Detection of Urban Space Community Structures in Island-Oriented Cities Based on Smart Bus Card Data
Publication: Journal of Urban Planning and Development
Volume 150, Issue 4
Abstract
The urban space community is the basic unit used to demonstrate the urban spatial structure, and the space community structure of island-oriented cities is different from that of general inland cities because they are formed based on the island and the inland, respectively. Through the case study of Xiamen, based on smart card data, this paper divides the obtained origin–destination data into local and global levels with trip cutoff thresholds. The distribution of city centers is analyzed by detecting the overall urban space community structure and the two-level intraisland and cross-island urban space community structure with the PageRank and community detection algorithms. The results revealed that: (1) in the spatial structure of the island-oriented city, the cores are clustered on the island, while the centers are distributed in bands and dots outside the island; (2) the community units are distributed across the island; and (3) the space community boundary of the island-oriented city is quite different from the artificially defined administrative unit boundary. To summarize, by enhancing the delineation of urban spatial communities using the Gaussian kernel function and least-squares cross-validation, improving the model granularity, and integrating data from multiple public transport modes, this paper achieved a more precise division of urban spatial community structures. Consequently, it revealed the distinctive urban form and developmental pattern of the island-oriented city, holding significant implications for investigating urban spatial layout studies.
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Data Availability Statement
Some or all data, models, or codes generated or used during the study are proprietary or confidential and may only be provided with restrictions.
Acknowledgments
This research was supported by the National Natural Science Foundation of China (No. 52078224) and the Overseas Study Program from China Scholarship Council.
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© 2024 American Society of Civil Engineers.
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Received: Jun 7, 2023
Accepted: Jun 27, 2024
Published online: Aug 28, 2024
Published in print: Dec 1, 2024
Discussion open until: Jan 28, 2025
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