论文标题
使用众包数据衍生的融合参数,为发展中国家的自适应交通信号控制
Adaptive Traffic Signal Control for Developing Countries Using Fused Parameters Derived from Crowd-Source Data
论文作者
论文摘要
移动技术的进步使经济收集,存储,处理和流量数据共享。这些数据可通过各种应用程序界面(API)访问预期的用户,可用于实时识别和减轻拥塞。在本文中,从Google流量API中获取了定量(到达时间)和定性(颜色编码的拥塞水平)数据。反映异构交通条件的新参数被定义和使用,用于实时控制交通信号,同时保持绿色时间比率。所提出的方法利用了计算机网络中常用的避免拥堵的原理。在高峰时段,在德里(印度)的三个不同的交叉点上观察到自适应拥塞水平。它显示出良好的变化,因此对控制算法有效起作用敏感。此外,模拟研究确定了建议的控制算法减少等待时间和拥塞。所提出的方法为交通传感和跟踪技术提供了廉价的替代方法。
Advancement of mobile technologies has enabled economical collection, storage, processing, and sharing of traffic data. These data are made accessible to intended users through various application program interfaces (API) and can be used to recognize and mitigate congestion in real time. In this paper, quantitative (time of arrival) and qualitative (color-coded congestion levels) data were acquired from the Google traffic APIs. New parameters that reflect heterogeneous traffic conditions were defined and utilized for real-time control of traffic signals while maintaining the green-to-red time ratio. The proposed method utilizes a congestion-avoiding principle commonly used in computer networking. Adaptive congestion levels were observed on three different intersections of Delhi (India), in peak hours. It showed good variation, hence sensitive for the control algorithm to act efficiently. Also, simulation study establishes that proposed control algorithm decreases waiting time and congestion. The proposed method provides an inexpensive alternative for traffic sensing and tracking technologies.