Analyzing The Effects Of Rainfall On The Urban Traffic Congestion Bottlenecks By Using Floating Car Data

2019 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS 2019)(2019)

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摘要
The development of geospatial big data makes it possible to study traffic congestion issues through floating car data (FCD). FCD can help predict the traffic congestion bottlenecks and provide corresponding solutions to address traffic problems. However, few studies have focused on the distribution and changes in traffic congestion bottlenecks throughout a mega-city. This study proposes an index calculation and clustering (ICC) model by integrating PageRank and clustering algorithms via multisource data, including rainfall data, FCD and OpenStreetMap data. We selected Shenzhen, the largest developed city in South China, as the study area. The results demonstrate that there are three peak periods of citizen travel: 8:00-10:00, 14:00-16:00, and 18:00-20:00. Road speeds after rainfall decrease, and traffic congestion areas increase. The results also quantitatively analyzed the differences of traffic congestion between work day and rest day. The proposed ICC model can offer a thorough understanding of urban traffic congestion areas, which can help policy makers optimize alleviation strategies.
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关键词
Geospatial big data, traffic congestion, rainfall, floating car data
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