Anthropogenic activities significantly increase annual greenhouse gas (GHG) fluxes from temperate streams, rivers, and drainage ditches in Germany

crossref(2023)

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摘要
<p>Anthropogenic activities increase the contributions of inland waters to global greenhouse gas (GHG; CO<sub>2</sub>, CH<sub>4,</sub> and N<sub>2</sub>O) budgets, yet the mechanisms driving these increases are still not well constrained. In this study, we quantified year-long GHG concentrations and fluxes, as well as water physico-chemical variables from 23 streams, three ditches, and two wastewater inflow sites across five catchments in Germany contrasted by land use. Using mixed-effects models, we determined the overall impact of land use and seasonality on the intra-annual variabilities of these parameters. We found that land use was more significant than seasonality in controlling the intra-annual variability of GHG concentrations and fluxes. Agricultural land use and wastewater inflows in settlement areas resulted in elevated riverine CO<sub>2</sub>, CH<sub>4,</sub> and N<sub>2</sub>O emissions, as substrate inputs by these sources appeared to favor <em>in situ</em> GHG production processes. Dissolved GHG inputs directly from agricultural runoff and waste-water inputs also contributed substantially to the annual emissions from these sites. Drainage ditches were hotspots for CO<sub>2</sub> and CH<sub>4 </sub>fluxes due to high dissolved organic matter concentrations, which appeared to favor <em>in situ</em> production via respiration and methanogensis. Overall, the annual emission from anthropogenic-influenced streams and rivers in CO<sub>2</sub>-equivalents was up to 20 times higher (~71 kg CO<sub>2</sub> m<sup>-2 </sup>yr<sup>-1</sup>) than from natural streams (~3 kg CO<sub>2</sub> m<sup>-2 </sup>yr<sup>-1</sup>). Future studies aiming to estimate the contribution of riverine systems to GHG emissions should therefore focus on anthropogenically perturbed streams, as their GHG emission are much more variable in space and time.</p>
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