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Landslide probability mapping by considering fuzzy numerical risk factor (FNRF) and landscape change for road corridor of Uttarakhand, India

机译:考虑到印度北方路走廊道路走廊的模糊数量危险因素(FNRF)和景观变化,山体滑坡概率映射

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Landslide poses severe threats to the natural landscape of the Lesser Himalayas and the lives and economy of the communities residing in that mountainous topography. This study aims to investigate whether the landscape change has any impact on landslide occurrences in the Kalsi-Chakrata road corridor by detailed investigation through correlation of the landslide susceptibility zones and the landscape change, and finally to demarcate the hotspot villages where influence of landscape on landslide occurrence may be more in future. The rational of this work is to delineate the areas with higher landslide susceptibility using the ensemble model of GIS-based multi-criteria decision making through fuzzy landslide numerical risk factor model along the Kalsi-Chakrata road corridor of Uttarakhand where no previous detailed investigation was carried out applying any contemporary statistical techniques. The approach includes the correlation of the landslide conditioning factors in the study area with the changes in land use and land cover (LULC) over the past decade to understand whether frequent landslides have any link with the physical and hydro-meteorological or, infrastructure, and socioeconomic activities. It was performed through LULC change detection and landslide susceptibility mapping (LSM), and spatial overlay analysis to establish statistical correlation between the said parameters. The LULC change detection was performed using the object-oriented classification of satellite images acquired in 2010 and 2019. The inventory of the past landslides was formed by visual interpretation of high-resolution satellite images supported by an intensive field survey of each landslide area. To assess the landslide susceptibility zones for 2010 and 2019 scenarios, the geo-environmental or conditioning factors such as slope, rainfall, lithology, normalized differential vegetation index (NDVI), proximity to road and land use and land cover (LULC) were considered, and the fuzzy LNRF technique was applied. The results indicated that the LULC in the study area was primarily transformed from forest cover and sparse vegetation to open areas and arable land, which is increased by 6.7% in a decade. The increase in built-up areas and agricultural land by 2.3% indicates increasing human interference that is continuously transforming the natural landscape. The landslide susceptibility map of 2019 shows that about 25% of the total area falls under high and very high susceptibility classes. The result shows that 80% of the high landslide susceptible class is contained by LULC classes of open areas, scrubland, and sparse vegetation, which point out the profound impact of landscape change that aggravate landslide occurrence in that area. The result acclaims that specific LULC classes, such as open areas, barren-rocky lands, are more prone to landslides in this Lesser Himalayan road corridor, and the LULC-LSM correlation can be instrumental for landslide probability assessment concerning the changing landscape. The fuzzy LNRF model applied has 89.6% prediction accuracy at 95% confidence level which is highly satisfactory.The present study of the connection of LULC change with the landslide probability and identification of the most fragile landscape at the village level has been instrumental in delineation of landslide susceptible areas, and such studies may help the decision-makers adopt appropriate mitigation measures in those villages where the landscape changes have mainly resulted in increased landslide occurrences and formulate strategic plans to promote ecologically sustainable development of the mountainous communities in India's Lesser Himalayas.
机译:滑坡对喜马拉雅山较小的自然景观构成严重威胁,以及居住在该山地地形中的社区的生活和经济。本研究旨在通过对滑坡敏感区和景观变化的相关性进行详细调查,调查景观变动是否对Kalsi-Chakrata公路走廊的滑坡发生了任何影响,最后划分景观对滑坡影响的热点村将来可能更多。这项工作的理性是利用基于GIS的多标准决策的集合模型来描绘具有较高滑坡易感性的领域,通过沿着北方Kalsi-Chakrata公路走廊的模糊滑坡数值风险因子模型进行了模糊滑坡数值风险因子模型,在那里没有进行详细的调查申请任何当代统计技术。该方法包括在过去十年中与土地利用和陆地覆盖(LULC)的变化相关的LANDSLIDE调理因子与土地利用和陆地覆盖(LULC)的相关性,了解频繁滑坡是否与物理和水流 - 气象或基础设施和基础设施和社会经济活动。它通过LULC改变检测和滑坡敏感性映射(LSM)和空间覆盖分析来执行,以建立所述参数之间的统计相关性。利用2010年和2019年获取的卫星图像的面向对象分类进行了LULC变化检测。通过对每个滑坡区域的密集卫星图像支持的高分辨率卫星图像的视觉解释形成了过去的山体滑坡的清单。为了评估2010年和2019年的Landslide易感性区域,倾斜,降雨,岩性,归一化差分植被指数(NDVI),靠近道路和土地使用以及陆地覆盖(LULC)等地质环境或调理因素,并应用了模糊的LNRF技术。结果表明,研究区的LULC主要从森林覆盖和稀疏植被转化为开放区域和耕地,这十年增长了6.7%。建筑区域和农业土地的增加2.3%表示增加人类干扰,这些干扰是不断改变自然景观。 2019年的滑坡易感性图表明,大约25%的总面积落下了高且高易感性等级。结果表明,80%的高滑坡易感类由Lulc课程的开放区域,灌木丛和稀疏植被含有,这指出了景观变化的深刻影响,以加剧该地区的滑坡发生。结果称赞特定的Lulc课程,如开放区域,贫瘠地区,在这场较小的喜马拉雅道路走廊中更容易出于滑坡,Lulc-LSM相关可以是关于变化景观的滑坡概率评估的乐器。应用的模糊LNRF模型具有89.6%的预测精度,其置信水平高达95%,这是一种高度令人满意的。目前的研究Lulc改变与村级最脆弱的景观的山体滑坡概率和鉴定已经有助于划分滑坡易感地区,此类研究可能有助于决策者在景观变化的村庄中采取适当的缓解措施,这些村庄主要导致山体滑坡发生增加并制定战略计划,以促进印度较小的喜马拉雅山区山区社区的生态可持续发展。

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