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Landslide susceptibility assessment in Western Henan Province based on a comparison of conventional and ensemble machine learning 被引量:1
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作者 Wen-geng Cao Yu Fu +4 位作者 Qiu-yao Dong Hai-gang Wang Yu Ren Ze-yan Li Yue-ying Du 《China Geology》 CAS CSCD 2023年第3期409-419,共11页
Landslide is a serious natural disaster next only to earthquake and flood,which will cause a great threat to people’s lives and property safety.The traditional research of landslide disaster based on experience-drive... Landslide is a serious natural disaster next only to earthquake and flood,which will cause a great threat to people’s lives and property safety.The traditional research of landslide disaster based on experience-driven or statistical model and its assessment results are subjective,difficult to quantify,and no pertinence.As a new research method for landslide susceptibility assessment,machine learning can greatly improve the landslide susceptibility model’s accuracy by constructing statistical models.Taking Western Henan for example,the study selected 16 landslide influencing factors such as topography,geological environment,hydrological conditions,and human activities,and 11 landslide factors with the most significant influence on the landslide were selected by the recursive feature elimination(RFE)method.Five machine learning methods[Support Vector Machines(SVM),Logistic Regression(LR),Random Forest(RF),Extreme Gradient Boosting(XGBoost),and Linear Discriminant Analysis(LDA)]were used to construct the spatial distribution model of landslide susceptibility.The models were evaluated by the receiver operating characteristic curve and statistical index.After analysis and comparison,the XGBoost model(AUC 0.8759)performed the best and was suitable for dealing with regression problems.The model had a high adaptability to landslide data.According to the landslide susceptibility map of the five models,the overall distribution can be observed.The extremely high and high susceptibility areas are distributed in the Funiu Mountain range in the southwest,the Xiaoshan Mountain range in the west,and the Yellow River Basin in the north.These areas have large terrain fluctuations,complicated geological structural environments and frequent human engineering activities.The extremely high and highly prone areas were 12043.3 km^(2)and 3087.45 km^(2),accounting for 47.61%and 12.20%of the total area of the study area,respectively.Our study reflects the distribution of landslide susceptibility in western Henan Province,which provides a scientific basis for regional disaster warning,prediction,and resource protection.The study has important practical significance for subsequent landslide disaster management. 展开更多
关键词 Landslide susceptibility model risk assessment Machine learning Support vector machines Logistic regression Random forest Extreme gradient boosting Linear discriminant analysis Ensemble modeling Factor analysis Geological disaster survey engineering Middle mountain area Yellow River basin
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四川盆地油气井钻前工程风险及防治对策 被引量:2
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作者 李敏 韩军 +1 位作者 刘晖 张国东 《天然气技术与经济》 2012年第1期66-67,80,共2页
四川盆地特殊的地质构造,增加了其区域内油气井钻前工程的复杂程度,给油气井钻前工程带来了潜在风险。为降低油气井钻前工程风险,从地质灾害、井下防碰、钻前技术标准、人为因素等几方面分析了钻前工程中的风险因素,并针对这些因素,从... 四川盆地特殊的地质构造,增加了其区域内油气井钻前工程的复杂程度,给油气井钻前工程带来了潜在风险。为降低油气井钻前工程风险,从地质灾害、井下防碰、钻前技术标准、人为因素等几方面分析了钻前工程中的风险因素,并针对这些因素,从风险评估、防碰扫描、教育培训、完善行业标准规范等方面提出了具体的防治对策。认为只有尊重科学,以事实为客观依据,全方位、多角度地考虑油气井钻前工程设计、施工方案才能做到万无一失。 展开更多
关键词 四川盆地 灾害 评估 钻前工程 风险分析
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