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Analysis of traffic state variation patterns for urban road network based on spectral clustering:

机译:基于光谱聚类的城市道路网络交通状态变化模式分析:

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The traffic state evolution of urban road network is complicated and varies significantly with different roads, functional zones, and social activities. Considering the regularity of human travel activities, from a long-term perspective, typical traffic state variation patterns for road network could be extracted. In order to extract traffic variation features, spectral clustering technique, an unsupervised learning method, is applied to analyze daily traffic state variation for the region road network based on section-based traffic speed dataset. The proposed method transforms traditional clustering problems into graph partition problems, which is suitable for the clustering problems with multiple attributes by dimension reduction. In this study, five daily traffic state variation clusters are efficiently grouped with different regularities and ranges. The frequency distributions of the sections in each cluster are related with hierarchies, locations, and functions of roads. Long-term heavy-traffic road ...
机译:城市道路网络的交通状态演变是复杂的,不同的道路,功能区和社交活动显着变化。考虑到人类旅行活动的规律性,从长期的角度来看,可以提取道路网络的典型交通状态变化模式。为了提取业务变化特征,频谱聚类技术,一种无监督的学习方法,应用于基于基于截面的业务速度数据集来分析区域道路网络的日常交通状态变化。该方法将传统的聚类问题转换为图形分区问题,这适用于尺寸减少的多个属性的聚类问题。在本研究中,五个日常交通状态变化集群与不同的规则和范围有效地分组。每个群集中的部分的频率分布与道路的层次结构,位置和功能有关。长期重型交通路......

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