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A topology-based approach to identifying urban centers in America using multi-source geospatial big data
Abstract Urban structure can be better comprehended through analyzing its cores. Geospatial big data facilitate the identification of urban centers in terms of high accuracy and accessibility. However, previous studies seldom leverage multi-source geospatial big data to identify urban centers from a topological perspective. This study attempts to identify urban centers through the spatial integration of multi-source geospatial big data, including nighttime light imagery (NTL), building footprints (BFP) and street nodes of OpenStreetMap (OSM). We use a novel topological approach to construct complex networks from intra-urban hotspots based on the theory of centers by Christopher Alexander. We compute the degree of wholeness value for each hotspot as the centric index. The overlapped hotspots with the highest centric indices are regarded as urban centers. The identified urban centers in New York, Los Angeles, and Houston are consistent with their downtown areas, with overall accuracy of 90.23%. In Chicago, a new urban center is identified considering a larger spatial extent. The proposed approach can effectively and objectively prevent counting those hotspots with high intensity values but few neighbors into the result. This study proposes a topological approach for urban center identification and a bottom-up perspective for sustainable urban design.
Highlights Developed a topological method for urban center identification using big data. Developed a spatial big data fusion method to identify to urban centers. Proposed a centric index, the degree of wholeness value to evaluate the urban centers. The spatial units are objectively derived based on the data's own characteristic.
A topology-based approach to identifying urban centers in America using multi-source geospatial big data
Abstract Urban structure can be better comprehended through analyzing its cores. Geospatial big data facilitate the identification of urban centers in terms of high accuracy and accessibility. However, previous studies seldom leverage multi-source geospatial big data to identify urban centers from a topological perspective. This study attempts to identify urban centers through the spatial integration of multi-source geospatial big data, including nighttime light imagery (NTL), building footprints (BFP) and street nodes of OpenStreetMap (OSM). We use a novel topological approach to construct complex networks from intra-urban hotspots based on the theory of centers by Christopher Alexander. We compute the degree of wholeness value for each hotspot as the centric index. The overlapped hotspots with the highest centric indices are regarded as urban centers. The identified urban centers in New York, Los Angeles, and Houston are consistent with their downtown areas, with overall accuracy of 90.23%. In Chicago, a new urban center is identified considering a larger spatial extent. The proposed approach can effectively and objectively prevent counting those hotspots with high intensity values but few neighbors into the result. This study proposes a topological approach for urban center identification and a bottom-up perspective for sustainable urban design.
Highlights Developed a topological method for urban center identification using big data. Developed a spatial big data fusion method to identify to urban centers. Proposed a centric index, the degree of wholeness value to evaluate the urban centers. The spatial units are objectively derived based on the data's own characteristic.
A topology-based approach to identifying urban centers in America using multi-source geospatial big data
Ren, Zheng (author) / Seipel, Stefan (author) / Jiang, Bin (author)
2023-10-08
Article (Journal)
Electronic Resource
English
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