Journal of Arid Regions Geographic Studies

Journal of Arid Regions Geographic Studies

Relationship between vegetation and morphometric indices with soil erosion rate in Meshkin Chai watershed using RUSLE model

Document Type : Original Article

Authors
Department of Physical Geography, Faculty of Social Sciences, University of Mohaghegh Ardabili, Ardabil, Iran
Abstract
Aim: This study aims to investigate the relationship between vegetation and morphometric indices with soil erosion rates in the Meshkin Chay watershed using the Revised Universal Soil Loss Equation (RUSLE) model.
Materials & Method: To achieve the research objective, the RUSLE empirical model was employed to estimate annual soil erosion. For this purpose, various datasets were utilized, including rainfall data from the Meteorological Organization, a 1:250,000 soil texture map obtained from the Forests, Rangelands and Watershed Management Organization of Iran, a 30-meter Digital Elevation Model (DEM), and Landsat 9 satellite imagery. These datasets were integrated in a Geographic Information System (GIS) environment, and following the overlay of all relevant layers, the average soil erosion rate across the watershed was calculated. Subsequently, vegetation and morphometric indices were analyzed to assess their influence on the soil erosion process using ArcMap, and erosion zonation maps were generated.
Finding: The results indicated that soil loss across the entire watershed ranged from 0 to 108.61 tons per hectare per year, with a total annual soil erosion estimate of 50.89 tons per hectare per year. Additionally, the relationship between vegetation and morphometric indices with annual soil erosion was examined. Among these indices, the slope index showed the highest influence and a statistically significant correlation with annual soil erosion, accounting for 74% of the variation in soil erosion.
Conclusion: This study generated a soil erosion risk map for the Meshkin Chay watershed using the RUSLE model and GIS analysis. The findings revealed that slope, vegetation cover, slope curvature, and topography indices had the strongest correlations with annual soil erosion, with their impacts being statistically significant.
Innovation: The novelty of this study lies in the integration of vegetation and morphometric indices to assess their combined effect on soil erosion within the Meshkin-Chay watershed.
Keywords

Subjects


Extended Abstract

1. Introduction

Land degradation has become one of the most critical environmental crises of the present century. Human activities in the past century, particularly industrial agriculture and uncontrolled development have accelerated land degradation and surface soil loss. Soil erosion is rapidly expanding on a global scale, turning into a significant environmental challenge. Natural factors such as land slope, rainfall, and soil type directly influence soil erosion. However, human land management practices can modify these factors, playing a crucial role in either increasing or reducing soil erosion. Adopting appropriate agricultural methods and implementing soil conservation techniques can significantly prevent erosion and enhance soil stability.

2. Materials and methods

In this study, the Revised Universal Soil Loss Equation (RUSLE) was used to estimate soil erosion in the Meshkin-Chay watershed. This model is widely applied due to its semi-empirical structure, ease of implementation, and limited data requirements. RUSLE operates based on five key factors as rainfall, soil type, slope, vegetation cover, and land management, allowing for adaptation and calibration in different climatic and geographical conditions. Compared to more complex models like WEPP or SWAT, RUSLE requires fewer data and lower costs while providing a faster assessment of erosion on a large scale, making it a suitable option for both scientific and practical studies. Next, to integrate vegetation and morphometric indices, several parameters, including NDVI, SAVI, MSAVI, Topographic Wetness Index (TWI), Stream Power Index (SPI), Curvature, Profile Curvature, Plan Curvature, Slope, and Length-Slope Factor (LSF) were examined. After generating the soil erosion map using the RUSLE model, we aimed to analyze the impact of various factors on erosion rates in the study area. Pearson’s correlation analysis was employed to assess the relationship between model factors (such as land slope, soil type, and vegetation cover) and soil erosion rates. This analysis helps identify the key factors influencing soil erosion and propose appropriate mitigation strategies.

3. Results and Discussion

To create the final soil erosion map for the study area, the RUSLE model layers were overlaid in ArcMap using the Raster Calculator tool. The resulting map showed that annual soil erosion ranged from 0 to 108.61 tons per hectare per year. The average annual soil erosion for the Meshkin-Chay watershed was estimated at 50.89 tons per hectare per year. A regression analysis was conducted to determine the contribution of each RUSLE factor to soil loss, where soil loss was considered the dependent variable, and rainfall erosivity, soil erodibility, vegetation cover, topography, and soil conservation were the independent variables. The results indicated that the topographic factor had the highest impact on annual soil loss, with a coefficient of determination (R²) of 0.94. These findings align with those of Abedini et al. (2022), who also reported that topography had the most significant influence on annual soil erosion in RUSLE-based assessments, with an R² of 0.95. After generating spatial distribution maps for the indices (TWI, SPI, Slope, Curvature, Plan Curvature, Profile Curvature, NDVI, SAVI, MSAVI, EVI, and LSF), the correlation between these indices and annual soil erosion in the Meshkin-Chay watershed was analyzed. Regression analysis, a statistical method for estimating a quantitative variable based on its relationship with one or more quantitative variables, was utilized. This relationship, ranging from 0 to 1, indicates the model’s explanatory power, where 0 means the model does not explain any variation, and 1 indicates full explanatory power. For the regression analysis, the required layers were imported into SPSS software, and Pearson’s correlation coefficient was used. In this model, annual soil erosion was the dependent variable (Y), while the selected indices were independent variables (X). According to the results, Slope (R² = 0.74), NDVI (R² = 0.48), LSF (R² = 0.44), and Plan Curvature (R² = 0.49) exhibited the highest correlation and significance in explaining soil erosion in the Meshkin-Chay watershed.

4. Conclusion

This study utilized the RUSLE model to estimate soil erosion in the Meshkin-Chay watershed. Rainfall data, soil texture maps, Landsat 9 satellite imagery, a digital elevation model (DEM), and other environmental data were incorporated. The results showed that soil erosion varied between 0 and 108.61 tons per hectare per year, with an average annual rate of 50.89 tons per hectare. The rainfall erosivity (R) map indicated values ranging from 127.77 to 162.92 MJ·mm. The highest soil erodibility (K) was observed in northern regions, while the topographic factor (LS) had the greatest impact in areas with steep slopes.Vegetation cover (C) varied between 0 and 0.59 and played a significant role in reducing erosion. Among the studied indices, Slope, NDVI, LSF, and Plan Curvature had the highest impact on soil erosion. These findings can be applied to soil management and erosion mitigation in similar watersheds.

5. Acknowledgement & Funding

· The manuscript did not receive a grant from any organization.

6. Conflict of Interest

· The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

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  • Receive Date 27 October 2024
  • Revise Date 19 January 2025
  • Accept Date 23 January 2025
  • Publish Date 01 November 2025