Capabilities of optical and radar Earth observation data for up-scaling methane emissions linked to subsidence and permafrost degradation in sub-Arctic peatlands

Permafrost thaw in Arctic regions is increasing methane (CH 4 ) emissions to the atmosphere but quantification of such emissions is difficult given the large and remote areas impacted. Hence, Earth Observation (EO) data are critical for assessing both permafrost thaw, associated ecosystem change, an...

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Bibliographic Details
Main Authors: Sjogersten, Sofie, Ledger, Martha, Siewert, Matthias, Barreda-Bautista, Betsabé, Sowter, Andrew, Gee, David, Foody, Giles, Boyd, Doreen S.
Format: Text
Language:English
Published: 2023
Subjects:
Online Access:https://doi.org/10.5194/bg-2023-17
https://bg.copernicus.org/preprints/bg-2023-17/
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Summary:Permafrost thaw in Arctic regions is increasing methane (CH 4 ) emissions to the atmosphere but quantification of such emissions is difficult given the large and remote areas impacted. Hence, Earth Observation (EO) data are critical for assessing both permafrost thaw, associated ecosystem change, and increased CH 4 emissions. Often extrapolation from field measurements using EO is the approach employed. However, there are key challenges to consider – that landscape CH 4 emissions result from a complex local-scale mixture of micro-topographies and vegetation types that support widely differing CH 4 emissions and the difficulty in detecting the initial stages of permafrost degradation before vegetation transitions have occurred. This study considers the use of a combination of ultra-high resolution unoccupied aerial vehicle (UAV) data, together with Sentinel-1 and -2 data to extrapolate field measurements of CH 4 emissions from a set of vegetation types which capture the local variation in vegetation on degrading palsa wetlands. We show that the ultra-high resolution UAV data can map spatial variation in vegetation relevant to variation in CH 4 emissions and extrapolate these across the wider landscape. We further show how Sentinel-1 and Sentinel-2 can be used. By way of a soft classification, and simple correction of misclassification bias of a hard classification, the output vegetation mapping and subsequent extrapolation of CH 4 emissions matched closely that generated using the UAV data. InSAR assessment of subsidence together with the vegetation classification suggested that high subsidence rates of palsa wetland can be used to quantify areas at risk of increased CH 4 emissions. We estimate that a transition of an area currently experiencing subsidence to fen type vegetation are estimated to increase emissions from 116 kg CH 4 season −1 from the 50 ha study area, to emissions as high as 6500 to 13000 kg CH 4 season −1 . The key outcome from this study is that a fusion of EO data types provides the ability to ...