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Machine learning‐based gully erosion susceptibility mapping: A case study of eastern India

Saha S. Department of Geography, University of Gour Banga, Malda, West Bengal 732103, India|
Bui D.T. Institute of Research and Development, Duy Tan University, Da Nang, 550000, Viet Nam| Blaschke T. Department of Geoinformatics – Z_GIS, University of Salzburg, Salzburg, 5020, Austria| Arabameri A. Department of Geomorphology, Tarbiat Modares University, Tehran, 14117‐13116, Iran| Roy J. Dept. of Geography, University of Gour Banga, Malda, West Bengal, India|

Sensors (Switzerland) Số 5, năm 2020 (Tập 20, trang -)

ISSN: 14248220

ISSN: 14248220

DOI: 10.3390/s20051313

Tài liệu thuộc danh mục: Scopus

Article

English

Từ khóa: Decision trees; Disasters; Erosion; Forestry; Geographic information systems; Machine learning; Mean square error; Random forests; Bayes trees; Boosted regression trees; Environmental conditions; Machine learning techniques; Receiver operating characteristics; Root mean squared errors; Susceptibility mapping; Tree ensembles; Landforms; article; computer language; geographic information system; India; plant seed; random forest; receiver operating characteristic; river basin
Tóm tắt tiếng anh
Gully erosion is a form of natural disaster and one of the land loss mechanisms causing severe problems worldwide. This study aims to delineate the areas with the most severe gully erosion susceptibility (GES) using the machine learning techniques Random Forest (RF), Gradient Boosted Regression Tree (GBRT), Naïve Bayes Tree (NBT), and Tree Ensemble (TE). The gully inventory map (GIM) consists of 120 gullies. Of the 120 gullies, 84 gullies (70%) were used for training and 36 gullies (30%) were used to validate the models. Fourteen gully conditioning factors (GCFs) were used for GES modeling and the relationships between the GCFs and gully erosion was assessed using the weight‐of‐evidence (WofE) model. The GES maps were prepared using RF, GBRT, NBT, and TE and were validated using area under the receiver operating characteristic(AUROC) curve, the seed cell area index (SCAI) and five statistical measures including precision (PPV), false discovery rate (FDR), accuracy, mean absolute error (MAE), and root mean squared error (RMSE). Nearly 7% of the basin has high to very high susceptibility for gully erosion. Validation results proved the excellent ability of these models to predict the GES. Of the analyzed models, the RF (AUROC = 0.96, PPV = 1.00, FDR = 0.00, accuracy = 0.87, MAE = 0.11, RMSE = 0.19 for validation dataset) is accurate enough for modeling and better suited for GES modeling than the other models. Therefore, the RF model can be used to model the GES areas not only in this river basin but also in other areas with the same geo‐environmental conditions. © 2020 by the authors. Licensee MDPI, Basel, Switzerland.

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