基于网络分析法和模糊逻辑的滑坡易感性评价,以乌尔米亚湖盆地为例

IF 0.5 Q3 GEOGRAPHY Geographia Cassoviensis Pub Date : 2021-01-01 DOI:10.33542/gc2021-1-06
Davoud Omarzadeh, S. A. Eslaminezhad, M. Eftekhari, M. Akbar
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引用次数: 0

摘要

滑坡的发生作为一种环境威胁,一直是空间规划中的一个问题。本研究的目的是在乌尔米亚湖盆地划分滑坡敏感区,并探讨该地区的特征与滑坡量之间的相关性。为实现这一目标,采用模糊分析与网络分析相结合的方法对乌尔米亚湖流域滑坡敏感区进行了调查。利用ANP、模糊隶属度命令、线性函数、子准则的模糊权重,计算子准则的模糊隶属度(0 ~ 1)。加权栅格层使用伽玛叠加函数组合。通过该操作得到的分类图显示,16.6%的区域具有极高的滑坡易感性,研究区最高的区域为27.32%,具有较高的滑坡易感性。本文的研究结果与滑坡现场观测资料进行了比较。结果表明,在收集到的182个点中,有148个点(相当于81.31%)对应于6级(非常高滑坡易感性)和7级(极可能)。该研究结果可用于危机管理,确定该地区在地貌特征方面的适宜性,识别环境和自然灾害。
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Landslide susceptibility assessment using an integrated approach of the analytic network process and fuzzy logic, a case of Urmia Lake Basin
The occurrence of landslides has always been a problem in spatial planning as an environmental threat. The aim of the present study was to zoning landslide sensitive areas in the Urmia Lake Basin and to investigate the correlation between the characteristics of the region and the amount of landslide. To achieve these purposes, the situation of landslide sensitive areas in the Lake Urmia Basin was investigated using a combination of Fuzzy and Analytical Network Process (ANP) methods. The criteria' weight is obtained using the ANP, fuzzy Membership command, linear function, the fuzzy weight of the sub-criteria, and their fuzzy membership degree (between 0 and 1) are calculated. The weighted raster layers were combined using the Gamma overlay function. As a result of this operation, a classified map has been obtained which shows that 16.6% of the area has a very high landslide susceptibility, and the highest area of the study area, i.e., 27.32%, has a relatively high landslide susceptibility. The results of the present study were compared with the data recorded using field observations at landslide sites. The results showed that out of 182 points collected, 148 points (equivalent to 81.31%) correspond to class 6 (very high landslide susceptibility) and class 7 (extremely probable). The results of this research can be used in crisis management, identifying the suitability of the region in terms of geomorphological features, identifying environmental and natural hazards.
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来源期刊
CiteScore
0.80
自引率
0.00%
发文量
4
期刊介绍: Geographia Cassoviensis is a biannual peer-reviewed journal published by the Pavol Jozef Šafárik University in Košice since 2007. It is available both in print and open-access electronic version. The journal publishes original research articles from Geography and other closely-related research fields. Since 2016 the journal is indexed in SCOPUS and ERIH PLUS - European Reference Index for Humanities and Social Sciences, and since 2017 also in Emerging Sources Citation Index by Clarivate Analytics.
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