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首页> 外文期刊>Environmental Geology >A multistage hybrid model for landslide risk mapping: tested in and around Mussoorie in Uttarakhand state of India
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A multistage hybrid model for landslide risk mapping: tested in and around Mussoorie in Uttarakhand state of India

机译:一种多级混合模型,用于滑坡风险映射:在印度乌塔塔克手中的Mussoorie及其周围地区测试

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摘要

The study aims to develop a hybrid model approach for the assessment of the landslide (LS) risk qualitatively. It involves multiple consecutive stages of statistical prediction, machine learning, and mapping in the GIS environment. At the first stage, a landslide susceptibility map has been developed using the analytic hierarchy process (AHP) algorithm, coupled with the binary logistic regression (BLR) technique. The AHP model incorporates 11 geo-hydrological and environmental variables as predictors sourced from remote-sensing datasets to generate the LS susceptibility as output. Twenty-three field-based validation locations validate the test result. Pearson's correlation coefficient (r) between the observed (COMPUTED) and predicted (PREDICTED) values of LS susceptibility is 0.928 at 0.01 level of significance. At the next stage, the LS risk is evaluated considering the 'risk trio,' i.e., the combination of the hazard, exposure, and vulnerability. This stage involves the transformation of a range of qualitative datasets to the virtual workspace of machine learning. The landslide risk output has been predicted with an initial fuzzy model, incorporating a set of 32 rules for membership functions (MF). This initial model uses randomly selected 20% datasets to tailor the fuzzy rules through the adaptive neuro-fuzzy interface (ANFIS). The training to ANFIS results in framing 120 fuzzy rules for the best possible prediction of the outcome. The final LS risk map from the ANFIS output shows that more than 70% area is under high-to-very high LS risk. The model is tested in a 5 ' x5 ' grid around the famous hill station Mussoorie in the state of Uttarakhand, India. The model exhibits a satisfactory level of accuracy for the present-study area, which has made us confident to recommend it. The multistage model is worthy of being applied for landslide risk mapping for the similar kinds of study areas, and also for other areas of landslide with necessary customization as deemed necessary.
机译:该研究旨在开发一种用于评估Landslide(LS)风险的混合模型方法。它涉及在GIS环境中统计预测,机器学习和映射的多个连续阶段。在第一阶段,已经使用分析层次处理(AHP)算法开发了滑坡敏感性图,与二进制逻辑回归(BLR)技术耦合。 AHP模型包含11个地理水文和环境变量,作为来自远程传感数据集的预测器,以产生LS易感性作为输出。二十三个基于字段的验证位置验证了测试结果。 Pearson在LS易感性的观察(计算)和预测(预测)值之间的相关系数(R)为0.01的显着性的0.928。在下一阶段,考虑到“风险三重奏”,即危险,曝光和脆弱性的组合来评估LS风险。此阶段涉及将一系列定性数据集转换为机器学习的虚拟工作空间。旧的模糊模型预测了Landslide风险输出,其中包含一组32个隶属函数规则(MF)。该初始模型使用随机选择的20%数据集来定制通过自适应神经模糊界面(ANFI)来定制模糊规则。对ANFI的培训导致框架120模糊规则,以获得结果的最佳预测。来自ANFIS输出的最终LS风险映射显示,超过70%的面积低至非常高的LS风险。该模型在印度Uttarakhand州的着名山站Mussoorie周围测试了5'X5'网格。该模型对本研究区域呈现令人满意的准确性,使我们充满信心地推荐它。多级模型值得申请适用于类似种类的研究领域的滑坡风险映射,以及其他山滑坡其他地区,必要的必要定制。

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