AI Article Synopsis

  • Coastal methane emissions significantly impact the global methane budget and can limit the carbon storage potential of coastal ecosystems, but current estimates are unreliable due to insufficient high-resolution and long-term data.
  • Research shows that methane concentrations in coastal habitats vary widely across meter-scales and fluctuate over time, exhibiting extreme variations and unique seasonal and daily patterns depending on habitat type.
  • To accurately assess methane emissions and variability, about 50 measurement samples per day are necessary; the study emphasizes that previously overlooked northern temperate coastal areas are essential sources of atmospheric methane, especially during summer months.

Article Abstract

Coastal methane (CH ) emissions dominate the global ocean CH budget and can offset the "blue carbon" storage capacity of vegetated coastal ecosystems. However, current estimates lack systematic, high-resolution, and long-term data from these intrinsically heterogeneous environments, making coastal budgets sensitive to statistical assumptions and uncertainties. Using continuous CH concentrations, δ C-CH  values, and CH  sea-air fluxes across four seasons in three globally pervasive coastal habitats, we show that the CH distribution is spatially patchy over meter-scales and highly variable in time. Areas with mixed vegetation, macroalgae, and their surrounding sediments exhibited a spatiotemporal variability of surface water CH concentrations ranging two orders of magnitude (i.e., 6-460 nM CH ) with habitat-specific seasonal and diurnal patterns. We observed (1) δ C-CH  signatures that revealed habitat-specific CH production and consumption pathways, (2) daily peak concentration events that could change >100% within hours across all habitats, and (3) a high thermal sensitivity of the CH distribution signified by apparent activation energies of ~1 eV that drove seasonal changes. Bootstrapping simulations show that scaling the CH distribution from few samples involves large errors, and that ~50 concentration samples per day are needed to resolve the scale and drivers of the natural variability and improve the certainty of flux calculations by up to 70%. Finally, we identify northern temperate coastal habitats with mixed vegetation and macroalgae as understudied but seasonally relevant atmospheric CH  sources (i.e., releasing ≥ 100 μmol CH  m  day in summer). Due to the large spatial and temporal heterogeneity of coastal environments, high-resolution measurements will improve the reliability of CH estimates and confine the habitat-specific contribution to regional and global CH budgets.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9540812PMC
http://dx.doi.org/10.1111/gcb.16177DOI Listing

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