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A Global Meta-Analysis of Soil Salinity Prediction Integrating Satellite Remote Sensing, Soil Sampling, and Machine Learning
- Source :
- IEEE Transactions on Geoscience and Remote Sensing. 60:1-15
- Publication Year :
- 2022
- Publisher :
- Institute of Electrical and Electronics Engineers (IEEE), 2022.
-
Abstract
- Despite the growing interest among researchers, satellite-based prediction of soil salinity remains highly uncertain. The improvements in prediction accuracy reported in previous studies are usually limited to a single area. We performed a meta-analysis of regional satellite-based soil salinity predictions combined with in situ soil sampling and machine learning. Based on R² and root-mean-square error (RMSE) collected, we evaluated the effects of various features on the model accuracy and established a Bayesian network to evaluate the joint causal effect of multifeatures. Most significant differences were found in soil sampling schemes and characteristics of the study area, including the mean and variability (averaged R² of 0.75 for soil sample sets with lower salinity variation and 0.62 for others) of the salinity, climate type (R² of 0.64 in arid areas and 0.74 in others), soil texture (R² of 0.66 in sandy areas and 0.57 in others), and the interval between sampling date and satellite data acquisition date (R² of 0.53 under the condition of over 15 days and 0.65 in others). Generally, using different satellite data has limited effects on model performance among which Sentinel-2 performed better (R² = 0.72) than Landsat (R² = 0.66). The sampling of subsamples for each sample should focus on their subpixel-scale spatial heterogeneity across satellite data rather than the number of subsamples. It is also necessary to select appropriate vegetation and salinity indices for different satellite data under different vegetation conditions. Among algorithms, random forests (R² = 0.70) and support vector machines (R² = 0.71) performed best.
- Subjects :
- Soil salinity
Satellites
Soil texture
multispectral
satellite
Earth and Planetary Sciences(all)
soil salinity
Machine learning
computer.software_genre
geography
soil
Machine Learning
remote sensing
Salinity (geophysical)
Electrical and Electronic Engineering
Vegetation mapping
business.industry
Sampling (statistics)
Vegetation
predictive models
Random forest
Spatial heterogeneity
data models
Salinity
hyperspectral
General Earth and Planetary Sciences
Satellite
Artificial intelligence
business
computer
Subjects
Details
- ISSN :
- 15580644 and 01962892
- Volume :
- 60
- Database :
- OpenAIRE
- Journal :
- IEEE Transactions on Geoscience and Remote Sensing
- Accession number :
- edsair.doi.dedup.....8113ba24078ff792306f97f519863515