4.7 Article

Urban morphology in China: Dataset development and spatial pattern characterization

期刊

SUSTAINABLE CITIES AND SOCIETY
卷 71, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.scs.2021.102981

关键词

Urban morphology; Urban canopy; Canopy geometry; Urban climate; Chinese cities

资金

  1. National Natural Science Foundation of China [41971166]

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This study focuses on the urban morphological datasets of 36 major cities in China, providing detailed parameters such as building height, width, street width, sky view factor, etc. Spatial patterns of these parameters within and across cities are characterized, showing significant variations which are crucial for urban climate research and modeling.
Characterizing urban morphology is critical for urban climate examination and modeling. However, highresolution urban morphological datasets are lacking, especially in Chinese cities that undergoing fasturbanization. We proposed a two-step rasterization method to develop an urban morphological dataset at a resolution of 100 m for 36 major cities in China. The morphological dataset includes building height, width, fraction, and street width as well as sky view factor and frontal area index. We then characterized the spatial patterns of these morphological parameters within and across cities. In general, the derived morphological parameters match the raw vector data well in terms of both magnitude and spatial distribution at the block, district, and city scales. The morphological parameters show large spatial variations within and across cities. On the city scale, the city center shows a larger building height and frontal area index, but smaller street width and sky view factor, compared to the city edge. Across cities, the morphological parameters generally show latitudinal variations, with higher building height and frontal area index, but smaller street width and sky view factor in the south. This new morphological dataset provides fundamental data to examine urban climate mechanism, classify urban land use, and drive urban climate model.

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