URBAN GROWTH MODELING OF PHNOM PENH, CAMBODIA USING SATELLITE IMAGERIES AND A LOGISTIC REGRESSION MODEL

被引:0
作者
Mom, Kompheak [1 ]
Ongsomwang, Suwit [1 ]
机构
[1] Suranaree Univ Technol, Sch Remote Sensing, Inst Sci, Nakhon Ratchasima 30000, Thailand
来源
SURANAREE JOURNAL OF SCIENCE AND TECHNOLOGY | 2016年 / 23卷 / 04期
关键词
Urban growth modeling; logistic regression model; land cover classification; Phnom Penh; Cambodia;
D O I
暂无
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Phnom Penh City is facing rapid population growth with Cambodia having the second highest urban expansion rate in Asia, and it has encountered poor urban planning that results in urban sprawl and the loss of natural areas and agricultural land. To solve this problem, spatial and temporal dynamic driving factors for land use and land cover change should be well understood for enhancing urban planning. The specific objectives of the study are (1) to assess the land cover status and its change; (2) to employ a logistic regression (LR) model to discover the driving factors for urban growth; and (3) to predict the future urban growth pattern of Phnom Penh in 2030. Four main components of the research methodology are here conducted comprising (1) data collection; (2) data preparation; (3) model simulation and validation; and (4) urban growth prediction. Results showed that the urban and built-up areas have continuously increased from 2002 to 2015 resulting in a major decline of arable land, vegetation and water bodies, while miscellaneous land was shown as fluctuating. Meanwhile, the pattern of urban growth expanded towards the southern, northern, and western areas of Phnom Penh during 20022009 with all types of growth including infill growth, expansion growth, linear branch, and isolated growth. However, during 2009-2015, the urban growth pattern occurred in all directions with expansion growth, clustered branch, and isolated growth. The driving factors for urban growth from the LR model for the 2002-2015, 2002-2009, and 2009-2015 periods varied according to the urban and built-up area pattern and time. Two common driving factors under the top 5 dominant factors, namely distance to the existing urban cluster and distance to an industrial area, showed a negative correlation with urban growth in the 3 periods. In addition, the final urban growth pattern from the LR model of the 3 periods showed a good result for overall accuracy at about 91%, 96%, and 94% a successful fit of urban allocation at about 58%, 54%, and 44%, and a relative operating characteristic at about 0.90, 0.95, and 0.90, respectively. Finally, the urban growth pattern prediction for Phnom Penh in 2030 from the optimum LR model of the 2002-2015 period with the estimated urban growth area using the Markov chain model revealed that urban growth tends to take place in the north, south, and east around the existing urban clusters, and some are expected to occur along the major roads and ring roads. In conclusion, the integration of the LR model, remote sensing, and GIS can be efficiently used as a tool to understand the driving factors and to predict the future urban growth pattern of Phnom Penh. It contributes significant information as a guideline for planners and decision makers.
引用
收藏
页码:481 / 500
页数:20
相关论文
共 50 条
  • [31] Modeling the potential distribution of shallow-seated landslides using the weights of evidence method and a logistic regression model: a case study of the Sabae Area, Japan
    Song, Ru-Hua
    Hiromu, Daimaru
    Kazutoki, Abe
    Usio, Kurokawa
    Sumio, Matsuura
    INTERNATIONAL JOURNAL OF SEDIMENT RESEARCH, 2008, 23 (02) : 106 - 118
  • [32] Non-Zero Crossing Point Detection in a Distorted Sinusoidal Signal Using Logistic Regression Model
    Veeramsetty, Venkataramana
    Srinivasula, Srividya
    Salkuti, Surender Reddy
    COMPUTERS, 2022, 11 (06)
  • [33] Development of a Probability Prediction Model for Tropical Cyclone Genesis in the Northwestern Pacific using the Logistic Regression Method
    Choi, Ki-Seon
    Kang, KiRyong
    Kim, Do-Woo
    Kim, Tae-Ryong
    JOURNAL OF THE KOREAN EARTH SCIENCE SOCIETY, 2010, 31 (05): : 454 - 464
  • [34] Predicting the recurrence of facial synkinesis after epineurectomy of facial nerve trunk using logistic regression model
    Li, Yihua
    Shen, Yiman
    Wang, Haopeng
    Zhang, Zhongding
    Wang, Baimiao
    Cai, Xiaomin
    Li, Shiting
    JOURNAL OF PLASTIC RECONSTRUCTIVE AND AESTHETIC SURGERY, 2025, 101 : 119 - 125
  • [35] Analysing university student pension insurance using the K-prototypes algorithm and logistic regression model
    Wei Q.
    International Journal of Information and Communication Technology, 2024, 24 (06) : 92 - 102
  • [36] Quantitative assessment of the effects of outside temperature on farrowing rate in gilts and sows by using a multivariate logistic regression model
    Sasaki, Yosuke
    Fujie, Madoka
    Nakatake, Shingo
    Kawabata, Tadahiro
    ANIMAL SCIENCE JOURNAL, 2018, 89 (08) : 1187 - 1193
  • [37] Online shopping consumer perception analysis and future network security service technology using logistic regression model
    Lu, Feng
    PEERJ COMPUTER SCIENCE, 2024, 10
  • [38] Epidemiology of fat replacement of the right ventricular myocardium determined by multislice computed tomography using a logistic regression model
    Imada, Megumi
    Funabashi, Nobusada
    Asano, Miki
    Uehara, Masae
    Hori, Yasuhiko
    Ueda, Marehiko
    Komuro, Issei
    INTERNATIONAL JOURNAL OF CARDIOLOGY, 2007, 119 (03) : 410 - 413
  • [39] Modeling gridded urban fractional change using the temporal context information in the urban cellular automata model
    He, Wanru
    Li, Xuecao
    Zhou, Yuyu
    Liu, Xiaoping
    Gong, Peng
    Hu, Tengyun
    Yin, Peiyi
    Huang, Jianxi
    Yang, Jianyu
    Miao, Shuangxi
    Wang, Xi
    Wu, Tinghai
    CITIES, 2023, 133
  • [40] A U-Net Model for Urban Land Cover Classification Using VHR Satellite Images
    Fawzy, Mohamed
    Barsi, Arpad
    PERIODICA POLYTECHNICA-CIVIL ENGINEERING, 2024, : 98 - 108