Author
Listed:
- Jiale Qian
(School of Public Policy and Management, Tsinghua University, Beijing 100084, China
Laboratory of Computational Social Science and State Governance, Tsinghua University, Beijing 100084, China)
- Sai Wang
(Department of Networks, China Mobile Communications Group Co., Ltd., Beijing 100033, China)
- Yi Ji
(Department of Networks, China Mobile Communications Group Co., Ltd., Beijing 100033, China)
- Zhen Wang
(Department of Networks, China Mobile Communications Group Co., Ltd., Beijing 100033, China)
- Ruihua Dang
(Department of Networks, China Mobile Communications Group Co., Ltd., Beijing 100033, China)
- Yunpeng Wu
(Department of Networks, China Mobile Communications Group Co., Ltd., Beijing 100033, China)
Abstract
Sustainable urban development increasingly depends on understanding how digital activity is distributed across space and time, yet the spatiotemporal dynamics of the urban digital landscape remain poorly mapped by conventional data sources. This study uses Beijing as an empirical testbed, applying a multi-dimensional analytical framework to massive mobile network traffic data to decode the metabolic rhythms, distributional laws, and functional organization of the urban digital landscape. The results reveal three findings. First, the urban digital landscape exhibits a sleepless trapezoidal temporal rhythm characterized by continuous saturation without a midday trough and a quantifiable weekend activation lag, indicating that digital metabolism is structurally decoupled from physical mobility patterns. Second, digital traffic follows a skew-normal distribution consistent with a 20/70 rule of spatial polarization, in which the top 20% of super-connector nodes sustain approximately 70% of total urban digital flow, yielding a Gini coefficient of 0.68 as a measurable indicator of infrastructure inequality and systemic vulnerability. Third, four distinct functional prototypes are identified—ranging from continuously active metropolitan cores to inverse-tidal ecological peripheries—empirically validating Beijing’s polycentric transformation through the lens of digital flows. These findings demonstrate that large-scale mobile network traffic data offers a replicable and structurally distinct lens for sustainable urban digital governance, supporting resilient network planning, equitable allocation of digital resources, and evidence-based monitoring of urban functional transformation in rapidly growing megacities.
Suggested Citation
Jiale Qian & Sai Wang & Yi Ji & Zhen Wang & Ruihua Dang & Yunpeng Wu, 2026.
"Decoding the Urban Digital Landscape for Sustainable Infrastructure Planning: Evidence from Mobile Network Traffic in Beijing,"
Sustainability, MDPI, vol. 18(6), pages 1-20, March.
Handle:
RePEc:gam:jsusta:v:18:y:2026:i:6:p:3007-:d:1898670
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