Maximum Entropy-Based Model of High-Threat Landslide Disaster Distribution in Zhaoqing, China

Landslide disaster that threatened over 100 people in Zhaoqing, China, were taken as samples. Sixteen environmental factors were selected, including altitude, slope degree, slope aspect, lithology, soil texture, normalized differential vegetation index (NDVI), average annual rainfall, distance to de...

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Main Authors: Shaoxiong Yuan, Guangqing Huang, Haixian Xiong, Qinghua Gong, Jun Wang, Jun Chen
Format: Article
Language:English
Published: Atlantis Press 2017-09-01
Series:Journal of Risk Analysis and Crisis Response (JRACR)
Subjects:
Online Access:https://www.atlantis-press.com/article/25886384.pdf
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spelling doaj-7c978eec2535470b896a4196e8f1bb662020-11-25T01:58:48ZengAtlantis PressJournal of Risk Analysis and Crisis Response (JRACR)2210-85052017-09-017310.2991/jrarc.2017.7.3.2Maximum Entropy-Based Model of High-Threat Landslide Disaster Distribution in Zhaoqing, ChinaShaoxiong YuanGuangqing HuangHaixian XiongQinghua GongJun WangJun ChenLandslide disaster that threatened over 100 people in Zhaoqing, China, were taken as samples. Sixteen environmental factors were selected, including altitude, slope degree, slope aspect, lithology, soil texture, normalized differential vegetation index (NDVI), average annual rainfall, distance to developed land, and distance to roads. The Maximum Entropy model was employed for simulation analysis of landslides. The results suggest that: NDVI, lithology, distance to rivers, distance to roads, rainfall variance, and altitude are the leading environmental factors that affect landslide disasters. Of the factors taken into consideration, distance to developed land contributes as much as 43.6% of the AUC (area under the curve) value of the landslide distribution model. In fact, this factor became the absolute leading variable over even the NDVI, indicating that high-threat landslide disasters in the study area are highly correlated with human activities. The closer the landslide location was to developed land, rivers, and roads, the more likely a landslide was to occur. Using the MaxEnt model, the highthreat landslide in Zhaoqing can be favourably simulated. The AUC of the model’s prediction precision reached 0.769 without distance to developed land; whereas, the AUC of the model’s precision reached 0.845 with distance to developed land taken into account.https://www.atlantis-press.com/article/25886384.pdfAsymptotic normalityconditional hazard quantile functionfunctional datakernel smoothingnonparametric estimator.
collection DOAJ
language English
format Article
sources DOAJ
author Shaoxiong Yuan
Guangqing Huang
Haixian Xiong
Qinghua Gong
Jun Wang
Jun Chen
spellingShingle Shaoxiong Yuan
Guangqing Huang
Haixian Xiong
Qinghua Gong
Jun Wang
Jun Chen
Maximum Entropy-Based Model of High-Threat Landslide Disaster Distribution in Zhaoqing, China
Journal of Risk Analysis and Crisis Response (JRACR)
Asymptotic normality
conditional hazard quantile function
functional data
kernel smoothing
nonparametric estimator.
author_facet Shaoxiong Yuan
Guangqing Huang
Haixian Xiong
Qinghua Gong
Jun Wang
Jun Chen
author_sort Shaoxiong Yuan
title Maximum Entropy-Based Model of High-Threat Landslide Disaster Distribution in Zhaoqing, China
title_short Maximum Entropy-Based Model of High-Threat Landslide Disaster Distribution in Zhaoqing, China
title_full Maximum Entropy-Based Model of High-Threat Landslide Disaster Distribution in Zhaoqing, China
title_fullStr Maximum Entropy-Based Model of High-Threat Landslide Disaster Distribution in Zhaoqing, China
title_full_unstemmed Maximum Entropy-Based Model of High-Threat Landslide Disaster Distribution in Zhaoqing, China
title_sort maximum entropy-based model of high-threat landslide disaster distribution in zhaoqing, china
publisher Atlantis Press
series Journal of Risk Analysis and Crisis Response (JRACR)
issn 2210-8505
publishDate 2017-09-01
description Landslide disaster that threatened over 100 people in Zhaoqing, China, were taken as samples. Sixteen environmental factors were selected, including altitude, slope degree, slope aspect, lithology, soil texture, normalized differential vegetation index (NDVI), average annual rainfall, distance to developed land, and distance to roads. The Maximum Entropy model was employed for simulation analysis of landslides. The results suggest that: NDVI, lithology, distance to rivers, distance to roads, rainfall variance, and altitude are the leading environmental factors that affect landslide disasters. Of the factors taken into consideration, distance to developed land contributes as much as 43.6% of the AUC (area under the curve) value of the landslide distribution model. In fact, this factor became the absolute leading variable over even the NDVI, indicating that high-threat landslide disasters in the study area are highly correlated with human activities. The closer the landslide location was to developed land, rivers, and roads, the more likely a landslide was to occur. Using the MaxEnt model, the highthreat landslide in Zhaoqing can be favourably simulated. The AUC of the model’s prediction precision reached 0.769 without distance to developed land; whereas, the AUC of the model’s precision reached 0.845 with distance to developed land taken into account.
topic Asymptotic normality
conditional hazard quantile function
functional data
kernel smoothing
nonparametric estimator.
url https://www.atlantis-press.com/article/25886384.pdf
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