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Remote sensing and GIS-based landslide susceptibility mapping using frequency ratio, logistic regression, and fuzzy logic methods at the central Zab basin, Iran

机译:使用频率比,对数回归和模糊逻辑方法在伊朗中部萨布盆地进行遥感和基于GIS的滑坡敏感性地图

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摘要

A remote sensing and geographic information system-based study has been carried out to map areas susceptible to landslides using three statistical models, frequency ratio (FR), logistic regression (LR), and fuzzy logic at the central Zab basin in the mountainsides in the southwest West Azerbaijan province in Iran. Ten factors such as slope, aspect, elevation, lithology, normalized difference vegetation index (NDVI), land cover, precipitation, distance to fault, distance to drainage, and distance to road were considered. Landsat ETM+ images were used for NDVI and land cover maps. A landslide inventory map of the study area was identified by a SPOT 5 satellite after which fuzzy algebraic operators were applied to the fuzzy membership values of landslide susceptibility mapping. In addition, FR and LR models were applied to determine the landslide susceptibility. The three models are validated using the receiver operating characteristic and the area under which curve values were calculated. The validation results showed that the LR model (accuracy is 96 %) has better prediction than fuzzy logic (accuracy is 95 %) and FR (accuracy is 94 %) models. Also, among the fuzzy operators, the gamma operator (lambda = 0.975) showed the best accuracy (94.64 %) while the fuzzy OR operator when applied showed the worst accuracy (85.11 %).
机译:基于遥感和地理信息系统的研究已经进行了研究,使用三个统计模型,频率比(FR),逻辑回归(LR)和模糊逻辑,在山腰的Zab盆地中绘制了滑坡易发地区。伊朗西南阿塞拜疆西南省。考虑了十个因素,例如坡度,坡向,高程,岩性,归一化植被指数(NDVI),土地覆盖率,降水,到断层的距离,到排水的距离以及到道路的距离。 Landsat ETM +图像用于NDVI和土地覆盖图。通过SPOT 5卫星识别研究区域的滑坡清单图,然后将模糊代数算子应用于滑坡敏感性图的模糊隶属度值。此外,还使用了FR和LR模型来确定滑坡敏感性。使用接收器的工作特性和计算曲线值的区域对这三个模型进行了验证。验证结果表明,与模糊逻辑(准确度为95%)和FR(准确度为94%)模型相比,LR模型(准确度为96%)具有更好的预测。同样,在模糊算子中,γ算子(λ= 0.975)显示出最佳精度(94.64%),而应用模糊或算子显示出最差精度(85.11%)。

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