A national-scale assessment of land use change in peatlands between 1989 and 2020 using Landsat data and Google Earth Engine-a case study of Ireland

被引:12
作者
Habib, Wahaj [1 ]
Connolly, John [1 ]
机构
[1] Trinity Coll Dublin, Sch Nat Sci, Discipline Geog, Dublin 2, Ireland
关键词
Blanket bogs; Raised bogs; Land use change; Machine learning; Remote sensing; Google Earth Engine; CARBON-CYCLE; ACCURACY; PRODUCE; PEAT; AREA;
D O I
10.1007/s10113-023-02116-0
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Over the centuries, anthropogenic pressure has severely impacted peatlands on the European continent. Peatlands cover similar to 21% (1.46 Mha) of Ireland's land surface, but 85% have been degraded due to management activities (land use). Ireland needs to meet its 2030 climate energy framework targets related to greenhouse gas (GHG) emissions from land use, land use change and forestry, including wetlands. Despite Ireland's voluntary decision to include peatlands in this system in 2020, information on land use activities and associated GHG emissions from peatlands is lacking. This study strives to fill this information gap by using Landsat (5, 8) data with Google Earth Engine and machine learning to examine and quantify land use on Irish peatlands across three time periods: 1990, 2005 and 2019. Four peatland land use classes were mapped and assessed: industrial peat extraction, forestry, grassland and residual peatland. The overall accuracy of the classification was 86% and 85% for the 2005 and 2019 maps, respectively. The accuracy of the 1990 dataset could not be assessed due to the unavailability of high-resolution reference data. The results indicate that extensive management activities have taken place in peatlands over the past three decades, which may have negative impacts on its ecological integrity and the many ecosystem services provided. By utilising cloud computing, temporal mosaicking and Landsat data, this study developed a robust methodology that overcomes cloud contamination and produces the first peatland land use maps of Ireland with wall-to-wall coverage. This has the potential for regional and global applications, providing maps that could help understand unsustainable management practices on peatlands and the impact on GHG emissions.
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页数:16
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