Volume 29, Issue 4 (Winter 2025)                   jwss 2025, 29(4): 123-139 | Back to browse issues page


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Saleh I, Soleimanpour S M, Khazaei M, Rahmati O, Shadfar S. Estimation of Soil Loss Volume Caused by Gully Erosion Using Machine Learning Models in Abgendi Watershed. jwss 2025; 29 (4) :123-139
URL: http://jstnar.iut.ac.ir/article-1-4495-en.html
1. Forests, Rangelands and Watershed Management Research Department, Kohgiluyeh & Boyerahmad Agricultural and Natural Resources Research, and Education Center, Agricultural Research, Education, and Extension Organization (AREEO), Yasuj, Iran. , salehiman61@gmail.com
Abstract:   (20 Views)
Soil loss and extensive degradation caused by gully erosion have always caused serious damage. Because direct field measurement and monitoring of gully erosion are costly and time-consuming, it is very difficult to determine the amount of soil loss caused by gully erosion. The present research was conducted to calculate the volume of soil loss due to gully erosion using machine learning models in the Abgendi watershed of Kohgiluyeh and Boyar Ahmad province based on field studies. Machine learning models include random forest, support vector machine, artificial neural network, and adaptive neural fuzzy inference system. The location of 68 gullies in the area was recorded. Hence, initially, digital layers of factors affecting the expansion of gullies, including topography, pedology, lithology, and hydrology, were prepared as independent variables to model soil loss caused by gullies. Then, representative gullies were selected in the studied watershed, and the volume of soil loss due to gully erosion was directly measured in the field as a dependent variable. The measured gullies were randomly divided into two training and validation groups. The results of the models were evaluated using root mean square error (RMSE) and R2, and the models were compared. According to the results, gully erosion in the Abgendi watershed of Kohgiluyeh and Boyar Ahmad province is increasing every year. Also, the amount of erosion and soil loss will increase when the amount of rainfall and the frequency of intense rainfall (≥5mm) are high. Among the machine learning models used in the present research, the random forest (RF) model was selected as the best model to predict soil loss generated by gully erosion.
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Type of Study: Research | Subject: Ggeneral

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