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Dealing with deep uncertainties in landslide modelling for disaster risk reduction under climate change

机译:处理滑坡模型中的深层不确定性,以减少气候变化下的灾害风险

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摘要

Landslides have large negative economic and societal impacts, including loss of life and damage to infrastructure. Slope stability assessment is a vital tool for landslide risk management, but high levels of uncertainty often challenge its usefulness. Uncertainties are associated with the numerical model used to assess slope stability and its parameters, with the data characterising the geometric, geotechnic and hydrologic properties of the slope, and with hazard triggers (e.g., rainfall). Uncertainties associated with many of these factors are also likely to be exacerbated further by future climatic and socio-economic changes, such as increased urbanisation and resultant land use change. In this study, we illustrate how numerical models can be used to explore the uncertain factors that influence potential future landslide hazard using a bottom-up strategy. Specifically, we link the Combined Hydrology And Stability Model (CHASM) with sensitivity analysis and Classification And Regression Trees (CART) to identify critical thresholds in slope properties and climatic (rainfall) drivers that lead to slope failure. We apply our approach to a slope in the Caribbean, an area that is naturally susceptible to landslides due to a combination of high rainfall rates, steep slopes, and highly weathered residual soils. For this particular slope, we find that uncertainties regarding some slope properties (namely thickness and effective cohesion of top soil) are as important as the uncertainties related to future rainfall conditions. Furthermore, we show that 89 % of the expected behaviour of the studied slope can be characterised based on only two variables – the ratio of top soil thickness to cohesion and the ratio of rainfall intensity to duration.
机译:滑坡对经济和社会产生巨大的负面影响,包括生命损失和基础设施损坏。边坡稳定性评估是滑坡风险管理的重要工具,但是高度不确定性通常会挑战其有效性。不确定性与用于评估边坡稳定性及其参数的数值模型,表征斜坡的几何,岩土和水文特性的数据以及危险触发因素(例如降雨)有关。未来的气候和社会经济变化(如城市化程度的提高和土地用途的变化)将进一步加剧与许多因素相关的不确定性。在这项研究中,我们说明了如何使用自下而上的策略使用数值模型来探索影响未来潜在滑坡灾害的不确定因素。具体来说,我们将组合的水文稳定模型(CHASM)与敏感性分析以及分类和回归树(CART)链接在一起,以识别坡度属性和导致坡度破坏的气候(降雨)驱动因素的临界阈值。我们将方法应用于加勒比地区的一个斜坡,该地区由于高降雨率,陡峭的斜坡和高度风化的残留土壤而自然容易发生滑坡。对于这种特殊的坡度,我们发现某些坡度特性(即表层土壤的厚度和有效粘结力)的不确定性与与未来降雨条件相关的不确定性一样重要。此外,我们表明,仅基于两个变量就可以表征研究坡度的89%的预期行为-顶土厚度与内聚力之比和降雨强度与持续时间之比。

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