Abstract
Metropolitan cities are facing many socio-economic problems (e.g., frequent traffic congestion, unexpected emergency events, and even human-made disasters) related to urban crowd flows, which can be described in terms of the gathering process of a flock of moving objects (e.g., vehicles, pedestrians) towards specific destinations during a given time period via different travel routes. Understanding the spatio-temporal characteristics of urban crowd flows is therefore of critical importance to traffic management and public safety, yet it is very challenging as it is affected by many complex factors, including spatial dependencies, temporal dependencies, and environmental conditions. In this research, we propose a novel matrix-computation-based method for modeling the morphological evolutionary patterns of urban crowd flows. The proposed methodology consists of four connected steps: (1) defining urban crowd levels, (2) deriving urban crowd regions, (3) quantifying their morphological changes, and (4) delineating the morphological evolution patterns. The proposed methodology integrates urban crowd visualization, identification, and correlation into a unified and efficient analytical framework. We validated the proposed methodology under both synthetic and real-world data scenarios using taxi mobility data in Wuhan, China as an example. Results confirm that the proposed methodology can enable city planners, municipal managers, and other stakeholders to identify and understand the gathering process of urban crowd flows in an informative and intuitive manner. Limitations and further directions with regard to data representativeness, data sparseness, pattern sensitivity, and spatial constraint are also discussed.
Highlights
As an increasing proportion of the world’s population are migrating to urbanized areas, many metropolitan cities are facing many serious socio-economic problems, such as frequent traffic congestion, unexpected emergency events, and tragic human-made disasters, to list a few [1]
Based on the spatial distribution and the statistical characteristics of the derived urban crowd flows from taxi mobility data, we argue that citywide crowd hotspots are concentrated at a few critical locations and are recurrent in both spatial and temporal dimensions
We found that the morphological evolutionary patterns of individual slowed crowd regions were different in the middle of the night (i.e., 00:00 to 03:00 h), morning rush hours (i.e., 06:00 to 09:00 h), afternoon rush hours (i.e., 12:00 to 15:00 h), and evening rush hours (i.e., 18:00 to 21:00 h)
Summary
As an increasing proportion of the world’s population are migrating to urbanized areas, many metropolitan cities are facing many serious socio-economic problems, such as frequent traffic congestion, unexpected emergency events, and tragic human-made disasters, to list a few [1] Many of these problems are caused by huge urban crowd flows, referring to the gathering process of a flock of moving objects (e.g., vehicles, pedestrians) towards specific destinations during a given time period via different travel routes [2]. There is an urgent need for identifying, analyzing, and modeling the morphological evolutionary patterns of urban crowd flows This will provide insights into citywide population concentration (e.g., road traffic congestion), on what factors are correlated in urban crowdedness, and how crowdedness propagates from one place (e.g., road, block) to another.
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