Optimizing the Application of Machine Learning Models in Predicting Landslide Susceptibility Using the Information Value Model in Junlian County of Sichuan Basin

Author:

Qian Lijun1,Ou Lihua1,Li Guoxin1,Cheng Ying2

Affiliation:

1. Xichang University

2. The Engineering & Technical College of Chengdu University of Technology

Abstract

Abstract

Constructing accurate landslide susceptibility models is crucial for effective landslide prevention.This study explores methods to enhance the accuracy of landslide susceptibility models.This paper focuses on Junlian County, Sichuan, as the study area.Initially, a landslide inventory was created using field surveys and historical records.Eight environmental factors were identified via correlation analysis: elevation, slope, aspect, stratigraphic lithology, and distances from faults, roads, rivers, and areas of land use.Subsequently, we constructed an information value model.For training the IV-RF model, non-landslide points in areas of low susceptibility were randomly selected at various ratios (1:1, 1:2, 1:3, 1:4, 1:5).The optimal ratio was used to develop coupled models (IV-RF, IV-LR, IV-SVM, IV-BP), comparing their accuracy and discussing the impact of environmental factors on landslide susceptibility.Results indicate that: (1) the highest prediction accuracy was achieved with a non-landslide ratio of 1:1; (2) the IV-RF model achieved the highest AUC of 0.994; and (3) the most significant factors influencing landslide distribution were stratigraphic lithology and river proximity, followed by elevation and fault distance.

Publisher

Springer Science and Business Media LLC

Reference37 articles.

1. SHAHABI H (2015) HASHIM M. Landslide susceptibility mapping using GIS-based statistical models and Remote sensing data in tropical environment [J]. Sci Rep, 5(9899

2. Landslide Susceptibility Assessment of a Part of the Western Ghats (India) Employing the AHP and F-AHP Models and Comparison with Existing Susceptibility Maps [J];BHAGYA S B, SUMI A S, BALAJI S;Land,2023

3. NWAZELIBE V E, UNIGWE C O, EGBUERI JC (2023) Testing the performances of different fuzzy overlay methods in GIS-based landslide susceptibility mapping of Udi Province, SE Nigeria [J]. Catena, 220(

4. Comparison of Random Forest Model and Frequency Ratio Model for Landslide Susceptibility Mapping (LSM) in Yunyang County (Chongqing, China) [J];WANG Y;Int J Environ Res Public Health,2020

5. Landslide Susceptibility mapping using random forest and extreme gradient boosting: A case study of Fengjie, Chongqing [J];ZHANG W;Geol J,2023

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