Semiparametric geographically weighted generalised linear modelling in GWR 4.0
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چکیده
منابع مشابه
Towards spatial geochemical modelling: Use of geographically weighted regression for mapping soil organic carbon contents in Ireland
It is challenging to perform spatial geochemical modelling due to the spatial heterogeneity features of geochemical variables. Meanwhile, high quality geochemical maps are needed for better environmental management. Soil organic C (SOC) distribution maps are required for improvements in soil management and for the estimation of C stocks at regional scales. This study investigates the use of a g...
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