globalchange  > 过去全球变化的重建
DOI: 10.1371/journal.pone.0169748
论文题名:
SoilGrids250m: Global gridded soil information based on machine learning
作者: Tomislav Hengl; Jorge Mendes de Jesus; Gerard B. M. Heuvelink; Maria Ruiperez Gonzalez; Milan Kilibarda; Aleksandar Blagotić; Wei Shangguan; Marvin N. Wright; Xiaoyuan Geng; Bernhard Bauer-Marschallinger; Mario Antonio Guevara; Rodrigo Vargas; Robert A. MacMillan; Niels H. Batjes; Johan G. B. Leenaars; Eloi Ribeiro; Ichsani Wheeler; Stephan Mantel; Bas Kempen
刊名: PLOS ONE
ISSN: 1932-6203
出版年: 2017
发表日期: 2017-2-16
卷: 12, 期:2
语种: 英语
英文关键词: Shannon index ; Forecasting ; Machine learning ; Agricultural soil science ; Trees ; Remote sensing ; Glaciers ; Soil ecology
英文摘要: This paper describes the technical development and accuracy assessment of the most recent and improved version of the SoilGrids system at 250m resolution (June 2016 update). SoilGrids provides global predictions for standard numeric soil properties (organic carbon, bulk density, Cation Exchange Capacity (CEC), pH, soil texture fractions and coarse fragments) at seven standard depths (0, 5, 15, 30, 60, 100 and 200 cm), in addition to predictions of depth to bedrock and distribution of soil classes based on the World Reference Base (WRB) and USDA classification systems (ca. 280 raster layers in total). Predictions were based on ca. 150,000 soil profiles used for training and a stack of 158 remote sensing-based soil covariates (primarily derived from MODIS land products, SRTM DEM derivatives, climatic images and global landform and lithology maps), which were used to fit an ensemble of machine learning methods—random forest and gradient boosting and/or multinomial logistic regression—as implemented in the R packages ranger, xgboost, nnet and caret. The results of 10–fold cross-validation show that the ensemble models explain between 56% (coarse fragments) and 83% (pH) of variation with an overall average of 61%. Improvements in the relative accuracy considering the amount of variation explained, in comparison to the previous version of SoilGrids at 1 km spatial resolution, range from 60 to 230%. Improvements can be attributed to: (1) the use of machine learning instead of linear regression, (2) to considerable investments in preparing finer resolution covariate layers and (3) to insertion of additional soil profiles. Further development of SoilGrids could include refinement of methods to incorporate input uncertainties and derivation of posterior probability distributions (per pixel), and further automation of spatial modeling so that soil maps can be generated for potentially hundreds of soil variables. Another area of future research is the development of methods for multiscale merging of SoilGrids predictions with local and/or national gridded soil products (e.g. up to 50 m spatial resolution) so that increasingly more accurate, complete and consistent global soil information can be produced. SoilGrids are available under the Open Data Base License.
URL: http://journals.plos.org/plosone/article/file?id=10.1371/journal.pone.0169748&type=printable
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资源类型: 期刊论文
标识符: http://119.78.100.158/handle/2HF3EXSE/25813
Appears in Collections:过去全球变化的重建
影响、适应和脆弱性
科学计划与规划
气候变化与战略
全球变化的国际研究计划
气候减缓与适应
气候变化事实与影响

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作者单位: ISRIC — World Soil Information, Wageningen, the Netherlands;ISRIC — World Soil Information, Wageningen, the Netherlands;ISRIC — World Soil Information, Wageningen, the Netherlands;ISRIC — World Soil Information, Wageningen, the Netherlands;Faculty of Civil Engineering, University of Belgrade, Belgrade, Serbia;GILab Ltd, Belgrade, Serbia;School of Atmospheric Sciences, Sun Yat-sen University, Guangzhou, China;Institut für Medizinische Biometrie und Statistik, Lübeck, Germany;Agriculture and Agri-Food Canada, Ottawa (Ontario), Canada;Department of Geodesy and Geoinformation, Vienna University of Technology, Vienna, Austria;University of Delaware, Newark (DE), United States of America;University of Delaware, Newark (DE), United States of America;LandMapper Environmental Solutions Inc., Edmonton (Alberta), Canada;ISRIC — World Soil Information, Wageningen, the Netherlands;ISRIC — World Soil Information, Wageningen, the Netherlands;ISRIC — World Soil Information, Wageningen, the Netherlands;Envirometrix Inc., Wageningen, the Netherlands;ISRIC — World Soil Information, Wageningen, the Netherlands;ISRIC — World Soil Information, Wageningen, the Netherlands

Recommended Citation:
Tomislav Hengl,Jorge Mendes de Jesus,Gerard B. M. Heuvelink,et al. SoilGrids250m: Global gridded soil information based on machine learning[J]. PLOS ONE,2017-01-01,12(2)
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