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段沛博 副教授
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教师拼音名称:duanpeibo
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入职时间:2020-09-30
所在单位:软件学院
学历:博士研究生毕业
性别:男
职称:副教授
在职信息:在职
毕业院校:东北大学、悉尼科技大学
学科:
计算机应用技术
智能科学与技术
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What Is the Root Cause of Congestion in Urban Traffic Networks: Road Infrastructure or Signal Control?
发布时间:2022-04-08点击次数:
第一作者: Wenwei Yue
合写作者: 段沛博,Changle Li
发表刊物: IEEE Transactions on Intelligent Transportation Systems
DOI码: 10.1109/TITS.2021.3085021
摘要: Identifying the root cause of congestion and taking appropriate strategies to improve traffic network performance are important goals of Advanced Traffic Management Systems (ATMS). On many occasions, the causes of congestion are not necessarily attributable to road infrastructures themselves. Instead, signal control strategies at intersections are very often the major contributors of congestion. In lieu of this, in this paper, a root cause identification method is developed with consideration of the impact from both road infrastructure and traffic signal control. Firstly, we differentiate congestion effects between road segments and intersections to attribute the causes of congestion to road infrastructure and signal control respectively. Then, we construct causal congestion trees to model congestion propagation and quantify congestion costs for each road segment and intersection in the whole road network. A Markov model is utilized to capture congestion spatio-temporal correlation among multiple road segments and intersections simultaneously, with which the most critical root cause can be located. Furthermore, a gradient boosting decision tree based method is presented to predict the root cause of congestion according to traffic flows, signal control strategies and road topology in traffic networks. Finally, simulations based on Simulation of Urban Mobility (SUMO) validate the effectiveness of our proposed method in identifying and predicting the congestion root cause. Experiments are further conducted using inductive loop detector data to identify the root cause for the road network of Taipei.
关键字: Roads;Transportation;Predictive models;Urban areas;Topology;Network topology;Detectors
页面范围: 1 - 18
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