Landslide susceptibility mapping using GIS-based statistical models and Remote Sensing in the Kathmandu valley, Nepal

Sneha Bhatta, B. Adhikari
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Abstract

Landslides are geological hazards that typically occur on both temporal and spatial scales in different settings, causing significant loss of life and property. The occurrences of landslides in Nepal are increasing in recent years claiming loss of lives and properties. The coupling effect of Asian monsoon and seismo-tectonic activities along with anthropogenic activities are the major cause for the landslide generation in the Nepal Himalaya. A systematic landslide research is essential to prevent or control the issues generated by landslides, including widespread damage of buildings and structures, property, cultivated areas, and loss of life. This study aims to perform a GIS-based landslide susceptibility mapping of the Kathmandu valley using bivariate statistical approaches (Frequency Ratio and Information Value) and heuristic approach. The landslide inventory data base was prepared from 2010 to 2021 using Google Earth Pro where 105 landslides were identified. Predisposing factors were categorized into different classes (Aspect, Slope, Geology, Curvature, Landuse, Distance to road, Distance to drainage, Rainfall, NDVI, and Relative relief) for the suitability mapping. The landslide susceptibility classes for all three methods were divided into three classes as low, medium, and high. Furthermore, the Frequency ratio (FR) and Information Value (IV) methods were validated through Area Under Curve (AUC) approach. The results indicate that the FR and IV approaches have predictive rates of 70.16% and 81.43%, respectively. This study is useful for geohazard assessment for infrastructure planning and land use zoning.
利用基于地理信息系统的统计模型和遥感技术绘制尼泊尔加德满都谷地的滑坡易发性地图
山体滑坡是一种地质灾害,通常发生在不同环境的时间和空间范围内,造成重大的生命和财产损失。近年来,尼泊尔发生的山体滑坡越来越多,造成了生命和财产损失。亚洲季风和地震构造活动的耦合效应以及人为活动是造成尼泊尔喜马拉雅山滑坡的主要原因。要预防或控制山体滑坡引发的问题,包括对建筑物和结构、财产、耕地的广泛破坏以及生命损失,系统的山体滑坡研究至关重要。本研究旨在利用双变量统计方法(频率比和信息值)和启发式方法,对加德满都谷地进行基于地理信息系统的滑坡易发性绘图。利用谷歌地球专业版编制了 2010 年至 2021 年的滑坡清单数据库,确定了 105 个滑坡点。为绘制适宜性地图,将易发因素分为不同等级(朝向、坡度、地质、曲率、土地利用、与道路的距离、与排水系统的距离、降雨量、NDVI 和相对地形)。所有三种方法的滑坡易发性等级均分为低、中、高三个等级。此外,还通过曲线下面积(AUC)方法验证了频率比(FR)和信息值(IV)方法。结果表明,FR 和 IV 方法的预测率分别为 70.16% 和 81.43%。这项研究有助于为基础设施规划和土地利用分区进行地质灾害评估。
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