2020
DOI: 10.3390/ijgi9110669
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Rural–Urban Transition of Hanoi (Vietnam): Using Landsat Imagery to Map Its Recent Peri-Urbanization

Abstract: The current trend towards global urbanization presents new environmental and social challenges. For this reason, it is increasingly important to monitor urban growth, mainly in those regions undergoing the fastest urbanization, such as Southeast Asia. Hanoi (Vietnam) is a rapidly growing medium-sized city: since new economic policies were introduced in 1986, this area has experienced a rapid demographic rise and radical socio-economic transformation. In this study, we aim to map not only the recent urban expan… Show more

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Cited by 16 publications
(11 citation statements)
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References 49 publications
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“…Zhao [116] evaluated the spatio-temporal trend of urbanization in Southeast Asia based on the DMSP/OLS night light data time series and said that Southeast Asia enjoyed rapid development of urbanization in many forms during 1992-2013. Pandey [117], Xie [118], and Mauro [119] analyzed urbanization dynamics in India, the United States, and Vietnam using night light data and mapped their land use and cover changes. In terms of empirical studies of urbanization in China using night lighting data, Ma [120] quantitatively assessed the rate of urbanization in China, Xu [121,122], Ju [123], Ma [124], and Gao [125] analyzed the spatio-temporal dynamic change of urbanization in China, and He [126] made a reductive analysis of the urbanization process.…”
Section: Index Selectionmentioning
confidence: 99%
“…Zhao [116] evaluated the spatio-temporal trend of urbanization in Southeast Asia based on the DMSP/OLS night light data time series and said that Southeast Asia enjoyed rapid development of urbanization in many forms during 1992-2013. Pandey [117], Xie [118], and Mauro [119] analyzed urbanization dynamics in India, the United States, and Vietnam using night light data and mapped their land use and cover changes. In terms of empirical studies of urbanization in China using night lighting data, Ma [120] quantitatively assessed the rate of urbanization in China, Xu [121,122], Ju [123], Ma [124], and Gao [125] analyzed the spatio-temporal dynamic change of urbanization in China, and He [126] made a reductive analysis of the urbanization process.…”
Section: Index Selectionmentioning
confidence: 99%
“…The combination of multiple independent variables is more effective than using only one independent variable to predict carbon density [55]. The general expression of multiple linear regression equation is shown in Equation (1).…”
Section: Models For Carbon Density Mappingmentioning
confidence: 99%
“…Urban forests can not only improve the aesthetic quality of cities but also play an important role in regulating the local climate [1,2]. They help buffer buildings against heat and wind, thus helping reduce the energy demands for heating and cooling while also absorbing the heat emitted from buildings [3].…”
Section: Introductionmentioning
confidence: 99%
“…Overall, the positive features of the Imageability of Hanoi are the mixed architecture and the vibrant streets are reflected by a large number of nonrectangular-shaped buildings and people on the street, as well as the presence of outdoor dining across most urban typologies. However, reduced urban design qualities are attributed to the lack of open spaces, which is a consequence of the traditional compact urban form, as well as the recent densification leaving few green open spaces [32]. The vibrant atmosphere on the street across the various urban typologies makes the neighborhoods memorable but simultaneously creates considerable noise, which reduces the Imageability quality.…”
Section: Imageabilitymentioning
confidence: 99%