Quantitative Comparison of Probabilistic Multi-source Spatial Data Integration Models for Landslide Hazard Assessment

  • Park No-Wook (Geoscience Information Center, KIGAM) ;
  • Chi Kwang-Hoon (Geoscience Information Center, KIGAM) ;
  • Chung Chang-Jo F. (Geological Survey of Canada) ;
  • Kwon Byung-Doo (Department of Earth Sciences, Seoul National University)
  • Published : 2004.10.01

Abstract

This paper presents multi-source spatial data integration models based on probability theory for landslide hazard assessment. Four probabilistic models such as empirical likelihood ratio estimation, logistic regression, generalized additive and predictive discriminant models are proposed and applied. The models proposed here are theoretically based on statistical relationships between landslide occurrences and input spatial data sets. Those models especially have the advantage of direct use of continuous data without any information loss. A case study from the Gangneung area, Korea was carried out to quantitatively assess those four models and to discuss operational issues.

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