Published on 16 June 2025

A 100 m annual soil salinization dataset from 1985 to 2024 in the Western Songnen Plain, China

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Wang, Bin;Li, Xiaojie;Gao, Zirui

Description

In our study, we identified and classified soil salinization degrees in the Western Songnen Plain at 100 m spatial resolution using ground surveys data and remote sensing imagery, combined with machine learning algorithms over the period 1985 to 2024. The publicly available data used in this paper, as well as the modeling code, are shown below: 1)        The remote sensing satellite data used in this study are freely available on GEE platform (available at https://code.earthengine.google.com/). 2)        Land cover data can be accessed at https://doi.org/10.5281/zenodo.4417810. 3)        SSSG dataset is available at  https://files.isric.org/public/global_soil_salinity. 4)        LDSS data are available at https://doi.org/10.6084/m9.figshare.13295918.v1. 5)        Yearly identification results of saline soils are available at https://code.earthengine.google.com/3dd47875d7455825297b9a6a8766a8ee. 6)        The data required for model inputs (TIR、SIT、PDI) are available at https://code.earthengine.google.com/7fc0e7ee2cf4cb6b744aaf4706a140c9. The presented data file contains:1)  Soil sampling metadataFilename: Soil_EC_sampling_points.csvFormat: CSVDescription: Contains georeferenced soil electrical conductivity observations used for model training and validation.ColumnDescriptionMunicipalAdministrative region (city) where the point is locatedLnECNatural logarithm of observed soil EC1:5 (in dS m⁻¹), measured in labTIRThermal infrared reflectance value from Landsat imagerySITSalinity Index based on Red, NIR, and SWIR bandsPDIPerpendicular Drought Index, used as a proxy for surface soil moisture 2) Model filesTIRSITPDI_predicted.matFormat: Matlab .mat fileDescription: Contains the trained Neural Network Fitting (NNF) model for soil EC prediction. This model was optimized using 14,000 iterations and parameter tuning (e.g., number of hidden layers, learning rate, activation function).Soil_EC_prediction_model.mFormat: MATLAB scriptDescription: Implements the prediction process. It reads spectral input parameters (TIR, SIT, PDI), applies the trained model, and outputs predicted soil EC values.3) Annual Salinity Mapping Outputs (1985–2024)These folders contain annual gridded maps and summary statistics derived from the soil EC prediction model.📁 Statistical_results_by_year/Contents: CSV tables and a .png summarizing the area (in km²) of saline soils in each salinity class per year.Classes: Slightly saline (2–4 dS m⁻¹), Moderately saline (4–8), Highly saline (8–16), Extremely saline (>16)📁 Salinization_degree_maps/Contents: Raster maps (GeoTIFF, EPSG:4326, 100 m resolution) of classified salinity zones for each year (1985–2024) based on U.S. Salinity Laboratory classification. The .png contains year-by-year classified salinity zones.📁 Saline_soil_identification/Contents: Binary maps (GeoTIFF) showing annual identification of saline vs. non-saline soils from 1985 to 2024. The .png contains year-by-year identification results.

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Metrics

Dataset Index

0.3

FAIR Score

13%

Citations

0

Mentions

0

Metrics Over Time

Publication Details

DOI

Publisher

Zenodo

Assigned Domain

Subfield

Atmospheric Science

Field

Earth and Planetary Sciences

Domain

Physical Sciences

Confidence Score

29%

Source

Scholar Data Model

Normalization Factors

FT

15.38

CTw

1.00

MTw

1.00