Modeling urban growth in Atlanta using logistic regression

被引:374
|
作者
Hu, Zhiyong [1 ]
Lo, C. P. [2 ]
机构
[1] Univ W Florida, Dept Environm Studies, Pensacola, FL 32514 USA
[2] Univ Georgia, Dept Geog, Athens, GA 30602 USA
关键词
urban growth; logistic regression; GIS; scale; fractal;
D O I
10.1016/j.compenvurbsys.2006.11.001
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
This study applied logistic regression to model urban growth in the Atlanta Metropolitan Area of Georgia in a GIS environment and to discover the relationship between urban growth and the driving forces. Historical land use/cover data of Atlanta were extracted from the 1987 and 1997 Landsat TM images. Multi-resolution calibration of a series of logistic regression models was conducted from 50 m to 300 m at intervals of 25 m. A fractal analysis pointed to 225 m as the optimal resolution of modeling. The following two groups of factors were found to affect urban growth in different degrees as indicated by odd ratios: (1) population density, distances to nearest urban clusters, activity centers and roads, and high/low density urban uses (all with odds ratios < 1); and (2) distance to the CBD, number of urban cells within a 7 x 7 cell window, bare land, crop/grass land, forest, and UTM northing coordinate (all with odds ratios > 1). A map of urban growth probability was calculated and used to predict future urban patterns. Relative operating characteristic (ROC) value of 0.85 indicates that the probability map is valid. It was concluded that despite logistic regression's lack of temporal dynamics, it was spatially explicit and suitable for multi-scale analysis, and most importantly, allowed much deeper understanding of the forces driving the growth and the formation of the urban spatial pattern. (c) 2006 Elsevier Ltd. All rights reserved.
引用
收藏
页码:667 / 688
页数:22
相关论文
共 50 条
  • [21] Integrating logistic regression with ant colony optimization for smart urban growth modelling
    Shifa Ma
    Feng Liu
    Chunlei Ma
    Xuemin Ouyang
    Frontiers of Earth Science, 2020, 14 : 77 - 89
  • [22] Modeling wildfire drivers in Chinese tropical forest ecosystems using global logistic regression and geographically weighted logistic regression
    Zhangwen Su
    Lujia Zheng
    Sisheng Luo
    Mulualem Tigabu
    Futao Guo
    Natural Hazards, 2021, 108 : 1317 - 1345
  • [23] Modeling wildfire drivers in Chinese tropical forest ecosystems using global logistic regression and geographically weighted logistic regression
    Su, Zhangwen
    Zheng, Lujia
    Luo, Sisheng
    Tigabu, Mulualem
    Guo, Futao
    NATURAL HAZARDS, 2021, 108 (01) : 1317 - 1345
  • [24] Predicting company growth using logistic regression and neural networks
    Zekic-Susac, Marijana
    Sarlija, Natasa
    Has, Adela
    Bilandzic, Ana
    CROATIAN OPERATIONAL RESEARCH REVIEW, 2016, 7 (02) : 229 - 248
  • [25] Modeling categorical variables by logistic regression
    Peng, CYJ
    Manz, BD
    Keck, J
    AMERICAN JOURNAL OF HEALTH BEHAVIOR, 2001, 25 (03): : 278 - 284
  • [26] Binary logistic regression modeling with TensorFlow™
    Zhang, Zhongheng
    Mo, Lei
    Huang, Chen
    Xu, Ping
    ANNALS OF TRANSLATIONAL MEDICINE, 2019, 7 (20)
  • [27] Double logistic curve in regression modeling
    Lipovetsky, Stan
    JOURNAL OF APPLIED STATISTICS, 2010, 37 (11) : 1785 - 1793
  • [28] Modeling determinants of urban growth in Dongguan, China: a spatial logistic approach
    Felix H. F. Liao
    Y. H. Dennis Wei
    Stochastic Environmental Research and Risk Assessment, 2014, 28 : 801 - 816
  • [29] Nonparametric smoothing in modeling logistic regression
    Lin, Kuo-Chin
    Chen, Yi-Ju
    JOURNAL OF STATISTICS & MANAGEMENT SYSTEMS, 2006, 9 (02): : 381 - 395
  • [30] Modeling determinants of urban growth in Dongguan, China: a spatial logistic approach
    Liao, Felix H. F.
    Wei, Y. H. Dennis
    STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2014, 28 (04) : 801 - 816