cff-version: 1.2.0 abstract: "This project aimed to produce the first wall-to-wall estimate of C stocks in plants and soils of Canada at 250 m spatial resolution. This dataset contains the map with the soil organic carbon (SOC) in kg/m² for entire Canada in 1m depth, and the uncertainty in SOC predictions. The SOC stock map was produced using 6,533 ground soil samples, long-term climate data, remote sensing observations and a machine learning model. The soil samples containing the x and y coordinates, depth and SOC (in g/kg) information were overlaid with the stacked covariates (soil forming factors) to compose the regression matrix. Random forest models were trained using a recursive feature elimination scheme and a cross-validation assessment. The best model was used for spatial prediction of SOC over Canada in intermediate depths between 0 and 1 m. Afterwards, the SOC content maps were corrected with bulk density and coarse fragment information to compute the total carbon stock for each horizon. The horizons have been added to compose the 0-1m depth interval multiplied by root depths fraction to discount shallow soils. Water and ice/snow areas were removed using a mask based on the Land Cover of Canada map. The SOC stock uncertainty map was built using the first and third quantiles of RF quantile regression approach.

" authors: - family-names: Sothe given-names: Camile orcid: "https://orcid.org/0000-0001-5259-3838" - family-names: Gonsamo given-names: Alemu - family-names: Snider given-names: James - family-names: Arabian given-names: Joyce - family-names: Kurz given-names: Werner A. - family-names: Finkelstein given-names: Sarah orcid: "https://orcid.org/0000-0002-8239-399X" title: "Soil organic carbon stock and uncertainties, 1m depth, at 250m spatial resolution in Canada" keywords: version: 1 identifiers: - type: doi value: 10.4121/14573526.v1 license: CC0 date-released: 2021-05-18