A conceptual model for identifying the risk susceptibility of urban green spaces using geo-spatial techniques
详细信息   
  • 作者:Ronita Bardhan ; Ramit Debnath…
  • 刊名:Modeling Earth Systems and Environment
  • 年:2016
  • 出版者:Springer International Publishing
  • 期:3
  • DOI:10.1007/s40808-016-0202-y
  • 来源:SpringerLink
  • 类型:期刊
摘要
Urban green spaces are often regarded as the harbinger of sustainability in the rapidly urbanizing world. This study forwards a conceptual framework towards urban green space (UGS) management by the quantification of risk susceptibility of the UGS at a neighborhood level by using remote sensing data and geo-spatial techniques. Objective measure of the UGS was performed using weighted evaluation of NDVI data at a 20 m × 20 m grid over the city of Kolkata. The normalized green index (NGI) was developed to quantify the implication of the built-up spaces in UGS risk susceptibility in the urban fabric. Both the satellite image data and the NGI values were spatially auto-correlated using bivariate Moran’s I to derive the intricate relationship between built-up area and green spaces using LISA. It was observed that the low green-spaces were greatly influenced by the high built-up area around it. This inference was extended on the Kolkata’s grid, the results revealed that the older part of the city had the most risk susceptible zones, whereas the area surrounded by wetlands were the most stable region bearing high resilience to urbanization. Hence, by determining the most risky zones for UGS degradation, planners and policy makers can efficiently allocate resources towards the sustainable development of the city by conserving and promoting UGS.KeywordsUrban green spacesGeo-spatialConcept-modelEnvironmentSpatial-autocorrelation