A. El-fengour, C. Bateira, Hanifa El Motaki, M. Laatiris
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Landslide susceptibility is the probability that landslides will be generated in the predicted zone depending on local terrain characteristics. Several methods are proposed for landslide susceptibility assessment worldwide. IVM has been applied to prepare the landslide susceptibility map. This paper envisages the definition of the settings of the study area as well as the geophysical characteristics by means of the acquisition and preparation of predisposing factors, such as the geology, land use and climate and the application of the IVM on LSA using a statistically based method for each subset of the landslide inventory. This study is aimed at a prediction vision for sustainability as an alternative and this is not limited to degradation processes. It also concerns the efforts made to adapt to the impacts and even those of mitigating change. The promotion of sustainable development in risk areas requires an effort to analyze and evaluate local practices and approaches. 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引用次数: 0
摘要
本研究的主要目的是对摩洛哥北部Amzaz流域滑坡发生空间概率的滑坡易感性评价(LSA)结果进行检验和验证,旨在为土地利用政策的决策者提供有用的参考。为了实现本研究的主要目标,我们定义了两个子目标:呈现研究区域地理成分的地形和制图,以及使用基于统计的方法——信息价值方法(Information Value method, IVM)对LSA进行分析,作为模型所需的标准。最后,通过预测和成功率对结果进行验证。滑坡易感性是指根据当地地形特征,在预测区内发生滑坡的概率。世界范围内提出了几种滑坡易感性评价方法。应用IVM编制滑坡易感性图。本文通过获取和准备地质、土地利用和气候等诱发因素,设想了研究区域的设置和地球物理特征的定义,并对滑坡清单的每个子集使用基于统计的方法将IVM应用于LSA。这项研究的目的是预测可持续性作为一种替代方案,这并不局限于退化过程。它还涉及为适应影响甚至减缓变化所作的努力。促进危险地区的可持续发展需要努力分析和评价当地的做法和办法。这正是我们试图通过这项工作做到的,这项工作从方法论基础开始,验证一个预测影响摩洛哥中裂谷地区山体滑坡的模型。
Validation of landslide susceptibility using a GIS-based statistical model and Remote Sensing Data in the Amzaz watershed in northern Morocco
The main objective of this research is to examine and validate the landslide susceptibility assessment (LSA) results of the spatial probability of landslide occurrence in the Amzaz watershed area in Northern Morocco, setting out to create a helpful agent for the decision-makers of land-use policies. In order to reach the main goal of this study, two sub-objectives were defined: the presenting of the physiography and the cartography of the geographical components of the study area, and the analysis of the LSA using a statistical-based method, Information Value Method (IVM), as a criteria required by the Model. Lastly, the validation of the results through the prediction and success rates was carried out. Landslide susceptibility is the probability that landslides will be generated in the predicted zone depending on local terrain characteristics. Several methods are proposed for landslide susceptibility assessment worldwide. IVM has been applied to prepare the landslide susceptibility map. This paper envisages the definition of the settings of the study area as well as the geophysical characteristics by means of the acquisition and preparation of predisposing factors, such as the geology, land use and climate and the application of the IVM on LSA using a statistically based method for each subset of the landslide inventory. This study is aimed at a prediction vision for sustainability as an alternative and this is not limited to degradation processes. It also concerns the efforts made to adapt to the impacts and even those of mitigating change. The promotion of sustainable development in risk areas requires an effort to analyze and evaluate local practices and approaches. This is what we are trying to do through this work, which starts from a methodological basis to validate a model for predicting landslides affecting the Moroccan Central Rif area.