Multi-agent based traffic simulation and integrated control of freeway corridors: Part 1 simulation and control model

被引:0
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作者
Chul-Ho Bae
Ki-Yong Cho
Tae-Yun Koo
Sung-Ho Ji
Myung-won Suh
机构
[1] Sunkyunkwan University,Graduate School of Mechanical Engineering
[2] Sunkyunkwan University,School of Mechanical Engineering
关键词
Vehicle dynamics; Multi-agent; Traffic simulation; Integrated control; Ramp metering; Signal strategy; Freeway corridor; Agent simulation;
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中图分类号
学科分类号
摘要
Freeway corridors consist of urban freeways and parallel arterials for alternative use. Ramp metering in freeways and signal control in arterials are contemporary traffic control methods that have been developed and applied in order to improve the traffic conditions of freeway corridors. However, most existing studies have focused on either optimal ramp metering in freeways or progressive signal strategies between arterial intersections. For efficient control of freeway corridors, ramp metering and signal control must be considered simultaneously, as otherwise the control strategies for freeway operation may disturb arterial traffic. On the other hand, traffic congestion and arterial bottlenecks that arise with increasing traffic volume at peak hours and ineffective signal operation may cause problems with accessibility to freeway ramps and degrade the urban freeway’s ability to act as a through-traffic process. This research dynamically estimates the traffic stream between an urban freeway and its ramps according to changes in the freeway structure, traffic passing demand, and control methods due to restricted valid information. The results are then compared with those from other methods. Finally, the integrated control in the urban freeway traffic axis is optimized based on the expected traffic stream, by using design of experiment (DOE), neural network (NN), and a simulated annealing algorithm.
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页码:1365 / 1373
页数:8
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