环境科学
焊剂(冶金)
二氧化碳
固碳
水力发电
甲烷
大气科学
扩散
大气(单位)
碳纤维
饱和(图论)
碳循环
温室气体
环境化学
化学
生态系统
海洋学
生态学
气象学
地理
地质学
数学
有机化学
复合数
生物
物理
材料科学
组合数学
复合材料
热力学
作者
Rachel M. Pilla,Chloe S. Faehndrich,Allison M. Fortner,R. Trent Jett,Michael Jones,Nikki Jones,Jana R. Phillips,Carly Hansen,Bilal Iftikhar,Henriëtte I. Jager,Paul G. Matson,Natalie A. Griffiths
摘要
Abstract Reservoirs are a significant source of carbon (C) to the atmosphere, but their emission rates vary in space and time. We compared C emissions via diffusive and ebullitive pathways at several stations in six large hydropower reservoirs in the southeastern US that were previously sampled in summer 2012. We found that carbon dioxide (CO 2 ) diffusion was the dominant flux pathway during 2012 and 2022, with only three exceptions where methane (CH 4 ) diffusion or CH 4 ebullition dominated. CH 4 diffusion rates were positively associated with water temperature. However, we found no clear predictors of CH 4 ebullition, which had extremely high variability, with rates ranging from 0 to 739 mg C m −2 day −1 . For CO 2 diffusion, the direction of the flux shifted between 2012 and 2022, where all but three stations across all reservoirs emitted CO 2 in summer 2012, but every station sequestered CO 2 in summer 2022. Here, indicators of greater algal production were associated with CO 2 sequestration, including surface chlorophyll‐ a concentration, surface dissolved oxygen saturation, and pH. Additional sampling campaigns outside the summer season highlighted the importance of seasonal phenology in primary production on the direction of CO 2 diffusive fluxes, which shifted to positive CO 2 fluxes by the end of August as productivity decreased. Our results demonstrate the importance of capturing CO 2 sequestration in field and modeling measurements and understanding the seasonal drivers of these estimates. Measuring C emissions from multiple pathways in reservoirs and understanding their spatiotemporal responses and variability are vital to reducing uncertainties in global upscaling efforts.
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