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Journal Article

Post-drainage vegetation, microtopography and organic matter in Arctic drained lake basins

Authors

Wolter,  Juliane
External Organizations;

Jones,  Benjamin M
External Organizations;

Fuchs,  Matthias
External Organizations;

Breen,  Amy
External Organizations;

Bussmann,  Ingeborg
External Organizations;

Koch,  Boris
External Organizations;

Lenz,  Josefine
External Organizations;

Myers-Smith,  Isla H
External Organizations;

/persons/resource/tsachs

Sachs,  T.
1.4 Remote Sensing, 1.0 Geodesy, Departments, GFZ Publication Database, Deutsches GeoForschungsZentrum;

Strauss,  Jens
External Organizations;

Nitze,  Ingmar
External Organizations;

Grosse,  Guido
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5025749.pdf
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Citation

Wolter, J., Jones, B. M., Fuchs, M., Breen, A., Bussmann, I., Koch, B., Lenz, J., Myers-Smith, I. H., Sachs, T., Strauss, J., Nitze, I., Grosse, G. (2024): Post-drainage vegetation, microtopography and organic matter in Arctic drained lake basins. - Environmental Research Letters, 19, 045001.
https://doi.org/10.1088/1748-9326/ad2eeb


Cite as: https://gfzpublic.gfz-potsdam.de/pubman/item/item_5025749
Abstract
Wetlands in Arctic drained lake basins (DLBs) have a high potential for carbon storage in vegetation and peat as well as for elevated greenhouse gas emissions. However, the evolution of vegetation and organic matter is rarely studied in DLBs, making these abundant wetlands especially uncertain elements of the permafrost carbon budget. We surveyed multiple DLB generations in northern Alaska with the goal to assess vegetation, microtopography, and organic matter in surface sediment and pond water in DLBs and to provide the first high-resolution land cover classification for a DLB system focussing on moisture-related vegetation classes for the Teshekpuk Lake region. We associated sediment properties and methane concentrations along a post-drainage succession gradient with remote sensing-derived land cover classes. Our study distinguished five eco-hydrological classes using statistical clustering of vegetation data, which corresponded to the land cover classes. We identified surface wetness and time since drainage as predictors of vegetation composition. Microtopographic complexity increased after drainage. Organic carbon and nitrogen contents in sediment, and dissolved organic carbon (DOC) and dissolved nitrogen (DN) in ponds were high throughout, indicating high organic matter availability and decomposition. We confirmed wetness as a predictor of sediment methane concentrations. Our findings suggest moderate to high methane concentrations independent of drainage age, with particularly high concentrations beneath submerged patches (up to 200 μmol l−1) and in pond water (up to 22 μmol l−1). In our DLB system, wet and shallow submerged patches with high methane concentrations occupied 54% of the area, and ponds with high DOC, DN and methane occupied another 11%. In conclusion, we demonstrate that DLB wetlands are highly productive regarding organic matter decomposition and methane production. Machine learning-aided land cover classification using high-resolution multispectral satellite imagery provides a useful tool for future upscaling of sediment properties and methane emission potentials from Arctic DLBs.