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Technical Note: Assessing predictive capacity and conditional independence of landslide predisposing factors for shallow landslide susceptibility models

机译:技术说明:评估浅层滑坡易感模型滑坡预测因素的预测能力和条件独立性

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The aim of this study is to identify the landslide predisposing factors' combination using a bivariate statistical model that best predicts landslide susceptibility. The best model is one that has simultaneously good performance in terms of suitability and predictive power and has been developed using variables that are conditionally independent. The study area is the Santa Marta de Penagui?o council (70 km2) located in the Northern Portugal. In order to identify the best combination of landslide predisposing factors, all possible combinations using up to seven predisposing factors were performed, which resulted in 120 predictions that were assessed with a landside inventory containing 767 shallow translational slides. The best landslide susceptibility model was selected according to the model degree of fitness and on the basis of a conditional independence criterion. The best model was developed with only three landslide predisposing factors (slope angle, inverse wetness index, and land use) and was compared with a model developed using all seven landslide predisposing factors. Results showed that it is possible to produce a reliable landslide susceptibility model using fewer landslide predisposing factors, which contributes towards higher conditional independence.
机译:本研究的目的是使用最佳预测滑坡易感性的双变量统计模型来识别滑坡易感因素的组合。最好的模型是在适用性和预测性方面同时性能的一种,并且已经使用条件独立的变量开发。研究区是圣马塔德佩加?o议会(70公里)位于葡萄牙北部。为了识别Landslide易感因素的最佳组合,进行了多达七种预测因子的所有可能组合,这导致120个预测,该预测被含有767个浅层平移幻灯片的陆地库存评估。根据健身模型和根据条件独立标准选择最佳滑坡敏感性模型。最佳模型是仅具有三个滑坡易感因素(斜坡角,逆湿度指数和土地使用),并与使用所有七个滑坡概述因素开发的模型进行了比较。结果表明,使用较少的滑坡易感因素可以产生可靠的滑坡敏感性模型,这有助于朝着更高的条件独立性。

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