Abstract

Snow avalanche is among the most harmful natural hazards with major socioeconomic and environmental destruction in the cold and mountainous regions. The devastating propagation and accumulation of the snow avalanche debris and mass wasting of surface rocks and vegetation particles threaten human life, transportation networks, built environments, ecosystems, and water resources. Susceptibility assessment of snow avalanche hazardous areas is of utmost importance for mitigation and development of land-use policies. This research evaluates the performance of the well-known machine learning methods, i.e., generalized additive model (GAM), multivariate adaptive regression spline (MARS), boosted regression trees (BRT), and support vector machine (SVM), in modeling the mass wasting hazard induced by snow avalanches. The key features are identified by the recursive feature elimination (RFE) method and used for the model calibration. The results indicated a good performance of the modeling process (Accuracy > 0.88, Kappa > 0.76, Precision > 0.84, Recall > 0.86, and AUC > 0.89), which the SVM model highlighted superior performance than others. Sensitivity analysis demonstrated that the topographic position index (TPI) and distance to stream (DTS) were the most important variables which had more contribution in producing the susceptibility maps.

Highlights

  • Snow avalanche is among the most harmful natural hazards with major socioeconomic and environmental destruction in the cold and mountainous regions

  • Mass wasting induced by snow avalanche is among the major natural hazards in the cold and mountainous regions

  • Key features in this study were topographic position index (TPI), distance to stream (DTS), Stream Power Index (SPI), lithology, precipitation, Topographic Wetness Index (TWI), Distance to Road (DTR), and Vector Ruggedness Measure (VRM) which were identified by the recursive feature elimination (RFE) method

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Summary

Introduction

Snow avalanche is among the most harmful natural hazards with major socioeconomic and environmental destruction in the cold and mountainous regions. Section two presents the details of the study area, data, and the ML and the feature selection methods used for snow avalanche debris modeling. The curvature map (Fig. 3d) can be an important layer in snow avalanche debris modeling.

Results
Conclusion

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