永久冻土
高原(数学)
温室气体
青海湖
水文学(农业)
环境科学
地质学
溪流
地貌学
冰川
海洋学
数学分析
计算机网络
数学
岩土工程
计算机科学
作者
Liwei Zhang,Emily H. Stanley,Gerard Rocher‐Ros,Joshua Dean,Dongfeng Li,Qingrui Wang,Ling Zhang,Wenqing Shi,Tian Xie,Xinghui Xia
摘要
Abstract Reservoirs influence the global climate by exchanging greenhouse gases (GHGs) of carbon dioxide (CO 2 ), methane (CH 4 ), and nitrous oxide (N 2 O) with the atmosphere. Few studies, however, quantify emissions of all three GHGs from reservoirs, particularly in permafrost‐affected mountain regions where ecosystems are highly vulnerable to climate change. This study presents three‐year direct measurements of CO 2 , CH 4 , and N 2 O concentrations and fluxes upstream, within, and downstream from two reservoirs draining permafrost catchments on the Qinghai‐Tibet Plateau, including periods of reservoir drawdown. Comparing GHG fluxes across space and time exhibits a general pattern of lower fluxes at the two reservoirs relative to up‐ and downstream channels. Ebullitive fluxes contributed to 36.7% and 9.4% of total CH 4 and N 2 O fluxes, respectively. CO 2 has no response to drawdown, but CH 4 and N 2 O display synchronous drawdown‐associated increase within the reservoir, constituting 57.5% and 32.8% of the annual reservoir emissions in just 2 months, respectively. Riverine emissions from up‐ and downstream channels accounted for an outsized fraction (55.5% for CH 4 , 17.3% for CO 2 and 16.5% for N 2 O) of the system‐wide GHG budget. Compared with global reservoirs, the two reservoirs have high CO 2 and N 2 O but low CH 4 fluxes in CO 2 equivalents. Upscaling shows that the two reservoirs emit the same magnitude of carbon as thermokarst lakes, and four times higher N 2 O than Finnish lakes on an areal basis. This article shows that alpine reservoirs draining permafrost catchments are unrecognized atmospheric sources in current reservoir GHG inventories, but also emphasizes the importance of system‐wide emissions when assessing total GHG evasion from reservoir systems.
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