Temporal Stability of Grassland Soil Moisture Utilising Sentinel-2 Satellites and Sparse Ground-Based Sensor Networks

被引:4
作者
Basu, Rumia [1 ,2 ]
Daly, Eve [2 ]
Brown, Colin [2 ]
Shnel, Asaf [1 ]
Tuohy, Patrick [1 ]
机构
[1] VistaMilk, Teagasc Moorepk, Fermoy P61C996, Ireland
[2] Univ Galway, Ryan Inst, Coll Sci & Engn, Earth & Ocean Sci, Galway H91TK33, Ireland
基金
爱尔兰科学基金会;
关键词
soil moisture; temporal stability; remote sensing; agriculture; vegetation; OPTICAL TRAPEZOID MODEL; CATCHMENT SCALE; CLIMATE-CHANGE; WATER; VEGETATION; DYNAMICS; VARIABILITY; VALIDATION; PRODUCTS; FIELD;
D O I
10.3390/rs16020220
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Soil moisture is important for understanding climate, water resources, water storage, and land use management. This study used Sentinel-2 (S-2) satellite optical data to retrieve surface soil moisture at a 10 m scale on grassland sites with low hydraulic conductivity soil in a climate dominated by heavy rainfall. Soil moisture was estimated after modifying the Optical Trapezoidal Model to account for mixed land cover in such conditions. The method uses data from a short-wave infra-red band, which is sensitive to soil moisture, and four vegetation indices from optical bands, which are sensitive to overlying vegetation. Scatter plots of these data from multiple, infrequent satellite passes are used to define the range of surface moisture conditions. The saturated and dry edges are clearly non-linear, regardless of the choice of vegetation index. Land cover masks are used to generate scatter plots from data only over grassland sites. The Enhanced Vegetation Index demonstrated advantages over other vegetation indices for surface moisture estimation over the entire range of grassland conditions. In poorly drained soils, the time lag between satellite surface moisture retrievals and in situ sensor soil moisture at depth must be part of the validation process. This was achieved by combining an approximate solution to the Richards' Equation, along with measurements of saturated and residual moisture from soil samples, to optimise the correlations between measurements from satellites and sensors at a 15 cm depth. Time lags of 2-4 days resulted in a reduction of the root mean square errors between volumetric soil moisture predicted from S-2 data and that measured by in situ sensors, from similar to 0.1 m(3)/m(3) to <0.06 m(3)/m(3). The surface moisture results for two grassland sites were analysed using statistical concepts based upon the temporal stability of soil water content, an ideal framework for the intermittent Sentinel-2 data in conditions of persistent cloud cover. The analysis could discriminate between different natural drainages and surface soil textures in grassland areas and could identify sub-surface artificial drainage channels. The techniques are transferable for land-use and agricultural management in diverse environmental conditions without the need for extensive and expensive in situ sensor networks.
引用
收藏
页数:22
相关论文
共 89 条
[1]  
Abdu H, 2017, FRONT AGRIC SCI ENG, V4, P135, DOI 10.15302/J-FASE-2017143
[2]   Soil Moisture Mapping with Moisture-Related Indices, OPTRAM, and an Integrated Random Forest-OPTRAM Algorithm from Landsat 8 Images [J].
Acharya, Umesh ;
Daigh, Aaron L. M. ;
Oduor, Peter G. .
REMOTE SENSING, 2022, 14 (15)
[3]   Retrieving soil moisture in rainfed and irrigated fields using Sentinel-2 observations and a modified OPTRAM approach [J].
Ambrosone, Mariapaola ;
Matese, Alessandro ;
Di Gennaro, Salvatore Filippo ;
Gioli, Beniamino ;
Tudoroiu, Marin ;
Genesio, Lorenzo ;
Miglietta, Franco ;
Baronti, Silvia ;
Maienza, Anita ;
Ungaro, Fabrizio ;
Toscano, Piero .
INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION, 2020, 89
[4]   Mapping Crop Types of Germany by Combining Temporal Statistical Metrics of Sentinel-1 and Sentinel-2 Time Series with LPIS Data [J].
Asam, Sarah ;
Gessner, Ursula ;
Gonzalez, Roger Almengor ;
Wenzl, Martina ;
Kriese, Jennifer ;
Kuenzer, Claudia .
REMOTE SENSING, 2022, 14 (13)
[5]   A New Optical Remote Sensing Technique for High-Resolution Mapping of Soil Moisture [J].
Babaeian, Ebrahim ;
Sidike, Paheding ;
Newcomb, Maria S. ;
Maimaitijiang, Maitiniyazi ;
White, Scott A. ;
Demieville, Jeffrey ;
Ward, Richard W. ;
Sadeghi, Morteza ;
LeBauer, David S. ;
Jones, Scott B. ;
Sagan, Vasit ;
Tuller, Markus .
FRONTIERS IN BIG DATA, 2019, 2
[6]   Ground, Proximal, and Satellite Remote Sensing of Soil Moisture [J].
Babaeian, Ebrahim ;
Sadeghi, Morteza ;
Jones, Scott B. ;
Montzka, Carsten ;
Vereecken, Harry ;
Tuller, Markus .
REVIEWS OF GEOPHYSICS, 2019, 57 (02) :530-616
[7]   Mapping soil moisture with the OPtical TRApezoid Model (OPTRAM) based on long-term MODIS observations [J].
Babaeian, Ebrahim ;
Sadeghi, Morteza ;
Franz, Trenton E. ;
Jones, Scott ;
Tuller, Markus .
REMOTE SENSING OF ENVIRONMENT, 2018, 211 :425-440
[8]   The role of vegetation and soil properties on the spatio-temporal variability of the surface soil moisture in a maize-cropped field [J].
Baroni, G. ;
Ortuani, B. ;
Facchi, A. ;
Gandolfi, C. .
JOURNAL OF HYDROLOGY, 2013, 489 :148-159
[9]   Toward Global Soil Moisture Monitoring With Sentinel-1: Harnessing Assets and Overcoming Obstacles [J].
Bauer-Marschallingere, Bernhard ;
Freeman, Vahid ;
Cao, Senmao ;
Paulik, Christoph ;
Schaufler, Stefan ;
Stachl, Tobias ;
Modanesi, Sara ;
Massario, Christian ;
Ciabatta, Luca ;
Brocca, Luca ;
Wagner, Wolfgang .
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2019, 57 (01) :520-539
[10]   Positive Effects of Scattered Trees on Soil Water Dynamics in a Pasture Landscape in the Tropics [J].
Benegas, Laura ;
Hasselquist, Niles ;
Bargues-Tobella, Aida ;
Malmer, Anders ;
Ilstedt, Ulrik .
FRONTIERS IN WATER, 2021, 3