Doas 2006 Project: Reinforcement Learning of Traffic Light Controllers Adapting to Accidents

نویسندگان

  • Bram Bakker
  • Leon Kester
  • SJ Amsterdam
چکیده

Last year we started a project concerned with intelligent traffic control. Using a simulator that models urban road traffic, we developed an improved traffic light controller based on measuring traffic congestion on the roads and reinforcement learning. This year an important focus will be on dealing with traffic accidents. In this student project we want to investigate a learning traffic control system that will detect accidents and handle them intelligently. It will learn to direct traffic around accident spots such that traffic delay is minimized.

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تاریخ انتشار 2006