Global soil organic carbon in tidal marshes version 1

Maxwell, T., Spalding, M., Friess, D., Murray, N., Rogers, K., Rovai, A., Smart, L., Weilguny, L., Adame, M., Adams, J., Austin, W., Copertino, M., Cott, G., Duarte de Paula Costa, M., Holmquist, J., Ladd, C., Lovelock, C., Ludwig, M., Moritsch, M., Navarro, A., et al. (2024). Global soil organic carbon in tidal marshes version 1. 10.5281/zenodo.10940065.

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Abstract

This dataset is the first version of the predictions, expected model error, and area of applicability of the global soil organic carbon in tidal marshes at a 30 m resolution. All methods are provided in detail in the accompanying Nature Communications paper, Maxwell et al. (2024) Soil carbon in the world's tidal marshes.

Tidal marsh extent map

Worthington et al. (2023) The distribution of global tidal marshes from earth observation data. bioRxiv.

Training data

Maxwell et al. (2023) Global dataset of soil organic carbon in tidal marshes. Scientific Data.

Holmquist et al. (2024) The Coastal Carbon Library and Atlas: Open source soil data and tools supporting blue carbon research and policy. Global Change Biology.

Citations for the training data from the above-mentioned syntheses are available here.

Model

Code available on Github.

3D soil modelling approach: Hengl & MacMillan (2019). Predictive Soil Mapping with R.

Random forest model: Kuhn (2008). Building Predictive Models in R Using the caret Package. J. Stat. Softw.

k-NNDM spatial cross validation: Meyer, Milà & Ludwig (2022). CAST: ‘caret’ Applications for Spatial-Temporal Models.

Area of applicability: Meyer & Pebesma (2022). Machine learning-based global maps of ecological variables and the challenge of assessing them. Nature Communications.

Description of files

GRID.zip: shapefile with the location of each tile in the zipped folders below

Final_predicted_SOC_both_layers.png: final predicted tidal marsh soil organic carbon (SOC) for a) the 0-30 cm soil layer and b) the 30-100 cm soil layer (aggregated per 2° cell).

Area of applicability

aoa0.zip: the area of applicability (AOA) mask for the 0-30 cm layer. Pixels with an AOA value of 0 or 0.5 are considered outside the AOA; with an AOA value of 1 are considered inside the AOA.

aoa30.zip: the area of applicability (AOA) mask for the 30-100 cm layer. Pixels with an AOA value of 0 or 0.5 are considered outside the AOA; with an AOA value of 1 are considered inside the AOA.

Final predictions and expected error

pred0_aoa.zip: predicted soil organic carbon for the 0-30 cm layer (Mg C ha-1), masked by the area of applicability.

pred30_aoa.zip: predicted soil organic carbon for the 30-100 cm layer (Mg C ha-1), masked by the area of applicability.

err0_aoa.zip: expected model error for the 0-30 cm layer (Mg C ha-1), masked by the area of applicability.

err30_aoa.zip: expected model error for the 30-100 cm layer (Mg C ha-1), masked by the area of applicability.

Initial predictions and expected error

pred0.zip: predicted soil organic carbon for the 0-30 cm layer (Mg C ha-1).

pred30.zip: predicted soil organic carbon for the 30-100 cm layer (Mg C ha-1).

err0.zip: expected model error for the 0-30 cm layer for all tidal marsh extent pixels (Mg C ha-1).

err30.zip: expected model error for the 30-100 cm layer for all tidal marsh extent pixels (Mg C ha-1).

Item Type: Data
Additional Information: Creative Commons Attribution 4.0 International
Research Programs: Biodiversity and Natural Resources (BNR)
Depositing User: Luke Kirwan
Date Deposited: 09 Jan 2025 13:59
Last Modified: 09 Jan 2025 13:59
URI: https://pure.iiasa.ac.at/20309

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