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Study on Urban Road Network Traffic District Division based on Clustering Analysis

机译:基于聚类分析的城市道路网络交通区划分研究

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Aiming at the problems of road congestion and complex road network information during peak commuting period, a spatial statistical method for traffic district division based on K-means algorithm is proposed. This method uses Jinan taxi GPS data, uses Python software to realize the K-means clustering division of taxi departure and departure points, and uses Moran's I model to analyze the spatial statistical characteristics of the partition results. Then, the taxi speed data is analyzed by ArcGIS software to further divide the community according to the clustering results. The results will be displayed on the map. The results show that this method can more reasonably and accurately classify traffic districts by collecting and analyzing a large number of historical data.
机译:旨在在高峰期通勤期间进行道路拥堵和复杂道路网络信息的问题,提出了一种基于K-MEAS算法的交通区划分的空间统计方法。该方法使用济南出租车GPS数据,使用Python软件实现出租车出发和出发点的K-means集群分工,并使用Moran的I模型分析分区结果的空间统计特征。然后,通过ArcGIS软件分析出租车速度数据,以进一步根据聚类结果分配社区。结果将显示在地图上。结果表明,该方法可以通过收集和分析大量历史数据来更合理和准确地分类交通区。

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