| Literature DB >> 33423389 |
Yue He1, Xuhui Wang1, Kai Wang1, Shuchang Tang1, Hao Xu1, Anping Chen2, Philippe Ciais3, Xiangyi Li1, Josep Peñuelas4,5, Shilong Piao1,6,7.
Abstract
Accurate quantification of vegetation carbon turnover time (τveg ) is critical for reducing uncertainties in terrestrial vegetation response to future climate change. However, in the absence of global information of litter production, τveg could only be estimated based on net primary productivity under the steady-state assumption. Here, we applied a machine-learning approach to derive a global dataset of litter production by linking 2401 field observations and global environmental drivers. Results suggested that the observation-based estimate of global natural ecosystem litter production was 44.3 ± 0.4 Pg C year-1 . By contrast, land-surface models (LSMs) overestimated the global litter production by about 27%. With this new global litter production dataset, we estimated global τveg (mean value 10.3 ± 1.4 years) and its spatial distribution. Compared to our observation-based τveg , modelled τveg tended to underestimate τveg at high latitudes. Our empirically derived gridded datasets of litter production and τveg will help constrain global vegetation models and improve the prediction of global carbon cycle.Entities:
Keywords: boosted regression trees; land-surface models; litter production; vegetation carbon stock; vegetation carbon turnover time
Year: 2021 PMID: 33423389 DOI: 10.1111/gcb.15515
Source DB: PubMed Journal: Glob Chang Biol ISSN: 1354-1013 Impact factor: 10.863