Deep belief network-based support vector regression method for traffic flow forecasting

被引:0
|
作者
Haibo Xu
Chengshun Jiang
机构
[1] South China University of Technology,School of Automation Science and Engineering
[2] Yangtze Normal University,College of Big Data and Intelligent Engineering
来源
Neural Computing and Applications | 2020年 / 32卷
关键词
Machine learning; Deep belief network–support vector regression; Traffic flow prediction;
D O I
暂无
中图分类号
学科分类号
摘要
Instability is a common problem in deep belief network–back propagation forecasting model, and the trend of traffic data will affect the forecasting results of the model. Therefore, this paper proposes a short-term traffic flow forecasting method based on deep belief network–support vector regression. Support vector regression classifier SVR is used at the top of the model. Data processing is from bottom to top. Firstly, at the bottom of the model, the input traffic flow data are processed differently; then, the DBN model is used to learn the traffic flow characteristics. Finally, SVR is used to predict the traffic flow at the top of the model. The average absolute error of the prediction is 9.57%, and the average relative error is 5.91%. The relationship between the predicted value and the actual traffic flow data is found through simulation experiments. The predicted value of the model proposed in this paper is in good agreement with the measured value, and the prediction accuracy is high. The model can effectively predict short-term traffic flow. Finally, compared with the traditional DBN prediction model and other common prediction models, the proposed prediction model has higher prediction accuracy.
引用
收藏
页码:2027 / 2036
页数:9
相关论文
共 50 条
  • [11] Research on methods of short-term traffic forecasting based on support vector regression
    School of Traffic and Transportation, Beijing Jiaotong University, Beijing 100044, China
    Beijing Jiaotong Daxue Xuebao, 2006, 3 (19-22):
  • [12] Traffic flow prediction using support vector regression
    Nidhi N.
    Lobiyal D.K.
    International Journal of Information Technology, 2022, 14 (2) : 619 - 626
  • [13] Daily Load Forecasting Based on a Combination of Classification and Regression Tree and Deep Belief Network
    Phyo, Pyae Pyae
    Jeenanunta, Chawalit
    IEEE ACCESS, 2021, 9 : 152226 - 152242
  • [14] Vessel Traffic flow forecasting with the combined model based on Support vector machine
    Wang Haiyan
    Wang Youzhen
    3RD INTERNATIONAL CONFERENCE ON TRANSPORTATION INFORMATION AND SAFETY (ICTIS 2015), 2015, : 695 - 698
  • [15] A Hybrid Forecasting Framework Based on Support Vector Regression with a Modified Genetic Algorithm and a Random Forest for Traffic Flow Prediction
    Zhang, Lizong
    Alharbe, Nawaf R.
    Luo, Guangchun
    Yao, Zhiyuan
    Li, Ying
    TSINGHUA SCIENCE AND TECHNOLOGY, 2018, 23 (04) : 479 - 492
  • [16] Vessel Traffic Flow Forecasting Model Study Based on Support Vector Machine
    Feng, Hongxiang
    Kong, Fancun
    Xiao, Yingjie
    ADVANCED RESEARCH ON ELECTRONIC COMMERCE, WEB APPLICATION, AND COMMUNICATION, PT 1, 2011, 143 : 446 - 451
  • [17] Support vector machine based on data mining technology in traffic flow forecasting
    Wang, Fan
    Deng, Chao
    Shi, Huimin
    Tan, Guozhen
    Journal of Information and Computational Science, 2009, 6 (03): : 1287 - 1294
  • [18] A Hybrid Forecasting Framework Based on Support Vector Regression with a Modified Genetic Algorithm and a Random Forest for Traffic Flow Prediction
    Lizong Zhang
    Nawaf R Alharbe
    Guangchun Luo
    Zhiyuan Yao
    Ying Li
    TsinghuaScienceandTechnology, 2018, 23 (04) : 479 - 492
  • [19] Internet Traffic Forecasting Model Using Self Organizing Map and Support Vector Regression Method
    Laoh, Enrico
    Agustriwan, Fakhrul
    Megawati, Chyntia
    Surjandari, Isti
    MAKARA JOURNAL OF TECHNOLOGY, 2018, 22 (02): : 60 - 65
  • [20] Deep Neural Network-based Method for Detection and Classification of Malicious Network Traffic
    Usman, Muhammad
    Ahmad, Shahbaz
    Saeed, Muhammad Mubashir
    2021 IEEE WORKSHOP ON MICROWAVE THEORY AND TECHNIQUES IN WIRELESS COMMUNICATIONS, MTTW'21, 2021, : 193 - 198