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Analyzing the non-stationary space relationship of a city's degree of vegetation and social economic conditions in Shanghai, China using OLS and GWR models

机译:奥尔斯和GWR模型分析了中国上海市植被和社会经济条件的非平稳空间关系

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With the fast urbanization process, how does the vegetation environment change in one of the most economically developed metropolis, Shanghai in East China? To answer this question, there is a pressing demand to explore the non-stationary relationship between socio-economic conditions and vegetation across Shanghai. In this study, environmental data on vegetation cover, the Normalized Difference Vegetation Index (NDVI) derived from MODIS imagery in 2003 were integrated with socio-economic data to reflect the city's vegetative conditions at the census block group level. To explore regional variations in the relationship of vegetation and socio-economic conditions, Ordinary Least Squares (OLS) and Geographically Weighted Regression (GWR) models were applied to characterize mean NDVI against three independent socio-economic variables, an urban land use ratio, Gross Domestic Product (GDP) and population density. The study results show that a considerable distinctive spatial variation exists in the relationship for each model. The GWR model has superior effects and higher precision than the OLS model at the census block group scale. So, it is more suitable to account for local effects and geographical variations. This study also indicates that unreasonable excessive urbanization, together with non-sustainable economic development, has a negative influence of vegetation vigor for some neighborhoods in Shanghai.
机译:随着快速城市化过程中,如何做在经济最发达的大都市,上海在中国东部的一个植被环境的变化?要回答这个问题,迫切需要探索的社会经济条件和植被整个上海的非平稳的关系。在这项研究中,对植被的环境数据,从MODIS影像在2003年获得的归一化植被指数(NDVI)与社会经济数据相结合,以反映普查块组级城市的营养状况。要探索的地区差异植被的关系和社会经济条件下,普通最小二乘法(OLS)和地理加权回归(GWR)模型应用于对三个独立的社会经济变量,城市土地利用率,格罗斯表征平均NDVI国内生产总值(GDP)和人口密度。研究结果表明,有相当独特的空间变化在每个模型的关系存在。在GWR模型具有优异的效果和比在人口普查块组分的OLS模型精度更高。所以,它更适合于占地方影响和地域差异。这项研究还表明,不合理的过度城市化,非可持续的经济发展起来,有植被的活力在上海一些居民区产生负面影响。

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