Ji‐Ho ParkTong LiuChieh WangAndy BerresJoseph SeverinoJuliette UgirumureraAirton G KohlsHong WangJibonananda SanyalZhong‐Ping Jiang
Traffic congestion leads to severe problems especially in urban traffic networks. It increases the chance of accidents, energy waste, and social costs. In order to address these problems, an adaptive linear quadratic regulator (LQR) approach is developed for traffic signal control at multiple intersections in an urban area. The proposed method controls the green time of the traffic signals to reduce traffic congestion and smooth traffic flow. Real-world data from vision-based traffic sensors are used to build the traffic network model, which mimics the real-world traffic behavior. In addition, the proposed control utilizes recursive least square parameter estimation, which is capable of tracking dynamic changes in traffic conditions. Simulation of Urban MObility (SUMO) is used to analyze the efficacy of the proposed method. Results of the simulation show that the proposed method outperforms pretimed control in various aspects.
Wei TanGuangfei YangXu GaoYang YangWen Xuan LiuTao Wang
Yeong‐Shiau PuLibing WuZhuangzhuang ZhangXianjun DengBingyi LiuEnshu WangShenghao Liu
Honghai JiHao LiuShida LiuLi WangLingling Fan