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Deep learning and boosting framework for piping erosion susceptibility modeling: spatial evaluation of agricultural areas in the semi-arid region

Chen College of Geology and Environment, Xi’an University of Science and Technology, Shaanxi, Xi’an, China|
Xiaojing (57204956687) Geospatial Analysis and Modelling Research (GAMR) Laboratory, Department of Civil and Environmental Engineering, Universiti Teknologi PETRONAS (UTP), Perak, Malaysia| Abdul-Lateef (46160943300); Wang Faculty of Environmental and Chemical Engineering, Duy Tan University, Danang, Viet Nam| Nguyen Thi Thuy (57211268069); Balogun Institute of Research and Development, Duy Tan University, Danang, Viet Nam| Quoc Bao (57208495034); Linh Faculty of Environment and Labour Safety, Ton Duc Thang University, Ho Chi Minh City, Viet Nam| Amit (57205705795); Pham Environmental Quality, Atmospheric Science and Climate Change Research Group, Ton Duc Thang University, Ho Chi Minh City, Viet Nam| Gouri Sankar (36058362100); Bera Department of Earth Sciences, Indian Institute of Engineering Science and Technology, West Bengal, Shibpur, India| Saeid (57211275419); Bhunia TPF Gentisa Euroestudios SL Gurgaon, Haryana, Gurgaon, India| Wei (57192207628); Janizadeh Department of Watershed Management Engineering and Sciences, Faculty in Natural Resources and Marine Science, Tarbiat Modares University, Tehran, Iran| Yunzhi (57220185564); Chen Ministry of Natural Resources, Key Laboratory of Coal Resources Exploration and Comprehensive Utilization, Xi’an, China|

Geocarto International Số 16, năm 2022 (Tập 37, trang 4628-4654)

ISSN: 10106049

ISSN: 10106049

DOI:

Tài liệu thuộc danh mục:

Article

English

Từ khóa: Iran; Markazi; agricultural land; land use; machine learning; modeling; piping; remote sensing; semiarid region; water erosion
Tóm tắt tiếng anh
Piping erosion is one of the water erosions that cause significant changes in the landscape, leading to environmental degradation. To prevent losses resulting from tube growth and enable sustainable development, developing high-precision predictive algorithms for piping erosion is essential. Boosting is a classic algorithm that has been successfully applied to diverse computer vision tasks. Therefore, this work investigated the predictive performance of the Boosted Linear Model (BLM), Boosted Regression Tree (BRT), Boosted Generalized Linear Model (Boost GLM), and Deep Boosting models for piping erosion susceptibility mapping in Zarandieh Watershed located in the Markazi province of Iran. A piping inventory map including 152 piping erosion locations was prepared for algorithm training and testing. 18 initial predisposing factors (altitude, slope, plan curvature, profile curvature, distance from river, drainage density, distance from road, rainfall, land use, soil type, bulk density, CEC, pH, clay, silt, sand, topographical position index (TPI), topographic wetness index (TWI)) was derived from multiple remote sensing (RS) sources to determine the piping erosion prone areas. The most significant predisposing factors were selected using multi-collinearity analysis which indicates linear correlations between predisposing factors. Finally, the results were evaluated for Sensitivity, Specificity, Positive predictive values (PPV) and Negative predictive value (NPV), and Receiver Operation characteristic (ROC) curve. The best Sensitivity (0.80), Specificity (0.84), PPV (0.85), NPV (0.79), and ROC (0.93), were obtained by Deep Boosting model. The results of the piping erosion susceptibility study in agricultural land use showed that 41% of agricultural lands are very sensitive to piping erosion. This outcome will enable natural resource managers and local planners to assess and take effective decisions to minimize damages to agricultural land use by accurately identifying the most vulnerable areas. Hence, this research proved Deep Boosting model’s ability for piping erosion susceptibility mapping in comparison to other popular methods such as BLM, BRT, and Boost GLM. © 2021 Informa UK Limited, trading as Taylor & Francis Group.

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