Uncertainty quantification based on stochastic spectral methods suffers from the curse of dimensionality. This issue was mitigated recently by low-rank tensor methods. However, there exist two fundamental challenges in low-rank tensor-based uncertainty quantification: how to automatically determine the tensor rank and how to pick the simulation samples. This paper proposes a novel tensor regression method to address these two challenges. Our method uses an $\ell_{q}/ \ell_{2}$-norm regularization to determine the tensor rank and an estimated Voronoi diagram to pick informative samples for simulation. The proposed framework is verified by a 19-dim phonics bandpass filter and a 57-dim CMOS ring oscillator, capturing the high-dimensional uncertainty well with only 90 and 290 samples respectively.
翻译:基于随机光谱方法的不确定性量化方法受到维度的诅咒,这个问题最近通过低调高压方法得到缓解。然而,低调高压的不确定性量化方法存在两个基本挑战:如何自动确定高压等级和如何选择模拟样品。本文提出了一种新颖的高压回归方法来应对这两项挑战。我们的方法是使用一个$\ell ⁇ q}/\ell ⁇ 2}-norm 正规化法来确定抗拉等级和估计的Voronoi 图表来挑选用于模拟的信息样本。提议的框架由一个19-dim phonics波段过滤器和57-dim CMOS环振荡器加以验证,分别用90和290个样本来捕捉高度不确定性。