4.4 Article

CO2 time series patterns in contrasting headwater streams of North America

期刊

AQUATIC SCIENCES
卷 79, 期 3, 页码 473-486

出版社

SPRINGER BASEL AG
DOI: 10.1007/s00027-016-0511-2

关键词

Carbon dioxide; Sensors; Time series; Streams; Heterogeneity

资金

  1. US Geological Survey's Water, Energy and Biogeochemical Budgets Program
  2. Inland Waters LandCarbon project
  3. National Science Foundation [DEB-0822700]
  4. Division Of Environmental Biology
  5. Direct For Biological Sciences [1440297] Funding Source: National Science Foundation

向作者/读者索取更多资源

We explored the underlying patterns of temporal stream CO2 partial pressure (pCO(2)) variability using high-frequency sensors in seven disparate headwater streams distributed across the northern hemisphere. We also compared this dataset of >40,000 pCO(2) records with other published records from lotic systems. Individual stream sites exhibited relatively distinct pCO(2) patterns over time with few consistent traits across sites. Some sites showed strong diel variability, some exhibited increasing pCO(2) with increasing discharge, whereas other streams had reduced pCO(2) with increasing discharge or no clear response to changes in flow. The only universal'' signature observed in headwater streams was a late summer pCO(2) maxima that was likely driven by greatest rates of organic matter respiration due to highest annual temperatures. However, we did not observe this seasonal pattern in a southern hardwood forest site, likely because the region was transitioning from a severe drought. This work clearly illustrates the heterogeneous nature of headwater streams, and highlights the idiosyncratic nature of a non-conservative solute that is jointly influenced by physics, hydrology, and biology. We suggest that future researchers carefully select sensor locations (within and among streams) and provide additional contextual information when attempting to explain pCO(2) patterns.

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