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Digital mapping of soil organic carbon using remote sensing data: A systematic review.

Authors :
Pouladi, Nastaran
Gholizadeh, Asa
Khosravi, Vahid
Borůvka, Luboš
Source :
CATENA. Nov2023, Vol. 232, pN.PAG-N.PAG. 1p.
Publication Year :
2023

Abstract

• DSM of SOC using different remote sensing data was reviewed. • Majority of studies were conducted on mixed land-use types followed by cropland. • Machine learning techniques were used more than (geo)statistical ones. • Terrain variables as predictors had the largest contribution to map SOC. • Data acquired by satellite sensors was employed more than the other types. Soil organic carbon (SOC) has attracted a lot of attention in the soil science community. Freely available remote sensing data combined with advanced digital soil mapping (DSM) techniques has led to a better understanding and management of SOC. This paper has considered the published literature with a focus on digital mapping of SOC using remote sensing data within 2010 to 2023 intervals. The objective was to consider all the important aspects of SOC prediction and mapping, including different land-use types, DSM algorithms, environmental variables, and remote sensing data sources. According to this review conducted on the 217 papers, cropland was the most popular type of land use. Regarding the DSM algorithms, random forest (RF) appeared in the largest number of studies. The terrain and spectral variables derived from the digital elevation model (DEM) and remote sensing images, were the highest demanding among all those used as input predictors. In addition, satellite platforms provided the largest portion of the remote sensing data used for the calibration of DSM models. This review provides quantitative insight into recent trends of SOC digital mapping using remote sensing technology while suggesting some directions for future development of the topic. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
03418162
Volume :
232
Database :
Academic Search Index
Journal :
CATENA
Publication Type :
Academic Journal
Accession number :
171111389
Full Text :
https://doi.org/10.1016/j.catena.2023.107409