A self-organizing system for urban traffic control based on predictive interval microscopic model
This addresses traffic congestion in urban networks, but it is an incremental improvement over existing traffic control methods.
The paper tackles urban traffic control by developing a self-organizing system where intersection agents use an interval microscopic model to predict and select control actions based on delay intervals, improving performance especially for non-uniform traffic streams in simulations.
This paper introduces a self-organizing traffic signal system for an urban road network. The key elements of this system are agents that control traffic signals at intersections. Each agent uses an interval microscopic traffic model to predict effects of its possible control actions in a short time horizon. The executed control action is selected on the basis of predicted delay intervals. Since the prediction results are represented by intervals, the agents can recognize and suspend those control actions, whose positive effect on the performance of traffic control is uncertain. Evaluation of the proposed traffic control system was performed in a simulation environment. The simulation experiments have shown that the proposed approach results in an improved performance, particularly for non-uniform traffic streams.