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Haji Karimi

Haji Karimi

Academic rank: Professor
ORCID: 0000-0001-7464-1810
Education: PhD.
ScopusId: 309169
HIndex: 0/00
Faculty: Agriculture
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Research

Title
Spatial prediction of soil erosion susceptibility: an evaluation of the maximum entropy model
Type
JournalPaper
Keywords
Soil erosion . MaximumEntropy . GIS . Iran
Year
2018
Journal EARTH SCIENCE INFORMATICS
DOI
Researchers Maryam Pournader ، Hasan Ahmadi ، Sadat Feiznia ، Haji Karimi ، Hamid reza Peirovan

Abstract

Soil erosion is considered as the most widespread form of soil degradation which causes serious environmental problems. This study investigates the performance of the maximum entropy (ME) in mapping rill erosion susceptibility in the Golgol watershed, Ilam province, Iran. To this end, ten rill erosion conditioning factors were selected to be employed in the modelling process based on an investigation of the literature. These layers are: elevation, slope percent, aspect, stream power index, topographic wetness index, distance from streams, plan curvature, lithology, land use, and soil. Then, a training dataset of rill erosion locations was used for modelling this phenomenon. The area under receiver operating characteristics curve was used for evaluating the performance of the ME model. In addition, Modified Pacific South-West Inter Agency Committee (MPSIAC) framework was applied and sediment yield was determined for different hydrological units in the study area. At last, Jackknife test was implemented to show the contribution of the factors in the modelling process. The results depicted that area under ROC curve for training and validation datasets were 0.867, and 0.794, respectively. Therefore, this conclusion can be achieved that ME worked well and could be a good tool for generating rill erosion susceptibility maps and its output could be employed for soil conservation in similar areas.