评估埃塞俄比亚裂谷阿比亚湖流域的滑坡易发性:基于地理信息系统的频率比分析

Q3 Social Sciences
Yonas Oyda, Muralitharan Jothimani, Hailu Regasa
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引用次数: 0

摘要

埃塞俄比亚地貌多样,降雨量大,地质特征各异,存在山体滑坡的风险。具体研究区域位于埃塞俄比亚大裂谷阿巴亚湖集水区,面积达 40 平方公里。此次调查旨在利用遥感信息、地理信息系统技术和频率比分析绘制滑坡易发区地图。它评估了影响滑坡易发性的多种因素。在这一过程中,利用地理信息系统(GIS)技术和各种数据源,包括原始数据、卫星图像和二手资料,对专题图层进行了细致的绘制。结合谷歌地球图像分析和实地调查,绘制了交通不便地区的滑坡易发性地图。结果确定存在 138 个滑坡点。其中 30%(41 个点)用于模型测试,另外 30%用于模型训练,共计 97 个点。根据滑坡易发性指数(LSI)的频率比分析,将滑坡易发性分为五类:极低、低、中、高和极高。研究区东北部的滑坡易发性相对较低,从低到中度不等,而中部和南部地区的易发性则明显较高。根据测试清单中的滑坡数据,使用曲线下面积法(AUC)对模型的准确性进行了评估,结果令人鼓舞:成功率曲线的准确率为 84.8%,预测率曲线的准确率为 78.8%。在频率比模型的基础上,得出了易感性图,以准确表示易感性等级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing landslide susceptibility in Lake Abya catchment, Rift Valley, Ethiopia: A GIS-based frequency ratio analysis
Ethiopia's varied landscape, significant rainfall, and diverse geological characteristics pose risks of landslides. The specific research area spans 40 km2 within the Lake Abaya catchment area in the Rift Valley of Ethiopia. This investigation aimed to map landslide susceptibility using remote sensing information, GIS technology, and frequency ratio analysis. It evaluated multiple factors influencing landslide susceptibility. The process involved meticulous mapping of thematic layers, utilizing GIS techniques and diverse data sources, including primary data, satellite imagery, and secondary sources. A combination of Google Earth image analysis and field surveys was used to map landslide susceptibility in inaccessible areas. It was determined that 138 landslide sites existed. Of these, 30% (41 points) were assigned to the test of the model and another 30% to the training of the model, for a total of 97 points. The landslide susceptibility was classified into five categories based on frequency ratio analysis of the landslide susceptibility index (LSI): very low, low, moderate, high, and very high. The northeastern sector of the study area demonstrated a comparatively diminished susceptibility to landslides, ranging from low to moderate, whereas the central and southern regions showcased markedly elevated vulnerability. An evaluation of the model's accuracy using the area under the curve (AUC) method based on test inventory landslide data produced encouraging results: 84.8% accuracy on the success rate curve and 78.8% accuracy on the prediction rate curve. Based on the frequency ratio model, a susceptibility map is derived to represent susceptibility levels accurately.
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来源期刊
Journal of Degraded and Mining Lands Management
Journal of Degraded and Mining Lands Management Environmental Science-Nature and Landscape Conservation
CiteScore
1.50
自引率
0.00%
发文量
81
审稿时长
4 weeks
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