机器学习和统计方法在预测滑坡灾害方面的成功:埃拉泽(马登)案例

IF 1.827 Q2 Earth and Planetary Sciences
Ahmet Toprak, Ufuk Yükseler, Emin Yildizhan
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引用次数: 0

摘要

滑坡危害影响人类的生命和财产安全。滑坡灾害地图对于滑坡的预防和缓解至关重要。本研究分析了机器学习方法和统计方法在预测土耳其境内埃拉泽省马登地区中心及周边地区滑坡灾害方面的成功案例,并对它们的性能进行了比较。在训练数据集中,随机森林方法正确预测了 1.425 个滑坡点中的 1.398 个,但有 27 个点预测错误。同样的方法预测了训练数据集中 2075 个无滑坡点中的 1942 个,但错误地预测了 133 个点为滑坡暴露点。研究结果表明,随机森林和 M5P 规则树方法比频率比方法得出的结果更成功。在研究区域,滑坡危险主要集中在靠近东安纳托利亚断层的地区和陡坡地区。岩性、坡度和地震已被确定为该地区滑坡的重要触发因素。预计高精度的机器学习方法将为滑坡灾害的预测做出重大贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Success of machine learning and statistical methods in predicting landslide hazard: the case of Elazig (Maden)

Landslide hazards affect the security of human life and property. Landslide hazard maps are essential for landslide prevention and mitigation. In this study, the success of machine learning and statistical methods in predicting landslide hazards in and around the district center of Maden, Elazığ province, within the borders of Turkey, was analyzed, and their performances were compared. The Random Forest method correctly predicted 1.398 of the 1.425 landslide points in the training dataset, but was incorrect on 27 points. The same method predicted 1942 of the 2075 landslide-free points in the training dataset, but incorrectly predicted 133 points as landslide-exposed. As a result of the study, it is evident that the Random Forest and M5P Rule Tree methods yield more successful results than the Frequency Ratio method. In the study area, the landslide hazard is concentrated in areas close to the East Anatolian Fault and in areas with steep slopes. Lithology, slope, and seismicity have been identified as important triggering factors for landslides in the region. It is expected that machine learning methods, which operate with high levels of accuracy, will make a significant contribution to the prediction of landslide hazards.

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来源期刊
Arabian Journal of Geosciences
Arabian Journal of Geosciences GEOSCIENCES, MULTIDISCIPLINARY-
自引率
0.00%
发文量
1587
审稿时长
6.7 months
期刊介绍: The Arabian Journal of Geosciences is the official journal of the Saudi Society for Geosciences and publishes peer-reviewed original and review articles on the entire range of Earth Science themes, focused on, but not limited to, those that have regional significance to the Middle East and the Euro-Mediterranean Zone. Key topics therefore include; geology, hydrogeology, earth system science, petroleum sciences, geophysics, seismology and crustal structures, tectonics, sedimentology, palaeontology, metamorphic and igneous petrology, natural hazards, environmental sciences and sustainable development, geoarchaeology, geomorphology, paleo-environment studies, oceanography, atmospheric sciences, GIS and remote sensing, geodesy, mineralogy, volcanology, geochemistry and metallogenesis.
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