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Mapping of soil erosion susceptibility using advanced machine learning models at Nghe An, Vietnam

Chien Quyet Nguyen, Tuyen Thi Tran, Trang Thanh Thi Nguyen, Nguyễn Thị Hà, T.S. ASTARKHANOVA, Luong Van Vu, Khac Tai Dau, Hieu Ngoc Nguyen, Giang Hương Pham, Duc Dam Nguyen, Indra Prakash, Binh Thai Pham

2023Journal of Hydroinformatics16 citationsDOIOpen Access PDF

Abstract

Abstract Soil Erosion Susceptibility Mapping (SESM) is one of the practical approaches for managing and mitigating soil erosion. This study applied four Machine Learning (ML) models, namely the Multilayer Perceptron (MLP) classifier, AdaBoost, Ridge classifier, and Gradient Boosting classifier to perform SESM in a region of Nghe An province, Vietnam. The development of these models incorporated seven factors influencing soil erosion: slope degree, slope aspect, curvature, elevation, Normalized Difference Vegetation Index (NDVI), rainfall, and soil type. These factors were determined based on 685 identified soil erosion locations. According to SHapley Additive exPlanations (SHAP) analysis, soil type emerged as the most significant factor influencing soil erosion. Among all the developed models, the Gradient Boosting classifier demonstrated the highest prediction power, followed by the MLP classifier, Ridge classifier, and AdaBoost, respectively. Therefore, the Gradient Boosting classifier is recommended for accurate SESM in other regions too, taking into account the local geo-environmental factors.

Topics & Concepts

AdaBoostClassifier (UML)Gradient boostingBoosting (machine learning)Artificial intelligenceNormalized Difference Vegetation IndexEnvironmental scienceComputer scienceSoil sciencePattern recognition (psychology)Machine learningGeologyRandom forestClimate changeOceanographySoil erosion and sediment transportHydrology and Sediment Transport ProcessesGroundwater and Watershed Analysis
Mapping of soil erosion susceptibility using advanced machine learning models at Nghe An, Vietnam | Litcius