Landslide Susceptibility Evaluation Based on Coupling of GBDT-LR Model and Information Model

[Objective] The accurate and rapid landslide susceptibility zoning method were studied in order to provide a reference for regional safety monitoring, and provide a scientific basis for the government to control landslide disasters. [Methods] The study was conducted in the Guichi District of Chizhou...

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Main Authors: Zhangyu Dong, Jin Zhang, Peng Peng, Yan Wang, Zhi Yang, Sen An
Format: Article
Language:zho
Published: Science Press 2023-02-01
Series:Shuitu baochi tongbao
Subjects:
Online Access:http://stbctb.alljournal.com.cn/stbctben/article/abstract/20230118
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author Zhangyu Dong
Jin Zhang
Peng Peng
Yan Wang
Zhi Yang
Sen An
author_facet Zhangyu Dong
Jin Zhang
Peng Peng
Yan Wang
Zhi Yang
Sen An
author_sort Zhangyu Dong
collection DOAJ
description [Objective] The accurate and rapid landslide susceptibility zoning method were studied in order to provide a reference for regional safety monitoring, and provide a scientific basis for the government to control landslide disasters. [Methods] The study was conducted in the Guichi District of Chizhou City, Anhui Province. The coupled model of gradient boosting decision tree-logistic regression (GBDT-LR) and an information value (I) model was used to determine the evaluation of regional landslide susceptibility. The model learns from the original samples and combines them to generate new simulation samples in order to enhance the fitting ability of the model to evaluate landslide susceptibility. The Borderline-Smote algorithm was used to solve the problem of sample data asymmetry. The slope unit divided by r.slopeunits software was selected as the minimum evaluation unit, and a total of 10 evaluation factors were selected: slope gradient, slope aspect, terrain curvature, profile curvature, plane curvature, topographic wetness index (TWI), topographic relief, normalized difference vegetation index (NDVI), distance from fault, and distance from river. The landslide susceptibility model was evaluated from three aspects: frequency ratio, density of landslide disaster points and hidden danger points, and the receiver operating characteristic (ROC) curve. [Results] The experimental results showed that the frequency ratio of the coupled model I-GBDT-LR was 10%, 13%, and 7% greater than that of the I, LR, and I-LR models, respectively. The density of landslide disaster points and hidden danger points in the high risk area increased by about 9, 11, and 7, respectively, and the ROC accuracy increased by about 10%, 9%, and 5%, respectively. [Conclusion] The accuracy of the coupled model was higher than that of the single model, and the accuracy of the coupled model proposed was higher than that of the I-LR coupled model, which provides an effective and new evaluation method for landslide susceptibility evaluation.
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spelling doaj.art-79aafbaebcea4bee932a323d8b6d6ba02024-03-01T06:41:51ZzhoScience PressShuitu baochi tongbao1000-288X2023-02-0143114915710.13961/j.cnki.stbctb.2023.01.0181000-288X(2023)01-0149-09Landslide Susceptibility Evaluation Based on Coupling of GBDT-LR Model and Information ModelZhangyu Dong0Jin Zhang1Peng Peng2Yan Wang3Zhi Yang4Sen An5School of Computer Science and Information Engineering, Hefei University of Technology, Hefei, Anhui 230601, ChinaSchool of Computer Science and Information Engineering, Hefei University of Technology, Hefei, Anhui 230601, ChinaGeological Survey Anhui Province (Anhui Institute of Geological Sciences), Hefei, Anhui 230001, ChinaGeological Survey Anhui Province (Anhui Institute of Geological Sciences), Hefei, Anhui 230001, ChinaGeological Survey Anhui Province (Anhui Institute of Geological Sciences), Hefei, Anhui 230001, ChinaSchool of Computer Science and Information Engineering, Hefei University of Technology, Hefei, Anhui 230601, China[Objective] The accurate and rapid landslide susceptibility zoning method were studied in order to provide a reference for regional safety monitoring, and provide a scientific basis for the government to control landslide disasters. [Methods] The study was conducted in the Guichi District of Chizhou City, Anhui Province. The coupled model of gradient boosting decision tree-logistic regression (GBDT-LR) and an information value (I) model was used to determine the evaluation of regional landslide susceptibility. The model learns from the original samples and combines them to generate new simulation samples in order to enhance the fitting ability of the model to evaluate landslide susceptibility. The Borderline-Smote algorithm was used to solve the problem of sample data asymmetry. The slope unit divided by r.slopeunits software was selected as the minimum evaluation unit, and a total of 10 evaluation factors were selected: slope gradient, slope aspect, terrain curvature, profile curvature, plane curvature, topographic wetness index (TWI), topographic relief, normalized difference vegetation index (NDVI), distance from fault, and distance from river. The landslide susceptibility model was evaluated from three aspects: frequency ratio, density of landslide disaster points and hidden danger points, and the receiver operating characteristic (ROC) curve. [Results] The experimental results showed that the frequency ratio of the coupled model I-GBDT-LR was 10%, 13%, and 7% greater than that of the I, LR, and I-LR models, respectively. The density of landslide disaster points and hidden danger points in the high risk area increased by about 9, 11, and 7, respectively, and the ROC accuracy increased by about 10%, 9%, and 5%, respectively. [Conclusion] The accuracy of the coupled model was higher than that of the single model, and the accuracy of the coupled model proposed was higher than that of the I-LR coupled model, which provides an effective and new evaluation method for landslide susceptibility evaluation.http://stbctb.alljournal.com.cn/stbctben/article/abstract/20230118landslide susceptibilityinformation valuelogistic regressiongradient boosting decision tree-logistic regression (gbdt-lr)chizhou city of anhui province
spellingShingle Zhangyu Dong
Jin Zhang
Peng Peng
Yan Wang
Zhi Yang
Sen An
Landslide Susceptibility Evaluation Based on Coupling of GBDT-LR Model and Information Model
Shuitu baochi tongbao
landslide susceptibility
information value
logistic regression
gradient boosting decision tree-logistic regression (gbdt-lr)
chizhou city of anhui province
title Landslide Susceptibility Evaluation Based on Coupling of GBDT-LR Model and Information Model
title_full Landslide Susceptibility Evaluation Based on Coupling of GBDT-LR Model and Information Model
title_fullStr Landslide Susceptibility Evaluation Based on Coupling of GBDT-LR Model and Information Model
title_full_unstemmed Landslide Susceptibility Evaluation Based on Coupling of GBDT-LR Model and Information Model
title_short Landslide Susceptibility Evaluation Based on Coupling of GBDT-LR Model and Information Model
title_sort landslide susceptibility evaluation based on coupling of gbdt lr model and information model
topic landslide susceptibility
information value
logistic regression
gradient boosting decision tree-logistic regression (gbdt-lr)
chizhou city of anhui province
url http://stbctb.alljournal.com.cn/stbctben/article/abstract/20230118
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AT jinzhang landslidesusceptibilityevaluationbasedoncouplingofgbdtlrmodelandinformationmodel
AT pengpeng landslidesusceptibilityevaluationbasedoncouplingofgbdtlrmodelandinformationmodel
AT yanwang landslidesusceptibilityevaluationbasedoncouplingofgbdtlrmodelandinformationmodel
AT zhiyang landslidesusceptibilityevaluationbasedoncouplingofgbdtlrmodelandinformationmodel
AT senan landslidesusceptibilityevaluationbasedoncouplingofgbdtlrmodelandinformationmodel