支持向量机在滑坡易感性制图中的应用综述

Q4 Engineering
Khatif Tawaf Mohamed Yusof Mohamed, A Rashid Ahmad Safuan, Mohd Apandi Nazirah, Abdul Khanan Mohd Faisal Bin, Abdul Rahman Muhammad Zulkarnain Bin
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引用次数: 0

摘要

山体滑坡是自然灾害的一部分,造成人员伤亡、财产损失和地区经济崩溃。利用各种滑坡评价方法来确定滑坡易感性值。机器学习(ML)已被用于许多研究领域,包括岩土学科,以产生有效的模型来解决岩土挑战。许多研究采用ML模型生成滑坡敏感性图(LSM),并采用了不同的类型和算法。这篇综述文章讨论了用于开发LSM的ML方法与具体方法:支持向量机(SVM)。确定并讨论了机器学习在LSM生产中的基本原理。该研究还提供了开发LSM的模型验证类型和性能的信息。在大多数研究中发现SVM及其混合模型在生成LSM方面具有良好的性能,并且SVM优于大多数其他ML方法。本研究为研究人员、从业人员和地方当局提供了一个现成的、最先进的参考,为基于支持向量机原理制作高效可靠的LSM做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A review of the application of support vector machines in landslide susceptibility mapping
Landslide is a part of natural natural disasters that causes fatalities to humans, destroys property and overwhelms the regional economy. Various landslide evaluation attempts have been utilized to determine the landslide susceptibility values. Machine learning (ML) has been used in numerous research areas including geotechnical disciplines to produce an effective model to resolve the geotechnical challenge. The ML model has been adopted to produce a landslide susceptibility map (LSM) in many studies with various types and algorithms. This review paper discusses the ML approach used to develop LSM with specific approaches: Support Vector Machine (SVM). The basic principle of ML in producing the LSM is determined and discussed. The study also provides information on the types of validation and performance of the model in developing LSM. SVM and its hybrid model were found to yield good performance in producing LSM in most of the studies with SVM outperforming most of the other ML approaches. This research contributes to the landslide mapping field by providing a readily available, State-of-the-Art reference for researchers, practitioners and local authorities in producing efficient and reliable LSM based on the SVM principle.
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来源期刊
Disaster Advances
Disaster Advances 地学-地球科学综合
CiteScore
0.70
自引率
0.00%
发文量
57
审稿时长
3.5 months
期刊介绍: Information not localized
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