Time Series Assessment of Soil Erosion Risk Using RUSLE Model: A Machine Learning Approach: (a case study in Abaya Lake Sub-Catchment)
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Abstract
The objective of this study was to examine the nature, extent and rate of soil erosion in Abaya
Lake sub-catchment using model estimate and GIS. Revised Universal Soil Loss Equation
(RUSLE) integrated with Machin learning approach; satellite remote sensing and
geographical information systems (GIS) are used as a methodology. Annual precipitation,
FAO digital soil map, 12.5m digital elevation model, land-cover map, land use types and
slope steepness were used to determine the RUSLE factors. Findings indicated that, the total
soil loss in the sub-Catchment amounted to 2.38 million tons per year, with potential annual
soil loss varying from 0.0 to 508.97 tons/ha/year and average annual soil loss rate of 32.84
tons/ha/year, exhibiting notable spatial variability. Specifically, the average annual soil loss
in the western catchment ranged from 0.0 to 507.97 tons/ha/year, while the upper and lower
section of the Sub-catchment showed average annual soil loss ranging from 0.0 - 101.1 and
0.0 - 64.94 tons/ha/year respectively. The study classified areas experiencing sever erosion
covering approximately 13,724 hectares (16% of the total catchment), while regions at high
and very high risk accounted for 62,707.5hecatrs (73%) and moderate risk covers
9,614.55hectars (11%). To facilitate effective soil and water conservation strategies, the
sub-watersheds were prioritized based on erosion severity. The finding highlighted the
critical need for conservation measures in areas classified as sever and very high risk to
prevent irreversible degradation. Consequently, sub-watershed “A” was identified as the
top priority for immediate conservation efforts followed by sub watershed “B”, “G”, and
“D” in the second phase, with “H”, “F” and “E” in the third phase and finally sub
watershed “C” last.
