Mapping land-use intensity of grasslands in Germany with machine learning and Sentinel-2 time series

被引:36
|
作者
Lange, Maximilian [1 ,2 ]
Feilhauer, Hannes [1 ,2 ]
Kuehn, Ingolf [3 ,4 ,5 ]
Doktor, Daniel [1 ,2 ,5 ]
机构
[1] UFZ, Helmholtz Ctr Environm Res, Dept Remote Sensing, Permoserstr 15, D-04318 Leipzig, Germany
[2] Remote Sensing Ctr Earth Syst Res, RSC4Earth, Talstr 35, D-04103 Leipzig, Germany
[3] UFZ, Helmholtz Ctr Environm Res, Dept Community Ecol, Theodor Lieser Str 4, D-06120 Halle, Germany
[4] Martin Luther Univ Halle Wittenberg, Inst Biol Geobot & Bot Garden, Grosse Steinstr 79-80, D-06108 Halle, Germany
[5] German Ctr Integrat Biodivers Res iDiv, Puschstr 4, D-04103 Leipzig, Germany
关键词
Mowing; Grazing; Fertilisation; Convolutional Neural Networks; Random Forest; Classification; Deep learning; Optical satellite data; CARBON SEQUESTRATION; GRAZING INTENSITY; SPECIES RICHNESS; RANDOM FOREST; CLASSIFICATION; FERTILIZATION; DIVERSITY; CLIMATE; BIODIVERSITY; MANAGEMENT;
D O I
10.1016/j.rse.2022.112888
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Information on grassland land-use intensity (LUI) is crucial for understanding trends and dynamics in biodi-versity, ecosystem functioning, earth system science and environmental monitoring. LUI is a major driver for numerous environmental processes and indicators, such as primary production, nitrogen deposition and resil-ience to climate extremes. However, large extent, high resolution data on grassland LUI is rare. New satellite generations, such as Copernicus Sentinel-2, enable a spatially comprehensive detection of the mainly subtle changes induced by land-use intensification by their fine spatial and temporal resolution. We developed a methodology quantifying key parameters of grassland LUI such as grazing intensity, mowing frequency and fertiliser application across Germany using Convolutional Neural Networks (CNN) on Sentinel-2 satellite data with 20 m x 20 m spatial resolution. Subsequently, these land-use components were used to calculate a continuous LUI index. Predictions of LUI and its components were validated using comprehensive in situ grassland management data. A feature contribution analysis using Shapley values substantiates the applicability of the methodology by revealing a high relevance of springtime satellite observations and spectral bands related to vegetation health and structure. We achieved an overall classification accuracy of up to 66% for grazing in-tensity, 68% for mowing, 85% for fertilisation and an r2 of 0.82 for subsequently depicting LUI. We evaluated the methodology's robustness with a spatial 3-fold cross-validation by training and predicting on geographically distinctly separated regions. Spatial transferability was assessed by delineating the models' area of applicability. The presented methodology enables a high resolution, large extent mapping of land-use intensity of grasslands.
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页数:19
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