COLAFOS: a hybrid machine learning model to forecast potential coseismic landslides severity

IF 2.7 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Information and Telecommunication Pub Date : 2022-05-11 DOI:10.1080/24751839.2022.2062918
A. Psathas, Andonis Papaleonidas, L. Iliadis, G. Papathanassiou, S. Valkaniotis
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Abstract

ABSTRACT Timely and rational prediction of coseismic landslides is crucial for the design and development of key infrastructure capable to protect human lives in seismically active regions. This research introduces the novel Hybrid Coseismic Landslide Forecasting model (COLAFOS) that takes into consideration three parameters namely: The Average Slope of the Active Areas, the Slope Aspect and the types of Geological forms. The developed model was tested on two datasets from the island of Lefkada Greece, for years 2003 and 2015. COLAFOS is a hybrid model, employing the Fuzzy c-Means clustering, the Ensemble Adaptive Boosting (ENS_AdaBoost) and the Ensemble Subspace k-Nearest Neighbour (ENSUB k-NN) algorithms. The introduced model managed to correctly classify the coseismic landslides according to their severity, with a success rate of 70.07% and 72.88% for 2003 and 2015, respectively. The algorithm has shown very good performance for the classes of major severity, reaching an accuracy up to 92%. Accuracy, Sensitivity, Specificity, Precision and F-1 Score, were used to evaluate the performance of the model. Given the fact that this is a multi-class classification problem, ‘One Versus All’ Strategy was used in the evaluation process. Although the datasets were relatively unbalanced, the evaluation indices sealed the efficiency of the model.
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COLAFOS:一个混合机器学习模型,用于预测潜在的同震滑坡严重程度
摘要:及时、合理地预测同震滑坡对于设计和开发能够保护地震活跃地区人类生命的关键基础设施至关重要。本研究介绍了一种新的混合宇宙地震滑坡预测模型(COLAFOS),该模型考虑了三个参数,即:活动区的平均坡度、坡向和地质形态类型。所开发的模型在希腊莱夫卡达岛的两个数据集上进行了2003年和2015年的测试。COLAFOS是一个混合模型,采用模糊c-均值聚类、集合自适应Boosting(ENS_AdaBoost)和集合子空间k近邻(ENSUB k-NN)算法。引入的模型成功地根据同震滑坡的严重程度对其进行了正确分类,2003年和2015年的成功率分别为70.07%和72.88%。该算法在严重程度较高的类别中表现出非常好的性能,准确率高达92%。准确性、敏感性、特异性、精密度和F-1评分用于评估模型的性能。鉴于这是一个多类分类问题,在评估过程中使用了“一对一”策略。尽管数据集相对不平衡,但评估指标决定了模型的效率。
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来源期刊
CiteScore
7.50
自引率
0.00%
发文量
18
审稿时长
27 weeks
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