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Analysis and forecasting of urban traffic condition based on categorical data

机译:基于分类数据的城市交通条件分析与预测

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Urban traffic prediction is a critical component in intelligent transportation systems for both citizens and traffic management agencies. It is beneficial to know current and future traffic conditions prior a trip or a route for travelers. And it is also very helpful for proactive traffic management for transportation administrative sectors. In this paper, we apply classification techniques to forecast traffic conditions based on categorical data collected from open web maps. To this end, we first collect traffic condition data from AMAP which is a web map, navigation and location based services provider in China. Then we primarily analyze AMAP data with trend analysis and power spectrum analysis. Finally, we employ random walk, nai?ve Bayes, decision tree and support vector machine methods to forecast traffic conditions in the future based on historical and current conditions. Experimental results demonstrate that it is feasible to make forecast on traffic conditions with reasonable accuracy.
机译:城市交通预测是公民和交通管理机构智能交通系统中的关键组成部分。知道旅行前的当前和未来的交通状况或旅行者的路线是有益的。它对运输行政部门的主动交通管理也非常有帮助。在本文中,我们将分类技术应用于基于从开放式Web地图中收集的分类数据预测流量条件。为此,我们首先从Amap收集来自AMAP的交通状况数据,它是中国的网页,导航和基于位置的服务提供商。然后我们主要分析趋势分析和功率谱分析的AMAP数据。最后,我们采用随机步行,Nai?Ve贝父,决策树,支持向量机方法,以基于历史和当前条件预测未来的交通状况。实验结果表明,在具有合理准确性的交通状况上进行预测是可行的。

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