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首页> 外文期刊>Advances in space research >Hybrid ensemble machine learning approaches for landslide susceptibility mapping using different sampling ratios at East Sikkim Himalayan, India
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Hybrid ensemble machine learning approaches for landslide susceptibility mapping using different sampling ratios at East Sikkim Himalayan, India

机译:利用不同抽样比在印度东锡克基姆喜马拉雅山脉山体滑坡易感性测绘的混合合奏机学习方法

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摘要

Landslide is a big problem in the mountainous region all over the world. Sikkim Himalayan region is also suffering from landslide problem. This study's main objective was to generate landslide susceptibility map (LSM) considering the hybrid ensemble of machine learning approaches using different sample ratios. Random Forest (RF) as the base classifier an ensemble with bagging, Rotation Forest (RTF), and Random Subspace (RS) Meta classifiers were used for spatial landslide modeling. First, collected 86 landslides locations through field investigation and from Sikkim district disaster office were mapped as a landslide inventory. Collected landslide locations were categorized into training and testing datasets randomly using four sample ratios (50:50, 60:40, 70:30 and 80:20). Based on the four sampling ratios and fifteen conditioning factors, a total of sixteen LSMs were prepared using RF, Bagging-RF (B-RF), RTF-RF and RS-RF in GIS platform. For assessing the modeling accuracy and comparison among these, the area under the receiver operating characteristics (AUROC) and other statistical methods such as root-mean-square-error (RMSE), mean-absolute-error (MAE) and R-index methods were used. The overall proficiency of RS-RF (AUC = 0.871, 0.847 of 50%:50%, AUC = 0.925, 0.931 of 60%:40%, AUC = 0.933, 0.939 of 70%:30%; AUC = 0.927, 0.933 of 80%:20%) was found to be substantially greater than the results of RF, B-RF, and RTF-RF. The RS-RF model and 70:30 sample ratio had the highest goodness-of-fit and accuracy as per the RMSE, MAE, and R-index methods. Furthermore, the model based on RS-RF is a promising and acceptable way of mapping regional landslides.
机译:Landslide是世界各地山区的一个大问题。锡金喜马拉雅地区也遭受了山体滑坡问题。本研究的主要目标是在考虑使用不同样本比率的机器学习方法的混合集合来产生滑坡敏感性图(LSM)。随机森林(RF)作为基本分类器的集成,旋转森林(RTF)和随机子空间(RS)元分类器用于空间滑坡建模。首先,通过现场调查和锡金地区灾难办公室收集86个山体滑坡地点被映射为滑坡库存。收集的Landslide位置被分类为使用四个样本比例随机培训和测试数据集(50:50,60:40,70:30和80:20)。基于四种采样比和十五个调理因子,使用GIS平台中的RF,BAGGANG-RF(B-RF),RTF-RF和RS-RF,制备总共16个LSM。用于评估这些的建模精度和比较,接收器操作特性(AUROC)下的区域和其他统计方法,如根均方误差(RMSE),平均值 - 误差(MAE)和R级索引方法被使用了。 RS-RF的总体熟练程度(AUC = 0.871,0.847,50%:50%,AUC = 0.925,0.931,0.931,of 60%:40%,AUC = 0.933,0.939,70%:30%; AUC = 0.927,0.933发现80%:20%)基本上大于RF,B-RF和RTF-RF的结果。 RS-RF型号和70:30样本比率与RMSE,MAE和R-INDEC方法相比具有最高的健康和准确性。此外,基于RS-RF的模型是绘制区域山体滑坡的有希望和可接受的方式。

著录项

  • 来源
    《Advances in space research》 |2021年第7期|2819-2840|共22页
  • 作者单位

    Department of Geography University of Gour Banga Malda-732103 West Bengal India;

    Department of Geography University of Gour Banga Malda-732103 West Bengal India;

    The Centre for Advanced Modelling and Geospatial Information Systems (CAMGIS) Faculty of Engineering and Information Technology University of Technology Sydney NSW 2007 Australia Center of Excellence for Climate Change Research King Abdulaziz University P. 0. Box 80234 Jeddah 21589 Saudi Arabia Earth Observation Centre Institute of Climate Change Universiti Kebangsaan Malaysia Bangi 43600 Malaysia;

    Department of Geography Nistarini College Purulia-723101 West Bengal India;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Landslide susceptibility; GIS; Meta classifier; Ensemble machine learning; East Sikkim Himalaya;

    机译:滑坡易感性;GIS;元分类器;合奏机学习;East Sikkim Himalaya.;

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