| Literature DB >> 33837072 |
Ben Niu1,2, Xianzhou Zhang3,4, Shilong Piao5,6, Ivan A Janssens7, Gang Fu1, Yongtao He1,4, Yangjian Zhang1,4, Peili Shi1,4, Erfu Dai1, Chengqun Yu1, Jing Zhang8, Guirui Yu1,4, Ming Xu1, Jianshuang Wu9, Liping Zhu6, Ankur R Desai10, Jiquan Chen11, Gil Bohrer12, Christopher M Gough13, Ivan Mammarella14, Andrej Varlagin15, Silvano Fares16, Xinquan Zhao17, Yingnian Li17, Huiming Wang1, Zhu Ouyang1.
Abstract
Warming-induced carbon loss through terrestrial ecosystem respiration (Re) is likely getting stronger in high latitudes and cold regions because of the more rapid warming and higher temperature sensitivity of Re (Q 10). However, it is not known whether the spatial relationship between Q 10 and temperature also holds temporally under a future warmer climate. Here, we analyzed apparent Q 10 values derived from multiyear observations at 74 FLUXNET sites spanning diverse climates and biomes. We found warming-induced decline in Q 10 is stronger at colder regions than other locations, which is consistent with a meta-analysis of 54 field warming experiments across the globe. We predict future warming will shrink the global variability of Q 10 values to an average of 1.44 across the globe under a high emission trajectory (RCP 8.5) by the end of the century. Therefore, warming-induced carbon loss may be less than previously assumed because of Q 10 homogenization in a warming world.Entities:
Year: 2021 PMID: 33837072 PMCID: PMC8034862 DOI: 10.1126/sciadv.abc7358
Source DB: PubMed Journal: Sci Adv ISSN: 2375-2548 Impact factor: 14.136
Fig. 1Spatio-temporal patterns of Q10 and its temperature sensitivity against mean annual temperature through time and across space.
In (A), the points show annual mean Q10 values at individual sites (). The red dashed lines represent how annual Q10 year, site values vary temporally at individual sites. The blue solid line represents the exponential regressions of spatial against temperature. In (B), the points show site-specific δtemporal that are the linear slopes of the temporal regression of Q10 [red dashed lines in (A)] against temperature. The red line is an exponential fitting of δtemporal along temperature. The blue solid line is the first derivative curve of the contemporary spatial regression of Q10 in (A) (blue line) (δspatial). The shadow represents the difference between δspatial and δtemporal. Sites are grouped by ecosystem types according to the International Geosphere Biosphere Programme (IGBP) classification (Materials and Methods). The colored band shows the latitudinal position of the individual sites. Error bars are the standard error of the corresponding mean values.
Fig. 2The spatial trend of Q10 estimation in STRs () against site measured temperature gradient.
The inset graphs show Q10 estimation in STRs [Q10,str(] from 4° to 23°C by a 10°C moving window (for more temperature moving window in fig. S3). The central blue dots are the arithmetic mean of the Q10,str( values () with standard error (bars) for these 10 groups’ STRs (A to J), and the red line is an exponential fit for their relationship with temperature.
Fig. 3Potential convergence in temperature sensitivity of ecosystem respiration under climate warming.
In (A), all lines show the spatial patterns in temperature sensitivity of Q10 (δ) against site temperature across different temperature change ranges: blue dashed lines are the spatial δ (δspatial) (fig. S4 and table S3, Materials and Methods), and red solid lines are temporal δ when the interannual temperature change ranges are approximately 1°C (δtemporal,1°C), 2°C (δtemporal, 2°C), and 3°C (δtemporal, 3°C), respectively (fig. S5 and table S3, Materials and Methods). The primary model is shown to directly calculate δ at different site temperature (T, °C) and temperature change ranges (∆T,°C) (fig. S6 and table S3). In (B), the red solid line shows the contemporary spatial patterns identical to the blue line in Fig. 1A, and the blue dashed lines are predictions of spatial patterns under different Representative Concentration Pathway scenarios (RCPs) until the end of the 21st century (2081–2100) based on the Coupled Model Intercomparison Project (CMIP5) (Materials and Methods). All site-scale predications are shown as dots in fig. S7 (F to I).
Fig. 4Spatial patterns of Q10 and its temperature sensitivity against site mean annual temperature based on the nine model outputs from CMIP5 at the flux tower site.
Solid curves represent those models considering the different temporal variations in Q10 year, site under climate warming, while the dashed curves are not. The shadows are 95% confidence bands. Detailed regression and CMIP5 models’ information are in the table S5, and the points are shown in fig. S10.