Global monitoring of soil multifunctionality in drylands using satellite imagery and field data

Author:

Hernández‐Clemente R.12ORCID,Hornero A.34ORCID,Gonzalez‐Dugo V.3ORCID,Berdugo M.56ORCID,Quero J. L.1ORCID,Jiménez J. C.7ORCID,Maestre F. T.89ORCID

Affiliation:

1. Department of Forestry University of Cordoba Campus de Rabanales, Ctra. Madrid, Km 396 14071 Cordoba Spain

2. Department of Geography Swansea University Singleton Park Swansea SA2 8PP United Kingdom

3. Instituto de Agricultura Sostenible (IAS), Consejo Superior de Investigaciones Científicas (CSIC) Avenida Menéndez Pidal s/n 14004 Cordoba Spain

4. School of Agriculture and Food (SAF‐FVAS) and Faculty of Engineering and Information Technology (IE‐FEIT) University of Melbourne 700 Swanston St, Carlton Melbourne Victoria 3053 Australia

5. ETH Zurich, Crowther Lab CHN G 66, Universitätstrasse 16 8092 Zürich Switzerland

6. Departamento de Biodiversidad, Ecología y Evolución Universidad Complutense de Madrid Av. Séneca, 2 28040 Madrid Spain

7. GCU/IPL, University of Valencia Catedrático José Beltrán 2 46980 Paterna Valencia Spain

8. Instituto Multidisciplinar para el Estudio del Medio “Ramón Margalef”, Universidad de Alicante Carr. de San Vicente del Raspeig, s/n 03690 Alicante Spain

9. Departamento de Ecología Universidad de Alicante Carr. de San Vicente del Raspeig, s/n 03690 Alicante Spain

Abstract

AbstractModels derived from satellite image data are needed to monitor the status of terrestrial ecosystems across large spatial scales. However, a remote sensing‐based approach to quantify soil multifunctionality at the global scale is missing despite significant research efforts on this topic. A major constraint for doing so is the availability of suitable global‐scale field data to calibrate remote sensing indicators (RSI) and, to a lesser extent, the sensitivity of spectral data of available satellite sensors to soil background and atmospheric conditions. Here, we aimed to develop a soil multifunctionality model to monitor global drylands coupling ground data on 14 soil functions of 222 dryland areas from six continents to 18 RSI derived from a time series (2006–2013) Landsat dataset. Among the RSI evaluated, the chlorophyll absorption ratio index was the best predictor of soil multifunctionality in single‐variable‐based models (r = 0.66, P < 0.01, NMRSE = 0.17). However, a multi‐variable RSI model combining the chlorophyll absorption ratio index, the global environment monitoring index and the canopy‐air temperature difference improved the accuracy of quantifying soil multifunctionality (r = 0.73, P < 0.01, NMRSE = 0.15). Furthermore, the correlation between RSI and soil variables shows a wide range of accuracy with upper and lower values obtained for AMI (r = 0.889, NMRSE = 0.05) and BGL (r = 0.685, NMRSE = 0.18) respectively. Our results provide new insights on assessing soil multifunctionality using RSI that may help to monitor temporal changes in the functioning of global drylands effectively.

Funder

European Research Council

Ministerio de Ciencia e Innovación

Generalitat Valenciana

Publisher

Wiley

Subject

Nature and Landscape Conservation,Computers in Earth Sciences,Ecology,Ecology, Evolution, Behavior and Systematics

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