Engineering problems are often characterized by significant uncertainty in their material parameters. A typical example coming from geotechnical engineering is the slope stability problem where the soil's cohesion is modeled as a random field. An efficient manner to account for this uncertainty is the novel sampling method called p-refined Multilevel Quasi-Monte Carlo (p-MLQMC). The p-MLQMC method uses a hierarchy of p-refined Finite Element meshes combined with a deterministic Quasi-Monte Carlo sampling rule. This combination yields a significant computational cost reduction with respect to classic Multilevel Monte Carlo. However, in previous work, not enough consideration was given how to incorporate the uncertainty, modeled as a random field, in the Finite Element model with the p-MLQMC method. In the present work we investigate how this can be adequately achieved by means of the integration point method. We therefore investigate how the evaluation points of the random field are to be selected in order to obtain a variance reduction over the levels. We consider three different approaches. These approaches will be benchmarked on a slope stability problem in terms of computational runtime. We find that for a given tolerance the Local Nested Approach yields a speedup up to a factor five with respect to the Non-Nested approach.
翻译:地质技术工程的一个典型例子是,土壤的凝固性以随机场为模型,由此形成一个坡度稳定性问题,土壤的凝固性以随机场为模型。这种不确定性的一个有效解释方法是称为P-精炼多层次的多级准卡西-蒙特卡洛(p-MLQMC)的新式抽样方法。在目前的工作中,P-MLQMC方法使用一种精炼精炼的精炼精细元素网格和确定性准卡西-蒙特卡洛取样规则的等级分级法。这种结合使典型的多层次蒙特卡洛的计算成本大幅降低。但是,在以往的工作中,没有充分考虑到如何将不确定性作为一个随机字段纳入P-MLQMC(p-MLQMC)方法的Finite Emincle模型。在目前的工作中,我们调查如何通过集点方法充分实现这一目标。我们因此调查如何选择随机字段的评价点,以便减少不同层次的差异。我们考虑三种不同的办法。在计算速度方面,这些办法将以斜度问题作为基准,即以斜度稳定度为基准,在计算速度方面,我们发现一个不采用当地-N-摄氏度方法。