location:Home > 2025 Vol.8 Feb.N01 > Application Scheme of 5G Communication in Intelligent Traffic Light Control System

2025 Vol.8 Feb.N01

  • Title: Application Scheme of 5G Communication in Intelligent Traffic Light Control System
  • Name: Lei Liu, xuejun Yi
  • Company: Chengdu College of University of Electronic Scienceand Technology of China,Chengdu  611731,China
  • Abstract:

    due to the diversity and variability of vehicle driving states in actual traffic scenarios, in order to ensure the driving efficiency of road vehicles, it is necessary for intelligent traffic light control systems to adaptively respond and output based on actual states. Therefore, an application scheme of 5G communication in intelligent traffic light control systems is proposed. Introduced 5G communication technology, by constructing a heterogeneous connected vehicle communication network architecture, real-time access to specific traffic scene information; Based on the real-time road data collected by the 5G communication network, with the goal of reducing the travel time of vehicles to the target location, the traffic light control system makes a weighted collaborative response output. In the test results, the driving efficiency of road vehicles under the designed system has been effectively improved.


  • Keyword: 5G communication; Intelligent traffic light control system; heterogeneous connected vehicle communication network architecture; traffic scene information; collaborative response with a focus on travel time;
  • DOI: 10.12250/jpciams2025090203
  • Citation form: Lei Liu, xuejun Yi.Application Scheme of 5G Communication in Intelligent Traffic Light Control System[J]. Computer Informatization and Mechanical System,2025,Vol.8,pp.
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Tsuruta Institute of Medical Information Technology
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