Scalable Analysis of Urban Scaling Laws: Leveraging Cloud Computing to Analyze 21,280 Global Cities
Zhenhui Li, Hongwei Zhang, Kan Wu

TL;DR
This paper introduces a cloud-based system that enables rapid analysis of urban scaling laws across over 21,000 cities worldwide, significantly advancing large-scale geospatial research capabilities.
Contribution
The study presents a novel scalable geospatial data processing system that drastically reduces analysis time for global city datasets, enabling new insights into urban scaling laws.
Findings
Urban scaling law varies across regions.
Cloud system reduces processing time from days to minutes.
Large-scale analysis extends previous city studies.
Abstract
Cities play a pivotal role in human development and sustainability, yet studying them presents significant challenges due to the vast scale and complexity of spatial-temporal data. One such challenge is the need to uncover universal urban patterns, such as the urban scaling law, across thousands of cities worldwide. In this study, we propose a novel large-scale geospatial data processing system that enables city analysis on an unprecedented scale. We demonstrate the system's capabilities by revisiting the urban scaling law across 21,280 cities globally, using a range of open-source datasets including road networks, nighttime light intensity, built-up areas, and population statistics. Analyzing the characteristics of 21,280 cities involves querying over half a billion geospatial data points, a task that traditional Geographic Information Systems (GIS) would take several days to process.…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis
