MODIS Based Estimation of Forest Aboveground Biomass in China

Guodong Yin, Yuan Zhang, Yan Sun, Tao Wang, Zhenzhong Zeng, Shilong Piao, Runguo Zang
2015 PLoS ONE  
Accurate estimation of forest biomass C stock is essential to understand carbon cycles. However, current estimates of Chinese forest biomass are mostly based on inventorybased timber volumes and empirical conversion factors at the provincial scale, which could introduce large uncertainties in forest biomass estimation. Here we provide a data-driven estimate of Chinese forest aboveground biomass from 2001 to 2013 at a spatial resolution of 1 km by integrating a recently reviewed plot-level
more » ... -measured forest aboveground biomass database with geospatial information from 1-km Moderate-Resolution Imaging Spectroradiometer (MODIS) dataset in a machine learning algorithm (the model tree ensemble, MTE). We show that Chinese forest aboveground biomass is 8.56 Pg C, which is mainly contributed by evergreen needle-leaf forests and deciduous broadleaf forests. The mean forest aboveground biomass density is 56.1 Mg C ha −1 , with high values observed in temperate humid regions. The responses of forest aboveground biomass density to mean annual temperature are closely tied to water conditions; that is, negative responses dominate regions with mean annual precipitation less than 1300 mm y −1 and positive responses prevail in regions with mean annual precipitation higher than 2800 mm y −1 . During the 2000s, the forests in China sequestered C by 61.9 Tg C y −1 , and this C sink is mainly distributed in north China and may be attributed to warming climate, rising CO 2 concentration, N deposition, and growth of young forests.
doi:10.1371/journal.pone.0130143 pmid:26115195 pmcid:PMC4482713 fatcat:bnjg5lqn7zfvhbgk2e37hqx53y