4.7 Article

Application of Ensemble-Based Machine Learning Models to Landslide Susceptibility Mapping

期刊

REMOTE SENSING
卷 10, 期 8, 页码 -

出版社

MDPI
DOI: 10.3390/rs10081252

关键词

landslide susceptibility; Korea; AdaBoost; Bagging; LogitBoost; Multiclass classification

资金

  1. Korea Institute of Geoscience and Mineral Resources (KIGAM) - Ministry of Science and ICT
  2. National Research Foundation of Korea (NRF) - Korea government (MSIP) [2017R1A2B4003258]
  3. National Research Council of Science & Technology (NST), Republic of Korea [18-3111-1] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)
  4. National Research Foundation of Korea [2017R1A2B4003258] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

向作者/读者索取更多资源

The main purpose of this study was to produce landslide susceptibility maps using various ensemble-based machine learning models (i.e., the AdaBoost, LogitBoost, Multiclass Classifier, and Bagging models) for the Sacheon-myeon area of South Korea. A landslide inventory map including a total of 762 landslides was compiled based on reports and aerial photograph interpretations. The landslides were randomly separated into two datasets: 70% of landslides were selected for the model establishment and 30% were used for validation purposes. Additionally, 20 landslide condition factors divided into five categories (topographic factors, hydrological factors, soil map, geological map, and forest map) were considered in the landslide susceptibility mapping. The relationships among landslide occurrence and landslide conditioning factors were analyzed and the landslide susceptibility maps were calculated and drawn using the AdaBoost, LogitBoost, Multiclass Classifier, and Bagging models. Finally, the maps were validated using the area under the curve (AUC) method. The Multiclass Classifier method had higher prediction accuracy (85.9%) than the Bagging (AUC = 85.4%), LogitBoost (AUC = 84.8%), and AdaBoost (84.0%) methods.

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