Regional evapotranspiration from an image-based implementation of the Surface Temperature Initiated Closure (STIC1.2) model and its validation across an aridity gradient in the conterminous US
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Nathaniel A. Brunsell | Ge Sun | Kaniska Mallick | Nishan Bhattarai | Meha Jain | G. Sun | Meha Jain | N. Bhattarai | K. Mallick | N. Brunsell
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