DocumentCode :
3601657
Title :
Modeling Traffic Control Agency Decision Behavior for Multimodal Manual Signal Control Under Event Occurrences
Author :
Nan Ding ; Qing He ; Changxu Wu ; Fetzer, Julie
Author_Institution :
Dept. of Ind. & Syst. Eng., State Univ. of New York, Buffalo, NY, USA
Volume :
16
Issue :
5
fYear :
2015
Firstpage :
2467
Lastpage :
2478
Abstract :
Traffic control agencies (TCAs), including police officers, firefighters, or other traffic law enforcement officers, can override automatic traffic signal control and manually control the traffic at an intersection. TCA-based traffic signal control is crucial to mitigate nonrecurrent traffic congestion caused by planned and unplanned events. Understanding and predicting TCA behaviors is significant to optimize event traffic management and operations. In this paper, we propose a pressure-based human behavior model to mimic TCA´s decision-making behavior. The model calculates TCA´s pressure based on two attributes: vehicle and pedestrian queue dynamics and the red time duration for each phase. When TCA´s pressure on each phase meet certain criteria and the minimal green is satisfied, TCA will terminate the current phase and switch to another phase. In order to study TCA behavior systematically, we first build a manual signal control simulator based on a microscopic traffic simulation tool. Supported by the manual control simulator, a series of human subject experiments have been conducted with real-world TCAs. Experiment data are divided into training data and test data. The proposed behavior model is then calibrated by training data, and the model is validated by both offline segment-based phase and duration prediction and online VISSIM-based simulation. Further, we test the model with videotaped TCA behavior data at a real-world intersection. Both validation results support the effectiveness of proposed behavior model.
Keywords :
decision making; pedestrians; traffic control; TCA behavior; decision-making behavior; duration prediction; event occurrences; manual control simulator; microscopic traffic simulation tool; multimodal manual signal control; offline segment-based phase prediction; online VISSIM-based simulation; pedestrian queue dynamics; pressure-based human behavior model; real-world intersection; red time duration; test data; traffic control agency decision behavior modeling; training data; vehicle dynamics; Control systems; Data models; Manuals; Predictive models; Timing; Vehicles; Human behavior modeling; multimodal event traffic; traffic signal control;
fLanguage :
English
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1524-9050
Type :
jour
DOI :
10.1109/TITS.2015.2409174
Filename :
7065315
Link To Document :
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