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Spatial prediction of landslide susceptibility in western Serbia using hybrid support vector regression (SVR) with GWO,BAT and COA algorithms
Authors:Abdul-Lateef Balogun  Fatemeh Rezaie  Quoc Bao Pham  Ljubomir Gigovi?  Sini?a Drobnjak  Yusuf A Aina  Mahdi Panahi  Shamsudeen Temitope Yekeen  Saro Lee
Institution:Geospatial Analysis and Modelling(GAM)Research Group,Department of Civil&Environmental Engineering,Universitit Teknologi PETRONS(UTP),Seri Iskandar 32610,Perak,Malaysia;Geoscience Platform Research Division,Korea Institute of Geoscience and Mineral Resources(KIGAM),124,Gwahak-ro Yuseong-gu,Daejeon 34132,Republic of Korea;Department of Geophysical Exploration,Korea University of Science and Technology,217 Gajeong-ro Yuseong-gu,Daejeon 34113,Republic of Korea;Institute of Research and Development,Duy Tan University,Danang 550000,Vietnam;Faculty of Environmental and Chemical Engineering,Duy Tan University,Danang 550000,Vietnam;Military Geographical Institute,11000 Belgrade,Serbia;Department of Geomatics Engineering Technology,Yanbu Industrial College,Yanbu,Saudi Arabia;Geoscience Platform Research Division,Korea Institute of Geoscience and Mineral Resources(KIGAM),124,Gwahak-ro Yuseong-gu,Daejeon 34132,Republic of Korea;Division of Science Education,College of Education,#4–301,Gangwondaehak-gil Chuncheon-si,Kangwon National University,Gangwon-do 24341,Republic of Korea
Abstract:In this study, we developed multiple hybrid machine-learning models to address parameter optimization limitations and enhance the spatial prediction of landslide susceptibility models. We created a geographic information system database, and our analysis results were used to prepare a landslide inventory map containing 359 landslide events identified from Google Earth, aerial photographs, and other validated sources. A support vector regression (SVR) machine-learning model was used to divide the landslide inventory into training (70%) and testing (30%) datasets. The landslide susceptibility map was produced using 14 causative factors. We applied the established gray wolf optimization (GWO) algorithm, bat algorithm (BA), and cuckoo optimization algorithm (COA) to fine-tune the parameters of the SVR model to improve its predictive accuracy. The resultant hybrid models, SVR-GWO, SVR-BA, and SVR-COA, were validated in terms of the area under curve (AUC) and root mean square error (RMSE). The AUC values for the SVR-GWO (0.733), SVR-BA (0.724), and SVR-COA (0.738) models indicate their good prediction rates for landslide susceptibility modeling. SVR-COA had the greatest accuracy, with an RMSE of 0.21687, and SVR-BA had the least accuracy, with an RMSE of 0.23046. The three optimized hybrid models outperformed the SVR model (AUC = 0.704, RMSE = 0.26689), confirming the ability of metaheuristic algorithms to improve model performance.
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