2021
DOI: 10.1155/2021/6648116
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How to Identify Patterns of Citywide Dynamic Traffic at a Low Cost? An In‐Depth Neural Network Approach with Digital Maps

Abstract: The identification and analysis of the spatiotemporal dynamic traffic patterns in citywide road networks constitute a crucial process for complex traffic management and control. However, city-scale and synchronal traffic data pose challenges for such kind of quantification, especially during peak hours. Traditional studies rely on data from road-based detectors or multiple communication systems, which are limited in not only access but also coverage. To avoid these limitations, we introduce real-time, traffic … Show more

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