Abstract
In this article, a new method to predict the probabilistic distribution of a traffic jam at crossroads and a traffic signal learning control system are proposed. First, a dynamic Bayesian network is used to build a forecasting model to predict the probabilistic distribution of vehicles in a traffic jam during each period of the traffic signals. An adjusting algorithm for traffic signal control is applied to maintain the probability of a lower limit and a ceiling of standing vehicles to get the desired probabilistic distribution of standing vehicles. In order to achieve real-time control, a learning control system based on a back-propagation neural network is used. Finally, the effectiveness of the new traffic signal control system using actual traffic data will be shown.
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This work was presented in part and was awarded the Young Author Award at the 15th International Symposium on Artificial Life and Robotics, Oita, Japan, February 4–6, 2010
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Cui, C., Shin, J. & Lee, H. Real-time traffic signal learning control using BPNN based on predictions of the probabilistic distribution of standing vehicles. Artif Life Robotics 15, 58–61 (2010). https://doi.org/10.1007/s10015-010-0768-9
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DOI: https://doi.org/10.1007/s10015-010-0768-9