| Literature DB >> 27799533 |
Wei Li1, Philippe Ciais2, Yilong Wang2, Shushi Peng2, Grégoire Broquet2, Ashley P Ballantyne3, Josep G Canadell4, Leila Cooper3, Pierre Friedlingstein5, Corinne Le Quéré6, Ranga B Myneni7, Glen P Peters8, Shilong Piao9, Julia Pongratz10.
Abstract
Conventional calculations of the global carbon budget infer the land sink as a residual between emissions, atmospheric accumulation, and the ocean sink. Thus, the land sink accumulates the errors from the other flux terms and bears the largest uncertainty. Here, we present a Bayesian fusion approach that combines multiple observations in different carbon reservoirs to optimize the land (B) and ocean (O) carbon sinks, land use change emissions (L), and indirectly fossil fuel emissions (F) from 1980 to 2014. Compared with the conventional approach, Bayesian optimization decreases the uncertainties in B by 41% and in O by 46%. The L uncertainty decreases by 47%, whereas F uncertainty is marginally improved through the knowledge of natural fluxes. Both ocean and net land uptake (B + L) rates have positive trends of 29 ± 8 and 37 ± 17 Tg C⋅y-2 since 1980, respectively. Our Bayesian fusion of multiple observations reduces uncertainties, thereby allowing us to isolate important variability in global carbon cycle processes.Entities:
Keywords: Bayesian fusion; carbon cycle; decadal variations; global carbon budget
Year: 2016 PMID: 27799533 PMCID: PMC5135338 DOI: 10.1073/pnas.1603956113
Source DB: PubMed Journal: Proc Natl Acad Sci U S A ISSN: 0027-8424 Impact factor: 11.205