Fast Identification of Urban Sprawl Based on K-Means Clustering with Population Density and Local Spatial Entropy
As urban sprawl is proven to jeopardize the sustainability system of cities, the identification of urban sprawl is essential for urban studies. Compared with previous related studies which tend to utilize more and more complicated variables to recognize urban sprawl while still retaining an element...
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doaj-90128c4c993743bbb153c3cc58cf2b872020-11-25T01:08:07ZengMDPI AGSustainability2071-10502018-07-01108268310.3390/su10082683su10082683Fast Identification of Urban Sprawl Based on K-Means Clustering with Population Density and Local Spatial EntropyLingbo Liu0Zhenghong Peng1Hao Wu2Hongzan Jiao3Yang Yu4Jie Zhao5Department of Urban Planning, School of Urban Design, Wuhan University, Wuhan 430072, ChinaDepartment of Graphics and Digital Technology, School of Urban Design, Wuhan University, Wuhan 430072, ChinaDepartment of Graphics and Digital Technology, School of Urban Design, Wuhan University, Wuhan 430072, ChinaDepartment of Graphics and Digital Technology, School of Urban Design, Wuhan University, Wuhan 430072, ChinaDepartment of Urban Planning, School of Urban Design, Wuhan University, Wuhan 430072, ChinaDepartment of Urban Planning, School of Urban Design, Wuhan University, Wuhan 430072, ChinaAs urban sprawl is proven to jeopardize the sustainability system of cities, the identification of urban sprawl is essential for urban studies. Compared with previous related studies which tend to utilize more and more complicated variables to recognize urban sprawl while still retaining an element of uncertainty, this paper instead proposes a simplified model to identify urban sprawl patterns. This is a working theory which is based on a diagram interpretation of the classic urban spatial structure patterns of the Chicago School. The method used in our study is K-means clustering with gridded population density and local spatial entropy. The results and comparison with open population data and mobile phone data verify the assumption and furthermore indicate that the accuracy of source population data will limit the precision of output identification. This article concludes that urban sprawl is mainly dominated by population and surrounding unevenness. Moreover, the Floating Catchment Area (FCA) local spatial entropy method presented in this research brings about an integration of Shannon entropy, Tobler’s first law of geography and the Moore neighborhood, improving the spatial homogeneity and locality of Batty’s Spatial Entropy model which can only be used in a general scope.http://www.mdpi.com/2071-1050/10/8/2683urban sprawlK-means clusteringFloating Catchment Area (FCA)local spatial entropypopulation densityElbow method |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Lingbo Liu Zhenghong Peng Hao Wu Hongzan Jiao Yang Yu Jie Zhao |
spellingShingle |
Lingbo Liu Zhenghong Peng Hao Wu Hongzan Jiao Yang Yu Jie Zhao Fast Identification of Urban Sprawl Based on K-Means Clustering with Population Density and Local Spatial Entropy Sustainability urban sprawl K-means clustering Floating Catchment Area (FCA) local spatial entropy population density Elbow method |
author_facet |
Lingbo Liu Zhenghong Peng Hao Wu Hongzan Jiao Yang Yu Jie Zhao |
author_sort |
Lingbo Liu |
title |
Fast Identification of Urban Sprawl Based on K-Means Clustering with Population Density and Local Spatial Entropy |
title_short |
Fast Identification of Urban Sprawl Based on K-Means Clustering with Population Density and Local Spatial Entropy |
title_full |
Fast Identification of Urban Sprawl Based on K-Means Clustering with Population Density and Local Spatial Entropy |
title_fullStr |
Fast Identification of Urban Sprawl Based on K-Means Clustering with Population Density and Local Spatial Entropy |
title_full_unstemmed |
Fast Identification of Urban Sprawl Based on K-Means Clustering with Population Density and Local Spatial Entropy |
title_sort |
fast identification of urban sprawl based on k-means clustering with population density and local spatial entropy |
publisher |
MDPI AG |
series |
Sustainability |
issn |
2071-1050 |
publishDate |
2018-07-01 |
description |
As urban sprawl is proven to jeopardize the sustainability system of cities, the identification of urban sprawl is essential for urban studies. Compared with previous related studies which tend to utilize more and more complicated variables to recognize urban sprawl while still retaining an element of uncertainty, this paper instead proposes a simplified model to identify urban sprawl patterns. This is a working theory which is based on a diagram interpretation of the classic urban spatial structure patterns of the Chicago School. The method used in our study is K-means clustering with gridded population density and local spatial entropy. The results and comparison with open population data and mobile phone data verify the assumption and furthermore indicate that the accuracy of source population data will limit the precision of output identification. This article concludes that urban sprawl is mainly dominated by population and surrounding unevenness. Moreover, the Floating Catchment Area (FCA) local spatial entropy method presented in this research brings about an integration of Shannon entropy, Tobler’s first law of geography and the Moore neighborhood, improving the spatial homogeneity and locality of Batty’s Spatial Entropy model which can only be used in a general scope. |
topic |
urban sprawl K-means clustering Floating Catchment Area (FCA) local spatial entropy population density Elbow method |
url |
http://www.mdpi.com/2071-1050/10/8/2683 |
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