Abstract

Landslide hazards have attracted increasing public attention over the past decades due to a series of catastrophic consequences of landslide occurrence. Thus, the mitigation and prevention of landslide hazards have been the topical issues. Thereinto, numerous research achievements on landslide susceptibility assessment have been springing up in recent years. In this paper, four benchmark models including best-first decision tree (BFTree), functional tree, support vector machine and classification regression tree (CART) and were integrated with bagging strategy. Then, these bagging-based models were applied to map regional landslide susceptibility in Jiange County, Sichuan Province, China. Fifteen conditioning factors were employed in establishing landslide susceptibility models, respectively, slope aspect, slope angle, elevation, plan curvature, profile curvature, TWI, SPI, STI, lithology, soil, land use, NDVI, distance to rivers, distance to roads and distance to lineaments. Then utilize correlation attribute evaluation method to weigh the contribution of each factor. Finally, the comprehensive performance of various bagging-based models and corresponding benchmark models was evaluated and systematically compared applying receiver operating characteristic curve and area under curve (AUC) values. Results demonstrated that bagging-based ensemble models significantly outperformed their corresponding benchmark models with validation dataset. Among them the Bag-CART model has the highest AUC value of 0.874; however, the AUC value of CART model is only 0.766, which reflected satisfying predictive capacity of integrated models in some degree. The achievements obtained in this study have some reference values for landslides prevention and land resource planning in Jiange County.

Highlights

  • Version of Record: A version of this preprint was published at Natural Hazards on August 21st, 2021

  • A positive average merit (AM) value means that the corresponding conditioning factor contributes to landslide susceptibility model, and the conditioning factor with higher AM

  • It can be concluded from the table that the contribution of slope angle is the topmost (AM=0.311), and its standard deviation is ±0.013

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Summary

Introduction

Version of Record: A version of this preprint was published at Natural Hazards on August 21st, 2021. Four benchmark models including best-first decision tree (BFTree), functional tree (FT), support vector machine (SVM) and classification regression tree (CART) and were integrated with bagging strategy. These baggingbased models were applied to map regional landslide susceptibility in Jiange County, Sichuan Province, China. The comprehensive performance of various bagging-based models and corresponding benchmark models was evaluated and systematically compared applying receiver operating characteristic curve (ROC) and area under curve (AUC) values. The achievements obtained in this study have some reference values for landslides prevention and land resource planning in Jiange County. As the process of urbanization have been boosted in the past decades around mountainous areas, the negative effects of human activities on geological environment have become more significant as well

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