Estimating Road Traffic Congestion from Cell Dwell Time using Neural Network

W. Pattara-Atikom, R. Peachavanish
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引用次数: 44

Abstract

In this study, we investigated an alternative method to estimate the degree of road traffic congestion based on a new measurement metric called cell dwell time (CDT) using simple feedforward backpropagation neural network. CDT is the duration that a cellular phone is registered to a base station before handing off to another base station. As a vehicle with cellular phone traverses along the road, cell handoffs occur and the values of CDT vary. Our assumption is that the values of CDT relate to the degree of traffic congestion and that high CDTs indicate congested traffic. In this study, we measured series of CDTs while driving along arterial roads in Bangkok metropolitan area. Human judgment of traffic condition was recorded into one of the three levels indicating congestion degree -free flow, moderate, or highly congested. Neural network was then trained and tested using the collected data against human perception. The results showed promising performance of congestion estimation with accuracy of 79.43%, precision ranging from 73.53% to 85.19%, and mean square error of 0.44.
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基于小区停留时间的道路交通拥堵神经网络估计
在这项研究中,我们研究了一种基于简单前馈反向传播神经网络的新的测量指标——细胞停留时间(CDT)来估计道路交通拥堵程度的替代方法。CDT是蜂窝电话在转移到另一个基站之前注册到一个基站的持续时间。当携带移动电话的车辆沿着道路行驶时,会发生手机切换,并且CDT值会发生变化。我们的假设是CDT的值与交通拥堵的程度有关,高CDT表示交通拥堵。在这项研究中,我们测量了曼谷大都市区主干道行驶时的一系列CDTs。人类对交通状况的判断被记录为三个级别中的一个,即拥堵程度-无流量,中度或高度拥堵。然后使用收集到的数据对神经网络进行训练和测试,以对抗人类的感知。结果表明,拥塞估计的准确率为79.43%,精度为73.53% ~ 85.19%,均方误差为0.44。
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