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<idAbs>(mg/ha) integrated two existing large-scale biomass maps (Saatchi et al., 2011; Baccini et al., 2012) with local high-quality biomass data into an improved pan-tropical aboveground biomass map of woody vegetation
https://www.wur.nl/en/Research-Results/Chair-groups/Environmental-Sciences/Laboratory-of-Geo-information-Science-and-Remote-Sensing/Research/Integrated-land-monitoring/Forest_Biomass.htm
Avitabile V, Herold M, Heuvelink G, Lewis SL, Phillips OL, Asner GP et al. (2016). An integrated pan-tropical biomass maps using multiple reference datasets. Global Change Biology, 22: 1406–1420. doi:10.1111/gcb.13139.</idAbs>
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<keyword>forest; biomass</keyword>
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<idPurp>forest biomass 2000</idPurp>
<idCredit>Avitabile et al. (2016)</idCredit>
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<resTitle>terrestrial_biomass_Avitabile_2000_SOKNOT_SOKNOT</resTitle>
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