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Bin Fang
University of Virginia - Charlottesville / United States
Engineering & Technology / Civil Engineering
AD Scientific Index ID: 1683995
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Bin Fang's MOST POPULAR ARTICLES
1-)
Land surface phenology derived from normalized difference vegetation index (NDVI) at global FLUXNET sitesC Wu, D Peng, K Soudani, L Siebicke, CM Gough, MA Arain, G Bohrer, ...Agricultural and Forest Meteorology 233, 171-182, 20171642017
2-)
Soil moisture at watershed scale: Remote sensing techniquesB Fang, V LakshmiJournal of hydrology 516, 258-272, 20141622014
3-)
Passive microwave soil moisture downscaling using vegetation index and skin surface temperatureB Fang, V Lakshmi, R Bindlish, TJ Jackson, M Cosh, J BasaraVadose Zone Journal 12 (3), 1-19, 20131212013
4-)
Water, Energy, and Carbon with Artificial Neural Networks (WECANN): A statistically-based estimate of global surface turbulent fluxes using solar-induced fluorescenceSH Alemohammad, B Fang, AG Konings, JK Green, J Kolassa, C Prigent, ...1352016
5-)
Spring green-up phenology products derived from MODIS NDVI and EVI: Intercomparison, interpretation and validation using National Phenology Network and AmeriFlux observationsD Peng, C Wu, C Li, X Zhang, Z Liu, H Ye, S Luo, X Liu, Y Hu, B FangEcological Indicators 77, 323-336, 20171292017
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