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Speed pattern recognition technique for short-term traffic forecasting based on traffic dynamics

机译:基于交通动力学的短期交通预测速度模式识别技术

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摘要

This study introduces a new short-term traffic forecasting technique, based on the dynamic features of traffic data derived from vehicles moving in urban networks. The authors goal is to forecast the values of appropriate traffic status indicators such as average travel time or speed, for one or more time steps in the future until the next half hour. The proposed forecasting technique is based on road profiles generated from the application of data clustering techniques on real traffic data. Data clustering is applied after the original feature space is transformed to a new one of a significantly lower dimension. This transformation is based on the dynamic characteristics of current traffic, expressed in the form of the speed derivatives. To evaluate the proposed technique they used two-week historical data from the city of Berlin, Germany. Extensive evaluation results indicate improvement of the forecasting accuracy after comparison with a set of existing traffic forecasting techniques.
机译:这项研究基于从城市网络中行驶的车辆得出的交通数据的动态特征,引入了一种新的短期交通预测技术。作者的目标是预测未来一个或多个时间步长(直到下一个半小时)的适当交通状态指标(例如平均旅行时间或速度)的值。所提出的预测技术是基于将数据聚类技术应用于实际交通数据而生成的道路轮廓。在将原始特征空间转换为明显较低维度的新特征之后,将应用数据聚类。此转换基于当前流量的动态特性,以速度导数的形式表示。为了评估所提出的技术,他们使用了来自德国柏林市的两周历史数据。广泛的评估结果表明,与一组现有的流量预测技术相比,预测精度有所提高。

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