对自然易受洪水影响地区进行远程探测和管理的方法建议

IF 0.7 4区 地球科学 Q4 GEOSCIENCES, MULTIDISCIPLINARY Earth Sciences Research Journal Pub Date : 2023-05-23 DOI:10.15446/esrj.v27n1.103542
Lucas Emanuel Servidoni, Joaquim Ernesto Bernardes Ayer, G. Lense, F. Rubira, V. Spalević, B. Dudić, R. L. Mincato
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引用次数: 0

摘要

洪水是巴西的主要自然灾害,造成生命损失和社会经济损失。这项工作提出了一个模型,用于远程检测巴西米纳斯吉拉斯州上萨普凯河自然易发洪水地区,因为这些地区的救济和排水网络具有形态计量特征。所使用的形态测量参数是排水密度、河流密度、起伏比、粗糙度指数、维持系数、形状因子和水面长度。风险区域的压实系数为0.75,形状系数为0.56,两者都被认为是洪水的高风险区域。所获得的结果允许识别一个显著的预测方程,该方程建议判别函数的截止值为3.82;数值低于该临界值的地区自然更容易受到洪水的影响。这些地区得到了市政当局紧急情况地图的证实。将所提出的模型获得的地图与民防地图进行了比较,根据Kappa系数,其准确性为0.83,表明两张地图之间具有很强的相似性。
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Methodological proposal to remote detection and management of areas that are naturally vulnerable to floods
Floods are the main natural disasters in Brazil, causing loss of life and socioeconomic damage. This work proposes a model for the remote detection of areas that are naturally flood-prone due to the morphometric characteristics of their relief and drainage networks in the Alto Sapucaí River in Minas Gerais, Brazil. The morphometric parameters used were the drainage density, river density, relief ratio, roughness index, maintenance coefficient, form factor and stream surface length. The risk areas had a compactness coefficient of 0.75 and a form factor of 0.56, and both were considered a high risk for floods. The obtained results allowed the identification of a significant predictive equation that suggested a cutoff value of 3.82 for the discriminant function; areas with values under this cutoff were considered naturally more vulnerable to floods occurrences. These areas were corroborated with the emergency maps of the municipalities. The map obtained by the proposed model was compared with the Civil Defense map, and its accuracy, according to the Kappa coefficient, was 0.83, indicating strong similarity between the two maps.
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来源期刊
Earth Sciences Research Journal
Earth Sciences Research Journal 地学-地球科学综合
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: ESRJ publishes the results from technical and scientific research on various disciplines of Earth Sciences and its interactions with several engineering applications. Works will only be considered if not previously published anywhere else. Manuscripts must contain information derived from scientific research projects or technical developments. The ideas expressed by publishing in ESRJ are the sole responsibility of the authors. We gladly consider manuscripts in the following subject areas: -Geophysics: Seismology, Seismic Prospecting, Gravimetric, Magnetic and Electrical methods. -Geology: Volcanology, Tectonics, Neotectonics, Geomorphology, Geochemistry, Geothermal Energy, ---Glaciology, Ore Geology, Environmental Geology, Geological Hazards. -Geodesy: Geodynamics, GPS measurements applied to geological and geophysical problems. -Basic Sciences and Computer Science applied to Geology and Geophysics. -Meteorology and Atmospheric Sciences. -Oceanography. -Planetary Sciences. -Engineering: Earthquake Engineering and Seismology Engineering, Geological Engineering, Geotechnics.
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