or Violent Environment [J].
Li, Zhihong ;
Dong, Yang ;
Wen, Yanjie ;
Xu, Han ;
Wu, Jiahao .
JOURNAL OF ADVANCED TRANSPORTATION, 2021, 2021
[28]   Learning Socially Embedded Visual Representation from Scratch [J].
Liu, Shaowei ;
Cui, Peng ;
Zhu, Wenwu ;
Yang, Shiqiang .
MM'15: PROCEEDINGS OF THE 2015 ACM MULTIMEDIA CONFERENCE, 2015, :109-118
[29]   Network Traffic Classifier With Convolutional and Recurrent Neural Networks for Internet of Things [J].
Lopez-Martin, Manuel ;
Carro, Belen ;
Sanchez-Esguevillas, Antonio ;
Lloret, Jaime .
IEEE ACCESS, 2017, 5 :18042-18050
[30]   A temporal-aware LSTM enhanced by loss-switch mechanism for traffic flow forecasting [J].
Lu, Huakang ;
Ge, Zuhao ;
Song, Youyi ;
Jiang, Dazhi ;
Zhou, Teng ;
Qin, Jing .
NEUROCOMPUTING, 2021, 427 (427) :169-178