改进滑坡预测:基于监督和无监督学习的气象数据预处理

IF 1.1 4区 计算机科学 Q3 COMPUTER SCIENCE, CYBERNETICS Cybernetics and Systems Pub Date : 2023-11-07 DOI:10.1080/01969722.2023.2240647
Byron Guerrero-Rodriguez, Jaime Salvador-Meneses, Jose Garcia-Rodriguez, Christian Mejia-Escobar
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引用次数: 0

摘要

摘要多年来,山体滑坡的危害已被证明,造成了大量的人员伤亡和巨大的物质损失。先前的几项研究表明,造成滑坡的主要因素之一是强降雨。目前的工作建议使用气象站产生的数据来预测滑坡。我们将降水信息作为最重要的影响因素,其数据在时间窗口(3、5、7、10、15、20和30天)积累,寻找气象条件的持久性。为了优化由地质、地貌和气候数据组成的数据集,对气象变量进行了特征选择。我们分别使用基于过滤器的特征排序和带有聚类的自组织映射(SOM)作为监督和无监督机器学习技术。通过实验不同的分类模型,成功验证了这一贡献,提高了预测的测试准确率,Multilayer Perceptron的准确率为99.29%,Random Forest的准确率为96.80%,Support Vector Machine的准确率为88.79%。为了验证这一建议,选择了一个对这一现象敏感的地理区域,由几个气象站监测。实际应用是风险管理决策的宝贵工具,可以帮助挽救生命和减少经济损失。关键字:聚类滑坡气象数据降水随机森林somsvm时间窗口感谢厄瓜多尔中央大学和FIGEMPA在与阿利坎特大学的机构间协议框架下,使这项研究工作成为可能。声明作者声明本文的发表不存在任何利益冲突。数据可用性声明用于支持本研究结果的数据集和代码已存放在GitHub存储库(https://github.com/ByronGuerreroR/Improving-Landslides-Prediction)中。
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Improving Landslides Prediction: Meteorological Data Preprocessing Based on Supervised and Unsupervised Learning
AbstractThe hazard of landslides has been demonstrated over time with numerous events causing damage to human lives and high material costs. Several previous studies have shown that one of the predominant factors in landslides is intensive rainfall. The present work proposes the use of data generated by weather stations to predict landslides. We give special treatment to precipitation information as the most influential factor and whose data are accumulated in time windows (3, 5, 7, 10, 15, 20, and 30 days) looking for the persistence of meteorological conditions. To optimize the dataset composed of geological, geomorphological, and climatological data, a feature selection process is applied to the meteorological variables. We use filter-based feature ranking and Self-Organizing Map (SOM) with Clustering as supervised and unsupervised machine learning techniques, respectively. This contribution was successfully verified by experimenting with different classification models, improving the test accuracy of the prediction, and obtaining 99.29% for Multilayer Perceptron, 96.80% for Random Forest, and 88.79% for Support Vector Machine. To validate the proposal, a geographical area sensitive to this phenomenon was selected, which is monitored by several meteorological stations. Practical use is a valuable tool for risk management decision making, can help save lives and reduce economic losses.Keywords: Clusteringlandslidesmeteorological dataMLPprecipitationrandom forestSOMSVMtime windows AcknowledgementsWe would like to express our gratitude to the Central University of Ecuador and FIGEMPA, which in the framework of the interinstitutional agreement with the University of Alicante, made this research work possible.Disclosure StatementThe authors declare that there is no conflict of interest regarding the publication of this paper.Data Availability StatementThe dataset and code used to support the findings of this study have been deposited in the GitHub repository (https://github.com/ByronGuerreroR/Improving-Landslides-Prediction).
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来源期刊
Cybernetics and Systems
Cybernetics and Systems 工程技术-计算机:控制论
CiteScore
4.30
自引率
5.90%
发文量
99
审稿时长
>12 weeks
期刊介绍: Cybernetics and Systems aims to share the latest developments in cybernetics and systems to a global audience of academics working or interested in these areas. We bring together scientists from diverse disciplines and update them in important cybernetic and systems methods, while drawing attention to novel useful applications of these methods to problems from all areas of research, in the humanities, in the sciences and the technical disciplines. Showing a direct or likely benefit of the result(s) of the paper to humankind is welcome but not a prerequisite. We welcome original research that: -Improves methods of cybernetics, systems theory and systems research- Improves methods in complexity research- Shows novel useful applications of cybernetics and/or systems methods to problems in one or more areas in the humanities- Shows novel useful applications of cybernetics and/or systems methods to problems in one or more scientific disciplines- Shows novel useful applications of cybernetics and/or systems methods to technical problems- Shows novel applications in the arts
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