Litcius/Paper detail

Geographically Weighted Random Forest Based on Spatial Factor Optimization for the Assessment of Landslide Susceptibility

Feifan Lu, Guifang Zhang, Tonghao Wang, Yumeng Ye, Qinghao Zhao

2025Remote Sensing15 citationsDOIOpen Access PDF

Abstract

Landslide susceptibility mapping is a crucial tool for landslide disaster risk management. However, the spatial heterogeneity of landslide conditioning factors affects the accuracy of predictions. This study proposes a novel method combining GeoDetector and geographical weighted random forest (GeoD-GWRF), a local machine learning approach. The GeoD-GWRF model can select landslide conditioning factors from the perspective of spatial differentiation and interpret the influence of factors on landslides at a local scale. The model’s applicability is verified using Luhe County, Guangdong Province, as a case study. Compared to the traditional random forest model, the GeoD-GWRF model achieves higher prediction accuracy (AUC = 0.942). In addition, the model is applicable to broader study areas and can provide more targeted prediction results. This method offers a valuable reference for exploring spatial heterogeneity in landslide susceptibility mapping.

Topics & Concepts

LandslideRandom forestFactor (programming language)Remote sensingGeologyEnvironmental scienceComputer scienceGeomorphologyArtificial intelligenceProgramming languageLandslides and related hazardsFire effects on ecosystemsGeotechnical Engineering and Analysis