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首页> 外文期刊>Bulletin of engineering geology and the environment >Exploring spatial non-stationarity in the relationships between landslide susceptibility and conditioning factors: a local modeling approach using geographically weighted regression
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Exploring spatial non-stationarity in the relationships between landslide susceptibility and conditioning factors: a local modeling approach using geographically weighted regression

机译:探索滑坡敏感性与调理因素之间关系的空间非公平性:地理加权回归的局部建模方法

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摘要

Landslide susceptibility is the likelihood of landslide occurrence, in a specific place and time. The identification of the potential relationships between landslide susceptibility and conditioning factors is very important towards landslide hazard mitigation. In this paper, we implement a local statistical analysis model geographically weighted regression, in two catchment areas located in northern Peloponnese, Greece. For this purpose, we examined the following eight conditioning factors: elevation, slope, aspect, lithology, land cover, proximity to the drainage network, proximity to the road network, and proximity to faults. Moreover, the relationship between these factors and landsliding in the study area is examined. The local statistical analysis model was also evaluated by finding its differences with the performance of a standard global statistical model logistic regression. The results indicated that the global statistical model can be enhanced by the application of a local model. The outputs of the proposed approach favored a better understanding of the factors influencing landslide occurrence and may be beneficial to local authorities and decision-makers dealing with the mitigation of landslide hazard.
机译:滑坡易感性是山体滑坡发生的可能性,在特定的地方和时间。识别滑坡易感性和调节因素之间的潜在关系对滑坡危害缓解非常重要。在本文中,我们在希腊北部北部的两个集水区实施了一个地方统计分析模型地理上加权回归。为此,我们研究了以下八个条件因素:海拔,坡度,坡向,岩性,土地覆盖,靠近排水管网,靠近公路网,并接近故障。此外,检查了研究区域中这些因素与滑坡之间的关系。还通过发现其差异来评估本地统计分析模型,以标准全球统计模型逻辑回归的性能。结果表明,通过应用本地模型可以增强全局统计模型。该方法的输出青睐的影响滑坡发生的因素更好地理解,并且可以向地方当局和决策者处理滑坡灾害的缓解有利。

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