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Adaptive reduced basis strategy based on goal oriented error assessment for stochastic problems

机译:基于面向目标误差评估的随机问题的自适应约简策略

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摘要

In the framework of stochastic non-intrusive finite element modeling, a common practice is using Monte Carlo simulation. The main drawback of this approach is the computational cost, because it requires computing a large number of deterministic finite element solutions. The different Monte Carlo samplings correspond to realizations of the random variables characterizing the stochastic behavior of the model. Thus, this requires solving a set deterministic problems with the same structure, that is with variations concerning the material parameters and the loading data. Consequently, the different problems to be solved are in practice similar to each other. The reduced basis strategy is therefore a sensible option to reduce computational cost, provided that the quality of the numerical solution is guaranteed. The paper introduces a goal-oriented strategy allowing to successively enrich the reduced basis along the Monte Carlo process. The method is based on assessing the error of the reduced basis solution with a residual estimate for the prescribed quantity of interest. The efficiency of the proposed approach, which is particularly important if the number of independent random variables is large, is illustrated in 1D and 2D mechanical examples.
机译:在随机非侵入式有限元建模的框架中,通常的做法是使用蒙特卡洛模拟。这种方法的主要缺点是计算成本,因为它需要计算大量的确定性有限元解决方案。不同的蒙特卡洛采样对应于表征模型的随机行为的随机变量的实现。因此,这需要解决具有相同结构的一组确定性问题,即涉及材料参数和载荷数据的变化。因此,要解决的不同问题在实践中彼此相似。因此,如果可以保证数值解的质量,那么减少基数策略是降低计算成本的明智选择。本文介绍了一种面向目标的策略,该策略可以沿蒙特卡洛过程逐步丰富缩减的基础。该方法是基于用规定的感兴趣量的剩余估计值来评估简化基础解的误差。在1D和2D机械示例中说明了所提出方法的效率,如果独立随机变量的数量很大,则该方法特别重要。

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