首页> 外文期刊>Journal of the Indian Society of Remote Sensing >Remote Sensing and GIS Based Landslide Susceptibility Assessment using Binary Logistic Regression Model: A Case Study in the Ganeshganga Watershed, Himalayas
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Remote Sensing and GIS Based Landslide Susceptibility Assessment using Binary Logistic Regression Model: A Case Study in the Ganeshganga Watershed, Himalayas

机译:基于二元Logistic回归模型的遥感和GIS滑坡敏感性评价:以喜马拉雅山Ganeshganga流域为例

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摘要

A comprehensive Landslide Susceptibility Zonation (LSZ) map is sought for adopting any landslide preventive and mitigation measures. In the present study, LSZ map of landslide prone Ganeshganga watershed (known for Patalganga Landslide) has been generated using a binary logistic regression (BLR) model. Relevant thematic layers pertaining to the causative factors for landslide occurrences, such as slope, aspect, relative relief, lithology, tectonic structures, lineaments, land use and land cover, distance to drainage, drainage density and anthropogenic factors like distance to road, have been generated using remote sensing images, field survey, ancillary data and GIS techniques. The coefficients of the causative factors retained by the BLR model along with the constant have been used to construct the landslide susceptibility map of the study area, which has further been categorized into four landslide susceptibility zones from high to very low. The resultant landslide susceptibility map was validated using receiver operator characteristic (ROC) curve analysis showing an accuracy of 95.2% for an independent set of test samples. The result also showed a strong agreement between distribution of existing landslides and predicted landslide susceptibility zones.
机译:寻求全面的滑坡敏感性分区(LSZ)地图,以采取任何预防和缓解滑坡的措施。在本研究中,已经使用二元逻辑回归(BLR)模型生成了易于滑坡的Ganeshganga流域(以Patalganga滑坡闻名)的LSZ地图。涉及滑坡发生原因的相关专题层,例如坡度,坡向,相对起伏,岩性,构造构造,地貌,土地利用和土地覆盖,排水距离,排水密度和人为因素(如距公路)使用遥感图像,现场调查,辅助数据和GIS技术生成。 BLR模型保留的病因系数与常数一起已用于构建研究区域的滑坡敏感性图,并进一步从高到低分为四个滑坡敏感性区。使用接收器操作员特征(ROC)曲线分析对所得的滑坡敏感性图进行了验证,结果显示,一组独立的测试样品的准确性为95.2%。结果还表明,现有滑坡的分布与预测的滑坡敏感性区之间有很强的一致性。

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