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Title Hybrid Machine Learning Approaches for Landslide Susceptibility Modeling
Type JournalPaper
Keywords GIS; hybrid models; machine learning; adaptive neuro fuzzy inference system; landslide; Vietnam
Abstract This paper presents novel hybrid machine learning models, namely Adaptive Neuro Fuzzy Inference System optimized by Particle Swarm Optimization (PSOANFIS), Artificial Neural Networks optimized by Particle Swarm Optimization (PSOANN), and Best First Decision Trees based Rotation Forest (RFBFDT), for landslide spatial prediction. Landslide modeling of the study area of Van Chan district, Yen Bai province (Vietnam) was carried out with the help of a spatial database of the area, considering past landslides and 12 landslide conditioning factors. The proposed models were validated using different methods such as Area under the Receiver Operating Characteristics (ROC) curve (AUC), Mean Square Error (MSE), Root Mean Square Error (RMSE). Results indicate that the RFBFDT (AUC = 0.826, MSE = 0.189, and RMSE = 0.434) is the best method in comparison to other hybrid models, namely PSOANFIS (AUC = 0.76, MSE = 0.225, and RMSE = 0.474) and PSOANN (AUC = 0.72, MSE = 0.312, and RMSE = 0.558). Thus, it is reasonably concluded that the RFBFDT is a promising hybrid machine learning approach for landslide susceptibility modeling.
Researchers DieuTien Bui (Not In First Six Researchers), Jyotir Moy Chatterjee (Not In First Six Researchers), Raghvendra Kumar (Not In First Six Researchers), Dong Nguyen Ba (Not In First Six Researchers), Ataollah Shirzadi (Not In First Six Researchers), Himan Shahabi (Not In First Six Researchers), Sudan Jha (Fifth Researcher), Indra Prakash (Fourth Researcher), Ba Thao Vu (Third Researcher), Binh Thai Pham (Second Researcher), Vu Viet Nguyen (First Researcher)