Impact of input data resolution and extent of harvested areas on crop yield estimates in large-scale agricultural modeling for maize in the USA

Ecological Modelling - Tập 235 - Trang 8-18 - 2012
Christian Folberth1, Hong Yang1, Xiuying Wang2, Karim C. Abbaspour1
1EAWAG, Swiss Federal Institute of Aquatic Science and Technology, Ueberlandstr. 133, CH-8600 Dübendorf, Switzerland
2Blackland Research and Extension Center, 720 E. Blackland Road, Temple, TX 76502, USA

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