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A novel triggerless approach for mass wasting susceptibility modeling applied to the Boston Mountains of Arkansas, USA

机译:一种新型浪费易感性建模的令人营养的探讨方法,适用于美国阿肯色州的波士顿山脉

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This research deploys a novel mass wasting susceptibility modeling approach for cases where temporal information is unavailable and circumstances are prejudiced to merit applying traditional susceptibility modeling strategies. Conventional models typically employ approaches deemed problematic for this study, e.g., biased weighted input; a "more is better" approach pertaining to voluminous inputs; neglecting geologic structural influence; and establishing temporal linkages between cause (trigger) and effect (failure) with a trigger being defined as a catalyst for failure, such as timed events like earthquakes or precipitation as well as physical changes like vegetation removal or slope disturbance. Road bias may also influence modeling dramatically when event data are derived from observations of road-related failures, which become unreliable at predicting susceptibility in regions with no roads. However, a triggerless approach can extrapolate naturally occurring susceptibility via priori knowledge of local topography and structural geology factors. Two models are then created for comparison: One model has integrated empirical Bayesian kriging and fuzzy logic considering basically local topography and structural geology, while the second model has employed a standard implementation of a weighted overlay using all available (8) input data layers. Statistical comparisons show that the first model has identified similar to 83%, compared to only similar to 28% for the latter model, of the 47 documented mass wasting events in the selected study site. These results demonstrate that the introduced triggerless approach is efficiently capable of modeling mass wasting susceptibility in areas lacking temporal datasets, which in turn can help in mitigating future geohazards.
机译:本研究部署了一种新的大规模浪费敏感性建模方法,以便在时间信息不可用,并且偏见的情况是应用传统易感性建模策略的绩效。常规模型通常采用方法认为该研究的问题,例如,偏置加权输入;与大量投入有关的“越来越好”的方法;忽视地质结构影响;并建立与触发器(触发)和效果(故障)之间的时间连接被定义为失败的催化剂,例如地震或降水等定时事件以及植被去除或斜坡扰动等物理变化。当事件数据源自道路相关故障观察时,道路偏置也可能会影响建模,这在没有道路的地区的易感性时变得不可靠。然而,令人触发的方法可以通过先前的当地地形和结构地质因子来推断天然存在的易感性。然后创建两个模型进行比较:考虑到基本局部地形和结构地质,一个模型具有综合的经验贝叶斯克里格和模糊逻辑,而第二种模型使用所有可用(8)输入数据层采用了加权叠加的标准实现。统计比较表明,第一个模型已识别出类似于83%,而在所选研究现场中的47个记录的大规模浪费事件中的后一种模型仅相似于后续型号的28%。这些结果表明,引进的令人触发的方法是有效的,能够在缺乏时间数据集的区域中建模批量浪费敏感性,这反过来可以帮助减轻未来的地质曲线曲线。

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