This scientic publication in digital format is a continuation of the Printed Review: Legal Deposit pp 196802ZU42, ISSN 0378-7818.
Aguirre-Salado et al. Rev. Fac. Agron. (LUZ). 2024 40(1): e244101
6-6 |
eigenvalues and eigenvectors, PC
1
 revealed that the COS variable 
(0.50) and the vegetation cover variable (0.86) were directly and 
proportionally related to the component, as they had a positive sign 
in the loading. PC
2
 disclosed that the COS variable (-0.86) and the 
vegetation cover variable (0.50) were representative but with inverted 
signs in this relationship. Meanwhile, in PC
3
, it was shown that 
only the Slope variable (0.99) was representative in a directly and 
proportionally related manner to that component. Furthermore, the 
Pearson’s correlation coecient obtained to examine the relationship 
between the four explaining variables (i.e., land use, vegetation cover, 
conservation practices and slope) and SOC was 0.16, 0.08, 0.06 and 
0.04, respectively.  These  values  align  with  the  ndings  of  Yescas 
et al. (2018), Bai and Zhou (2019), and Gadisa and Hailu (2020), 
supporting the notion that land use and vegetation cover primarily 
inuence SOC variability, while slope carries a lower weight.
Conclusion
The analysis of observed and estimated SOC in a small 
watershed  revealed  signicant  variability  and  heterogeneity.  The 
SOC distribution pattern was successfullymodeledwith spatial 
interpolation and subsequently related to four explaining variables 
includingland use, vegetation cover, conservation practices and slope. 
Soil and water conservation practices played a crucial role, enhancing 
SOC stock by preventing soil erosion. To safeguard SOC reserves, it 
is crucial to enhance vegetative cover and supplement land use with 
SWCP. Through these measures, not only can erosion be eectively 
managed, but they also play a pivotal role in curbing CO
2
 emissions, 
thereby mitigating the impact of global warming.
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