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  A methodology to derive global maps of leaf traits using remote sensing and climate data

Moreno-Martínez, Á., Camps-Valls, G., Kattge, J., Robinson, N., Reichstein, M., Bodegom, P. V., et al. (2018). A methodology to derive global maps of leaf traits using remote sensing and climate data. Remote Sensing of Environment, 218, 69-88. doi:10.1016/j.rse.2018.09.006.

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Moreno-Martínez, Álvaro, Author
Camps-Valls, Gustau, Author
Kattge, Jens1, Author           
Robinson, Nathaniel, Author
Reichstein, Markus2, Author           
Bodegom, Peter Van, Author
Kramer, K., Author
Cornelissen, J. Hans C., Author
Reich, Peter B, Author
Bahn, Michael, Author
Niinemets, Ülo, Author
Peñuelas, Josep, Author
Craine, Joseph, Author
Cerabolini, Bruno, Author
Minden, Vanessa, Author
Laughlin, Daniel Charles, Author
Sack, Lawren, Author
Allred, Brady, Author
Baraloto, Christopher, Author
Byun, Chaeho, Author
Soudzilovskaia, Nadejda A., AuthorRunning, Steve W., Author more..
Affiliations:
1Interdepartmental Max Planck Fellow Group Functional Biogeography, Max Planck Institute for Biogeochemistry, Max Planck Society, ou_1938314              
2Department Biogeochemical Integration, Dr. M. Reichstein, Max Planck Institute for Biogeochemistry, Max Planck Society, ou_1688139              

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 Abstract: This paper introduces a modular processing chain to derive global high-resolution maps of plant traits. In particular , we present global maps at 500 m resolution of specific leaf area, leaf dry matter content, leaf nitrogen and phosphorus content per dry mass, and leaf nitrogen/phosphorus ratio. The processing chain exploits machine learning techniques along with optical remote sensing data (MODIS/Landsat) and climate data for gap filling and up-scaling of in-situ measured leaf traits. The chain first uses random forests regression with surro-gates to fill gaps in the database (> 45% of missing entries) and maximizes the global representativeness of the trait dataset. Plant species are then aggregated to Plant Functional Types (PFTs). Next, the spatial abundance of PFTs at MODIS resolution (500 m) is calculated using Landsat data (30 m). Based on these PFT abundances, representative trait values are calculated for MODIS pixels with nearby trait data. Finally, different regression algorithms are applied to globally predict trait estimates from these MODIS pixels using remote sensing and climate data. The methods were compared in terms of precision, robustness and efficiency. The best model (random forests regression) shows good precision (normalized RMSE≤ 20%) and goodness of fit (averaged Pearson's correlation R = 0.78) in any considered trait. Along with the estimated global maps of leaf traits, we provide associated uncertainty estimates derived from the regression models. The process chain is modular, and can easily accommodate new traits, data streams (traits databases and remote sensing data), and methods. The machine learning techniques applied allow attribution of information gain to data input and thus provide the opportunity to understand trait-environment relationships at the plant and ecosystem scales. The new data products-the gap-filled trait matrix, a global map of PFT abundance per MODIS gridcells and the high-resolution global leaf trait maps-are complementary to existing large-scale observations of the land surface and we therefore anticipate substantial contributions to advances in quantifying, understanding and prediction of the Earth system.

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 Dates: 2018-09-092018-09-262018-12-01
 Publication Status: Issued
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 Identifiers: Other: BGC2576
DOI: 10.1016/j.rse.2018.09.006
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Title: Remote Sensing of Environment
Source Genre: Journal
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Publ. Info: New York : Elsevier
Pages: - Volume / Issue: 218 Sequence Number: - Start / End Page: 69 - 88 Identifier: ISSN: 0034-4257
CoNE: https://pure.mpg.de/cone/journals/resource/954925437513