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Mapping spatio-temporal patterns and detecting the factors of traffic congestion with multi-source data fusion and mining techniques

机译:用多源数据融合和采矿技术映射时空模式和检测交通拥堵因素

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The study focuses on mapping spatiotemporal patterns and detecting the potential drivers of traffic congestion with multi-source data. First, based on real-time traffic data retrieved from an online map, the k-means clustering algorithm was applied to classify the spatiotemporal distribution of congested roads. Then, we applied a geographical detector (Geo-detector) to mine the potential factors for each spatiotemporal pattern. The results showed six congestion patterns for intra-regional roads and inter-regional roads on weekdays. On both intraregional and inter-regional roads, congestion density reflected by building height was the strongest indicator during the morning peak period. Public facilities such as hospitals, tourist sites and green spaces located near areas of employment or residential areas contributed to congestion during and off-peak hours. On intra-regional roads, the sparse road network and greater distance from the city center contribute to congestion during peak hours. On inter-regional roads, the number of bus stops contributed most to the early evening peak congestion, while the design of the entrances to large buildings in mixed business areas and public service areas increased the level of congestion. The results suggest that land use should be more mixed in high-density areas as this would reduce the number of trips made to the city center. However, mixed land-use planning should also be combined with a detailed design of the microenvironment to improve accessibility for different travel modes in order to increase the efficiency of traffic and reduce congestion. The innovative approach can be potentially applied in traffic congestion and land use planning studies elsewhere based on real-time multi-source data.
机译:该研究侧重于映射时空模式,并检测具有多源数据的交通拥堵的潜在驱动因素。首先,基于从在线地图检索的实时流量数据,应用K-Means聚类算法来分类拥挤道路的时空分布。然后,我们应用了地理检测器(地理检测器)来挖掘每个时空图案的潜在因素。结果表明,工作日区域内政道路和区域间道路六种拥堵模式。在内部和区域间道路上,建筑高度反映的拥堵密度是早晨峰值期间最强的指标。在就业或住宅区附近的医院,旅游景点和绿地等公共设施涉及占用出峰值时间和低峰时段的拥堵。在区域内道路上,稀疏的道路网络和距离市中心的距离更远,在高峰时段有助于拥堵。在区域间道路上,公交车站数量为傍晚的峰值拥塞贡献,而混合业务领域的大型建筑物的入口的设计增加了拥堵水平。结果表明,土地使用应更加混合在高密度区域,因为这将减少到市中心所做的旅行人数。然而,混合土地使用规划也应与微环境的详细设计结合,以改善不同旅行模式的可访问性,以提高交通效率和减少拥塞。创新的方法可以基于实时多源数据的其他地方的交通拥堵和土地利用规划研究。

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