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Urban Traffic Flow Prediction System Using a Multifactor Pattern Recognition Model

机译:基于多因素模式识别模型的城市交通流量预测系统

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摘要

Current urban traffic congestion costs are increasing on account of the population growth of cities and increasing numbers of vehicles. Many cities are adopting intelligent transportation systems (ITSs) to improve traffic efficiency. ITSs can be used for monitoring traffic congestion using detectors, such as calculating an estimated time of arrival or suggesting a detour route. In this paper, we propose an urban traffic flow prediction system using a multifactor pattern recognition model, which combines Gaussian mixture model clustering with an artificial neural network. This system forecasts traffic flow by combining road geographical factors and environmental factors with traffic flow properties from ITS detectors. Experimental results demonstrate that the proposed model produces more reliable predictions compared with existing methods.
机译:由于城市人口的增长和车辆数量的增加,当前的城市交通拥堵成本正在增加。许多城市正在采用智能交通系统(ITS)来提高交通效率。 ITS可用于使用检测器来监视交通拥堵,例如计算估计的到达时间或建议绕行路线。在本文中,我们提出了一种使用多因素模式识别模型的城市交通流量预测系统,该系统将高斯混合模型聚类与人工神经网络相结合。该系统通过结合道路地理因素和环境因素以及来自ITS检测器的交通流量属性来预测交通流量。实验结果表明,与现有方法相比,所提出的模型产生了更可靠的预测。

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