用于绘制滑坡易发性地图的独特条件模型

F. De Smedt, P. Kayastha
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引用次数: 0

摘要

已经提出了几种评估山体滑坡易发性的方法和途径。考虑到控制因素,可通过对历史滑坡应用统计模型来确定发生滑坡的可能性。预测山体滑坡概率的常用方法是证据权重法和逻辑回归法。我们将讨论这些方法的假设和解释、它们之间的关系以及它们在分类因素情况下的优缺点。尤其值得关注的是控制因素的条件独立性及其对模型偏差的影响。为了避免因素缺乏条件独立性和模型偏差,我们提出了一个始终无偏的独特条件模型。为了说明理论的发展,我们利用之前研究中观测到的滑坡和地质环境因素进行了实际应用。独特条件模型似乎优于其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Unique Conditions Model for Landslide Susceptibility Mapping
Several methods and approaches have been proposed to assess landslide susceptibility. The likelihood of landslides occurring can be determined by applying statistical models to historical landslides, taking into account controlling factors. Popular methods for predicting the probability of landslides are weights-of-evidence and logistic regression. We discuss the assumptions and interpretations of these methods, the relationships between them, and their strengths and weaknesses in case of categorical factors. Of particular interest is the conditional independence of the controlling factors and its effect on model bias. To avoid lack of conditional independence of factors and model bias, we present a unique conditions model that is always unbiased. To illustrate the theoretical developments, a practical application is given using observed landslides and geo-environmental factors from a previous study. The unique conditions model appears superior to the other models.
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