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Integrating Data Mining and Microsimulation Modelling to Reduce Traffic Congestion: A Case Study of Signalized Intersections in Dhaka, Bangladesh

机译:集成数据挖掘和微仿模拟以减少交通拥堵:孟加拉国达卡信号交叉点的案例研究

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A growing body of research has applied intelligent transportation technologies to reduce traffic congestion at signalized intersections. However, most of these studies have not considered the systematic integration of traffic data collection methods when simulating optimum signal timing. The present study developed a three-part system to create optimized variable signal timing profiles for a congested intersection in Dhaka, regulated by fixed-time traffic signals. Video footage of traffic from the studied intersection was analyzed using a computer vision tool that extracted traffic flow data. The data underwent a further data-mining process, resulting in greater than 90% data accuracy. The final data set was then analyzed by a local traffic expert. Two hybrid scenarios based on the data and the experts input were created and simulated at the micro level. The resultant, custom, variable timing profiles for the traffic signals yielded a 40% reduction in vehicle queue length, increases in average travel speed, and a significant overall reduction in traffic congestion.
机译:越来越多的研究体现了应用智能运输技术,以减少信号交叉口的交通拥堵。然而,大多数研究在模拟了最佳信号时序时,这些研究没有考虑到交通数据收集方法的系统积分。本研究开发了一个三部分系统,为达卡中的拥挤交叉点创建了优化的可变信号时序配置文件,由固定时间交通信号调节。使用计算机视觉工具分析来自研究的交叉路口的流量的视频素材,从而提取了流量流数据。数据进行了进一步的数据挖掘过程,导致数据准确性大于90%。然后通过本地交通专家分析最终数据集。在微观水平上创建和模拟基于数据的两个混合情景和专家输入。交通信号的所得到的自定义变量分布产生了车辆队列长度的40%,平均行进速度增加,以及交通拥堵的显着整体减少。

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