ROAD TRAFFIC PLANNING IN THE CONTEXT OF THE SUSTAINABLE URBAN TRANSPORT SYSTEM

Authors

  • Vladimir D Shepelev Author
  • Zlata V Almetova Author
  • Mikhail A Korzan Author
  • Irakli G Charbadze Author

Abstract

One of the factors affecting the intersection capacity of nodes in the street-road network are cargo transport vehicles in the traffic flows. The existing methods for assessing the impact of cargo transport vehicles on the road traffic parameters are based on statistical data. The research is based on the use of neural networks to process big data (BIGDATA) from CCTV cameras in real time mode. As a result of the interpretation and analysis of big data, the patterns of changes in cargo transport vehicles during the day and its impact on the intersection capacity of nodes in the street-road network were established. The presented study allows to improve the decision-making efficiency while optimizing the road traffic planning.

Author Biographies

  • Vladimir D Shepelev
    Candidate of Sciences (Engineering), Associate Professor of the Department of Automobile and Tractor Engineering Faculty
  • Zlata V Almetova
    Candidate of Sciences (Engineering), Associate Professor of the Department of Automobile and Tractor Engineering Faculty
  • Mikhail A Korzan
    Master’s degree student of the Department of Automobile and Tractor Engineering Faculty
  • Irakli G Charbadze
    Master’s degree student of the Department of Applied Mathematics and Programming

Published

2020-07-30

Issue

Section

Logistics