Machine learning based landslide susceptibility mapping models and GB-SAR based landslide deformation monitoring systems: Growth and evolution

被引:19
|
作者
Ganesh, Babitha [1 ]
Vincent, Shweta [1 ]
Pathan, Sameena [2 ]
Benitez, Silvia Raquel Garcia [3 ]
机构
[1] Manipal Acad Higher Educ, Manipal Inst Technol, Dept Mechatron, Manipal 576104, Karnataka, India
[2] Manipal Acad Higher Educ, Manipal Inst Technol, Dept Informat & Commun Technol, Manipal 576104, Karnataka, India
[3] Univ Nacl Autonoma Mexico, Inst Ingn, Elect & Comp Coordinat, Mexico City 576104, Mexico
关键词
Deep learning; Ground -based synthetic aperture radar(GB; SAR); Landslide conditioning factor(LCF); Landslide deformation monitoring; Landslide inventory mapping(LIM); Landslide susceptibility mapping(LSM); Machine learning; GROUND-BASED SAR; SUPPORT VECTOR MACHINES; ARTIFICIAL NEURAL-NETWORKS; LOGISTIC-REGRESSION; SPATIAL PREDICTION; FREQUENCY RATIO; DECISION TREE; AREA; INTERFEROMETRY; RADAR;
D O I
10.1016/j.rsase.2022.100905
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Ongoing landslides have wreaked havoc in various regions across the globe. This article presents a study of two forms of landslide monitoring viz; creation of Landslide Susceptibility Maps(LSMs) using machine learning and usage of Ground Based Synthetic Aperture Radar(GB-SAR). Landslide Susceptibility Mapping models generate an LSM for the given study area, which shows if the locations in the study area are prone to landslides or not. However, LSM is a post disaster management strategy. GB-SAR systems provide real-time data on the occurrence of landslides. Thus, a review of Ground based landslide deformation monitoring techniques is also presented in this article. Landslide deformation monitoring systems deal with identifying the changes occurring in a place that would trigger further landslides at the place where landslides have already occurred. Different techniques such as heuristic, analytic, and data driven statistical methods have been used in the existing literature for LSM creation. This study focuses mainly on the machine learning techniques used to create LSMs from the year 2000-2021. For each article in the literature, the metrics viz; region of study, country to which study area belongs, the spatial extent of the study area in square kilometers, principal triggering factors of landslide, sources used to collect data, type of landslide, number of landslide triggering factors used, number of landslide points in the landslide inventory, the algorithm used, evaluation parameter used to assess the performance of algorithms and values of these evaluation parameters have been noted. As a function of the type of landslides examined, the study region, and the fundamental triggering variables, we exhibit graphical depictions and discussions of similarities and contrasts discovered. The data analysis helps the researchers to identify future studies to be carried out in unexplored areas across the globe in the field of landslide monitoring. Furthermore, the study on GB-SAR technologies, which facilitates the formulation of better real-time techniques, than the state-of-the-art, has been discussed.
引用
收藏
页数:16
相关论文
共 50 条
  • [31] Correction: Evaluation of different machine learning models and novel deep learning-based algorithm for landslide susceptibility mapping
    Tingyu Zhang
    Yanan Li
    Tao Wang
    Huanyuan Wang
    Tianqing Chen
    Zenghui Sun
    Dan Luo
    Chao Li
    Ling Han
    Geoscience Letters, 10
  • [32] Landslide susceptibility mapping based on the reliability of landslide and non-landslide sample
    Hong, Haoyuan
    Wang, Desheng
    Zhu, A-Xing
    Wang, Yi
    EXPERT SYSTEMS WITH APPLICATIONS, 2024, 243
  • [33] Deep Learning and Machine Learning Models for Landslide Susceptibility Mapping with Remote Sensing Data
    Hussain, Muhammad Afaq
    Chen, Zhanlong
    Zheng, Ying
    Zhou, Yulong
    Daud, Hamza
    REMOTE SENSING, 2023, 15 (19)
  • [34] Landslide Susceptibility Mapping using Machine Learning Algorithm
    Hussain, Muhammad Afaq
    Chen, Zhanlong
    Wang, Run
    Shah, Safeer Ullah
    Shoaib, Muhammad
    Ali, Nafees
    Xu, Daozhu
    Ma, Chao
    CIVIL ENGINEERING JOURNAL-TEHRAN, 2022, 8 (02): : 209 - 224
  • [35] Exploring Complementary Models Consisting of Machine Learning Algorithms for Landslide Susceptibility Mapping
    Hu, Han
    Wang, Changming
    Liang, Zhu
    Gao, Ruiyuan
    Li, Bailong
    ISPRS INTERNATIONAL JOURNAL OF GEO-INFORMATION, 2021, 10 (10)
  • [36] MACHINE LEARNING-BASED APPROACH FOR LANDSLIDE SUSCEPTIBILITY MAPPING USING MULTIMODAL DATA
    Ma, Xianping
    Pun, Man-On
    Liu, Ming
    Wang, Yang
    IGARSS 2023 - 2023 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, 2023, : 5174 - 5177
  • [37] A comparative study of regional landslide susceptibility mapping with multiple machine learning models
    Wang, Yunhao
    Wang, Luqi
    Liu, Songlin
    Liu, Pengfei
    Zhu, Zhengwei
    Zhang, Wengang
    GEOLOGICAL JOURNAL, 2024, 59 (09) : 2383 - 2400
  • [38] Landslide Susceptibility Mapping: Machine and Ensemble Learning Based on Remote Sensing Big Data
    Kalantar, Bahareh
    Ueda, Naonori
    Saeidi, Vahideh
    Ahmadi, Kourosh
    Halin, Alfian Abdul
    Shabani, Farzin
    REMOTE SENSING, 2020, 12 (11)
  • [39] Landslide Susceptibility Mapping Based on Interpretable Machine Learning from the Perspective of Geomorphological Differentiation
    Sun, Deliang
    Chen, Danlu
    Zhang, Jialan
    Mi, Changlin
    Gu, Qingyu
    Wen, Haijia
    LAND, 2023, 12 (05)
  • [40] A novel QLattice-based whitening machine learning model of landslide susceptibility mapping
    Sun, Deliang
    Ding, Yuekai
    Wen, Haijia
    Zhang, Fengtai
    EARTH SURFACE PROCESSES AND LANDFORMS, 2024, 49 (01) : 304 - 317