提高基于降雨诱发的浅层滑坡模型的预测能力:一种概率方法

S. Raía, M. Alvioli, M. Rossi, R. Baum, J. Godt, F. Guzzetti
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引用次数: 136

摘要

降雨诱发浅层滑坡的时空分布预测模型是基于确定性规律的。这些模型在空间上扩展了岩土工程中采用的静力稳定模型,并采用无限斜率几何来平衡作用于滑动体的阻力和驱动力。入渗模型用于确定降雨如何改变孔隙水条件,调节局部稳定/不稳定条件。现有模型操作的一个问题在于难以获得描述斜坡材料特性的几个变量的准确值。当这些模型应用于大面积地区时,问题就特别严重,因为这些地区通常没有关于斜坡的土工和水文条件的充分资料。为了帮助解决这个问题,我们提出了一种概率蒙特卡罗方法来模拟降雨引起的浅层滑坡。为此,我们修改了瞬态降雨入渗和基于网格的区域边坡稳定性分析(TRIGRS)规范。新规范(TRIGRS-P)采用概率方法逐单元计算降雨入渗引起的瞬态孔隙压力变化及相关的安全系数变化。渗透是用描述各向同性、均质材料中一维垂直流动的偏微分方程的解析解来模拟的。饱和和非饱和土壤条件都可以考虑。TRIGRS- p通过允许从给定的概率分布中随机抽样TRIGRS模型输入参数的值,来处理边坡材料的机械和水文特性固有的自然变异性。[. .]
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving predictive power of physically based rainfall-induced shallow landslide models: a probabilistic approach
Distributed models to forecast the spatial and temporal occurrence of rainfall-induced shallow landslides are based on deterministic laws. These models extend spatially the static stability models adopted in geotechnical engineering, and adopt an infinite-slope geometry to balance the resisting and the driving forces acting on the sliding mass. An infiltration model is used to determine how rainfall changes pore-water conditions, modulating the local stability/instability conditions. A problem with the operation of the existing models lays in the difficulty in obtaining accurate values for the several variables that describe the material properties of the slopes. The problem is particularly severe when the models are applied over large areas, for which sufficient information on the geotechnical and hydrological conditions of the slopes is not generally available. To help solve the problem, we propose a probabilistic Monte Carlo approach to the distributed modeling of rainfall-induced shallow landslides. For the purpose, we have modified the Transient Rainfall Infiltration and Grid-Based Regional Slope-Stability Analysis (TRIGRS) code. The new code (TRIGRS-P) adopts a probabilistic approach to compute, on a cell-by-cell basis, transient pore-pressure changes and related changes in the factor of safety due to rainfall infiltration. Infiltration is modeled using analytical solutions of partial differential equations describing one-dimensional vertical flow in isotropic, homogeneous materials. Both saturated and unsaturated soil conditions can be considered. TRIGRS-P copes with the natural variability inherent to the mechanical and hydrological properties of the slope materials by allowing values of the TRIGRS model input parameters to be sampled randomly from a given probability distribution. [..]
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