Designing grazing susceptibility to land degradation index (GSLDI) in hilly areas
Metadata
Show full item recordEditorial
Nature
Date
2022-06-21Referencia bibliográfica
Minea, G... [et al.]. Designing grazing susceptibility to land degradation index (GSLDI) in hilly areas. Sci Rep 12, 9393 (2022). [https://doi.org/10.1038/s41598-022-13596-1]
Sponsorship
Consiliul National al Cercetarii Stiintifice (CNCS) Unitatea Executiva pentru Finantarea Invatamantului Superior, a Cercetarii, Dezvoltarii si Inovarii (UEFISCDI) PN-III-P1-1.1-TE-2019-1180Abstract
Evaluation of grazing impacts on land degradation processes is a difficult task due to the
heterogeneity and complex interacting factors involved. In this paper, we designed a new
methodology based on a predictive index of grazing susceptibility to land degradation index
(GSLDI) built on artificial intelligence to assess land degradation susceptibility in areas affected
by small ruminants (SRs) of sheep and goats grazing. The data for model training, validation, and
testing consisted of sampling points (erosion and no-erosion) taken from aerial imagery. Seventeen
environmental factors (e.g., derivatives of the digital elevation model, small ruminants’ stock), and 55
subsequent attributes (e.g., classes/features) were assigned to each sampling point. The impact of SRs
stock density on the land degradation process has been evaluated and estimated with two extreme
SRs’ density scenarios: absence (no stock), and double density (overstocking). We applied the GSLDI
methodology to the Curvature Subcarpathians, a region that experiences the highest erosion rates in
Romania, and found that SRs grazing is not the major contributor to land degradation, accounting for
only 4.6%. This methodology could be replicated in other steep slope grazing areas as a tool to assess
and predict susceptible to land degradation, and to establish common strategies for sustainable landuse
practices.