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基于机器学习和编码器耦合的滑坡易发性评价

张萌萌 李少达 王潇 李欣玥 戴可人

河南理工大学学报(自然科学版)2025,Vol.44Issue(2):69-80,12.
河南理工大学学报(自然科学版)2025,Vol.44Issue(2):69-80,12.DOI:10.16186/j.cnki.1673-9787.2023120035

基于机器学习和编码器耦合的滑坡易发性评价

Landslide susceptibility assessment based on machine learning and encoder coupling

张萌萌 1李少达 1王潇 2李欣玥 3戴可人4

作者信息

  • 1. 成都理工大学 地球与行星科学学院,四川 成都 610059
  • 2. 成都大学 建筑与土木工程学院,四川 成都 610106
  • 3. 印度马轩德拉世界联合学院,印度 浦那 412108
  • 4. 成都理工大学 地球与行星科学学院,四川 成都 610059||成都理工大学 地质灾害防治与地质环境保护国家重点实验室,四川 成都 610059
  • 折叠

摘要

Abstract

Objectives To enhance the ability of machine learning models to extract data features with lim-ited samples and improve the predictive accuracy of the models,Methods Jiulong County,Kangding City,Luding County and Muli County,the key provincial erosion prevention areas in the middle and lower reaches of the Yalong and Dadu Rivers in Sichuan Province,were selected as the study area for landslide susceptibility evaluation.Twelve influencing factors were selected to construct the landslide susceptibility evaluation index system,the coefficient of determination(CF)was used to quantify the evaluation index,and noise-reducing auto-encoders(DAEs)and convolutional auto-encoders(CAE)were added to the best-performing model by comparing the logistic regression(LR)and the support vector machine(SVM)models.Results The results showed that compared with the CF-LR model,the CF-SVM model,the precision(P),F-measure,Kappa coefficient,overall accuracy(OA),and AUC of the CF-SVM model increased by 31.9%,1.1%,17.1%,8.5%,and 8.6%,respectively,After adding the DAE encoder,the recall®,F-measure,Kappa coefficient,and overall accuracy(OA)of the CF-SVM-DAE model increased by 8.1%,5.8%,8.1%,and 4%,respectively,compared to the CF-SVM model After adding CAE encoders,the re-call®,F-measure,Kappa coefficient,and overall accuracy(OA)of the CF-SVM-CAE model increased by 0.4%,0.2%,0.2%,and 0.1%,respectively,compared to the CF-SVM model.Conclusions The CF-SVM model has higher prediction accuracy among the selected machine learning methods.Adding DAE en-coder toto the CF-SVM has better robustness than adding CAE encoder,thus the CF-SVM-DAE model per-forms the best among all models and is more suitable for the current study area.

关键词

滑坡/易发性建模/LR/SVM/编码器

Key words

Landslides/susceptibility modelling/LR/SVM/encoders

分类

天文与地球科学

引用本文复制引用

张萌萌,李少达,王潇,李欣玥,戴可人..基于机器学习和编码器耦合的滑坡易发性评价[J].河南理工大学学报(自然科学版),2025,44(2):69-80,12.

基金项目

国家自然科学基金资助项目(41801391) (41801391)

河南理工大学学报(自然科学版)

OA北大核心

1673-9787

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