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Multicause Automatic Real-time Identification of Urban Road Traffic Congestion Based on Bayesian Network |
CAO Yu1, WANG Cheng1, YANG Yue-ming1, XU Jiang-tao1, GAO Yue-er2 |
1. School of Computer Science and Technology, Huaqiao University, Xiamen Fujian 361021, China; 2. School of Architecture, Huaqiao University, Xiamen Fujian 361021, China |
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Abstract Urban road traffic congestion is caused by various factors, such as dynamic and real-time, complexity, and changeability, and existing methods are subjective, have low accuracy and poor real-time, and unable to automatically identify. This study proposes a multicause automatic real-time identification of urban road traffic congestion on the basis of the Bayesian network. First, the method performs systematic mechanism analysis and simulation verification on the relationship between the dynamic observable variables of urban road traffic and the multiple congestion causes to construct the Bayesian network structure. Second, the obtained measured historical data are used for parameter learning and training to obtain the complete Bayesian network model. Finally, multiple causes of traffic congestion can be automatically and simultaneously identified in real time when inputting the observable variables of traffic under road working conditions into the Bayesian network model. This method has high flexibility that can help express the correlation of nodes better and has strong interpretability, which can fully use expert experience and knowledge and achieve automatization in real time. The results in the research on Quanxiu Street, Quanzhou City show that the construction of the multicause automatic real-time identification of urban road traffic congestion based on the Bayesian network is reasonable. Five congestion causes have higher recognition accuracy rates than contrast methods, which include pedestrian influence, peak traffic, parking occupied road, unreasonable signal timing, and impact of traffic crossing the road.
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Received: 11 June 2020
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Fund:Supported by the National Natural Science Foundation of China(No.51608209);the Surface Program of Natural Science Foundation of China (No.2017J01090);the Science and Technology Program of Quanzhou(No.2018Z008);the Postgraduate Research and Innovation Ability Cultivation Project of Huaqiao University(No.17014083001);the Project of Guiding Plan of Fujian Province(No.2019H0017) |
Corresponding Authors:
CAO Yu
E-mail: caoyu0701@foxmail.com
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