受高斯随机场输入 PDE 约束的风险度量的高斯混合泰勒近似值

Dingcheng Luo, Joshua Chen, Peng Chen, Omar Ghattas
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摘要

本研究考虑使用泰勒近似法计算由具有高斯随机场参数的 PDE 所控制的相关量的风险度量。泰勒近似虽然效率高,但由于是局部扩展点,因此当输入参数的方差较大时,精度可能会下降。为了应对这一挑战,我们用在参数空间的主导方向上方差减小的高斯混合物来近似底层高斯度量。在每个高斯混合物分量的主题点上构建泰勒近似值,然后将其组合起来以近似风险度量。该公式是在无限维高斯随机参数的背景下提出的,风险度量包括主题矢量、方差和条件风险值。我们还详细分析了近似误差的两个来源:高斯混合近似和泰勒近似。我们对具有随机扩散系数场的半线性平流-扩散-反应方程和具有随机波速场的亥姆霍兹方程进行了数值实验。对于这些示例,所提出的近似策略只需要$\mathcal{O}(10)$状态的PDE求解,就能在估计CVaR时实现小于$1\%$的相对误差,这与使用$\mathcal{O}(10^4)$样本的标准蒙特卡洛估计不相上下,从而显著降低了计算成本。因此,所提出的方法可以在有限的计算预算下快速、准确地估计风险度量。
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Gaussian mixture Taylor approximations of risk measures constrained by PDEs with Gaussian random field inputs
This work considers the computation of risk measures for quantities of interest governed by PDEs with Gaussian random field parameters using Taylor approximations. While efficient, Taylor approximations are local to the point of expansion, and hence may degrade in accuracy when the variances of the input parameters are large. To address this challenge, we approximate the underlying Gaussian measure by a mixture of Gaussians with reduced variance in a dominant direction of parameter space. Taylor approximations are constructed at the means of each Gaussian mixture component, which are then combined to approximate the risk measures. The formulation is presented in the setting of infinite-dimensional Gaussian random parameters for risk measures including the mean, variance, and conditional value-at-risk. We also provide detailed analysis of the approximations errors arising from two sources: the Gaussian mixture approximation and the Taylor approximations. Numerical experiments are conducted for a semilinear advection-diffusion-reaction equation with a random diffusion coefficient field and for the Helmholtz equation with a random wave speed field. For these examples, the proposed approximation strategy can achieve less than $1\%$ relative error in estimating CVaR with only $\mathcal{O}(10)$ state PDE solves, which is comparable to a standard Monte Carlo estimate with $\mathcal{O}(10^4)$ samples, thus achieving significant reduction in computational cost. The proposed method can therefore serve as a way to rapidly and accurately estimate risk measures under limited computational budgets.
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