首页> 外文期刊>International journal for uncertainty quantifications >A GRADIENT-BASED SAMPLING APPROACH FOR DIMENSION REDUCTION OF PARTIAL DIFFERENTIAL EQUATIONS WITH STOCHASTIC COEFFICIENTS
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A GRADIENT-BASED SAMPLING APPROACH FOR DIMENSION REDUCTION OF PARTIAL DIFFERENTIAL EQUATIONS WITH STOCHASTIC COEFFICIENTS

机译:具有随机系数的偏微分方程降维的基于梯度的采样方法

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We develop a projection-based dimension reduction approach for partial differential equations with high-dimensional stochastic coefficients. This technique uses samples of the gradient of the quantity of interest (QoI) to partition the uncertainty domain into "active" and "passive" subspaces. The passive subspace is characterized by near-constant behavior of the quantity of interest, while the active subspace contains the most important dynamics of the stochastic system. We also present a procedure to project the model onto the low-dimensional active subspace that enables the resulting approximation to be solved using conventional techniques. Unlike the classical Karhunen-Loeve expansion, the advantage of this approach is that it is applicable to fully nonlinear problems and does not require any assumptions on the correlation between the random inputs. This work also provides a rigorous convergence analysis of the quantity of interest and demonstrates: at least linear convergence with respect to the number of samples. It also shows that the convergence rate is independent of the number of input random variables. Thus, applied to a reducible problem, our approach can approximate the statistics of the QoI to within desired error tolerance at a cost that is orders of magnitude lower than standard Monte Carlo. Finally, several numerical examples demonstrate the feasibility of our approach and are used to illustrate the theoretical results. In particular, we validate our convergence estimates through the application of this approach to a reactor criticality problem with a large number of random cross-section parameters.
机译:我们为具有高维随机系数的偏微分方程开发了一种基于投影的降维方法。该技术使用感兴趣量(QoI)的梯度样本将不确定性域划分为“主动”和“被动”子空间。被动子空间的特征在于感兴趣量的近乎恒定的行为,而主动子空间则包含了随机系统最重要的动力学。我们还提出了将模型投影到低维有效子空间上的过程,该过程使得使用常规技术可以解决所得近似问题。与经典的Karhunen-Loeve展开不同,此方法的优势在于它适用于完全非线性的问题,不需要对随机输入之间的相关性进行任何假设。这项工作还对感兴趣的数量进行了严格的收敛分析,并证明:相对于样本数量,至少是线性收敛。它还表明收敛速度与输入随机变量的数量无关。因此,应用于可归约问题,我们的方法可以将QoI的统计量近似在所需的容错范围内,而成本要比标准的Monte Carlo低几个数量级。最后,几个数值例子证明了我们方法的可行性,并用于说明理论结果。特别是,我们通过将该方法应用于具有大量随机横截面参数的反应堆临界问题,验证了我们的收敛估计。

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