Literature DB >> 33914985

Identifying dominant environmental predictors of freshwater wetland methane fluxes across diurnal to seasonal time scales.

Sara H Knox1, Sheel Bansal2, Gavin McNicol3, Karina Schafer4, Cove Sturtevant5, Masahito Ueyama6, Alex C Valach7, Dennis Baldocchi7, Kyle Delwiche3, Ankur R Desai8, Eugenie Euskirchen9, Jinxun Liu10, Annalea Lohila11,12, Avni Malhotra3, Lulie Melling13, William Riley14, Benjamin R K Runkle15, Jessica Turner16, Rodrigo Vargas17, Qing Zhu14, Tuula Alto12, Etienne Fluet-Chouinard3, Mathias Goeckede18, Joe R Melton19, Oliver Sonnentag20, Timo Vesala11,21, Eric Ward22, Zhen Zhang23, Sarah Feron3,24, Zutao Ouyang3, Pavel Alekseychik25, Mika Aurela12, Gil Bohrer26, David I Campbell27, Jiquan Chen28, Housen Chu29, Higo J Dalmagro30, Jordan P Goodrich27, Pia Gottschalk31, Takashi Hirano32, Hiroki Iwata33, Gerald Jurasinski34, Minseok Kang35, Franziska Koebsch34, Ivan Mammarella11, Mats B Nilsson36, Keisuke Ono37, Matthias Peichl36, Olli Peltola12, Youngryel Ryu38, Torsten Sachs31, Ayaka Sakabe39, Jed P Sparks40, Eeva-Stiina Tuittila41, George L Vourlitis42, Guan X Wong13, Lisamarie Windham-Myers43, Benjamin Poulter44, Robert B Jackson3,45,46.   

Abstract

While wetlands are the largest natural source of methane (CH4 ) to the atmosphere, they represent a large source of uncertainty in the global CH4 budget due to the complex biogeochemical controls on CH4 dynamics. Here we present, to our knowledge, the first multi-site synthesis of how predictors of CH4 fluxes (FCH4) in freshwater wetlands vary across wetland types at diel, multiday (synoptic), and seasonal time scales. We used several statistical approaches (correlation analysis, generalized additive modeling, mutual information, and random forests) in a wavelet-based multi-resolution framework to assess the importance of environmental predictors, nonlinearities and lags on FCH4 across 23 eddy covariance sites. Seasonally, soil and air temperature were dominant predictors of FCH4 at sites with smaller seasonal variation in water table depth (WTD). In contrast, WTD was the dominant predictor for wetlands with smaller variations in temperature (e.g., seasonal tropical/subtropical wetlands). Changes in seasonal FCH4 lagged fluctuations in WTD by ~17 ± 11 days, and lagged air and soil temperature by median values of 8 ± 16 and 5 ± 15 days, respectively. Temperature and WTD were also dominant predictors at the multiday scale. Atmospheric pressure (PA) was another important multiday scale predictor for peat-dominated sites, with drops in PA coinciding with synchronous releases of CH4 . At the diel scale, synchronous relationships with latent heat flux and vapor pressure deficit suggest that physical processes controlling evaporation and boundary layer mixing exert similar controls on CH4 volatilization, and suggest the influence of pressurized ventilation in aerenchymatous vegetation. In addition, 1- to 4-h lagged relationships with ecosystem photosynthesis indicate recent carbon substrates, such as root exudates, may also control FCH4. By addressing issues of scale, asynchrony, and nonlinearity, this work improves understanding of the predictors and timing of wetland FCH4 that can inform future studies and models, and help constrain wetland CH4 emissions.
© 2021 John Wiley & Sons Ltd.

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Keywords:  eddy covariance; generalized additive modeling; lags; methane; mutual information; predictors; random forest; synthesis; time scales; wetlands

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Year:  2021        PMID: 33914985     DOI: 10.1111/gcb.15661

Source DB:  PubMed          Journal:  Glob Chang Biol        ISSN: 1354-1013            Impact factor:   10.863


  1 in total

1.  Detecting Hot Spots of Methane Flux Using Footprint-Weighted Flux Maps.

Authors:  Camilo Rey-Sanchez; Ariane Arias-Ortiz; Kuno Kasak; Housen Chu; Daphne Szutu; Joseph Verfaillie; Dennis Baldocchi
Journal:  J Geophys Res Biogeosci       Date:  2022-08-10       Impact factor: 4.432

  1 in total

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