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Enabling High-Dimensional Hierarchical Uncertainty Quantification by ANOVA and Tensor-Train Decomposition

机译:通过ANOVA和张量-火车分解实现高维分层不确定性量化

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Hierarchical uncertainty quantification can reduce the computational cost of stochastic circuit simulation by employing spectral methods at different levels. This paper presents an efficient framework to simulate hierarchically some challenging stochastic circuits/systems that include high-dimensional subsystems. Due to the high parameter dimensionality, it is challenging to both extract surrogate models at the low level of the design hierarchy and to handle them in the high-level simulation. In this paper, we develop an efficient analysis of variance-based stochastic circuit/microelectromechanical systems simulator to efficiently extract the surrogate models at the low level. In order to avoid the curse of dimensionality, we employ tensor-train decomposition at the high level to construct the basis functions and Gauss quadrature points. As a demonstration, we verify our algorithm on a stochastic oscillator with four MEMS capacitors and 184 random parameters. This challenging example is efficiently simulated by our simulator at the cost of only 10min in MATLAB on a regular personal computer.
机译:分层不确定性量化可以通过采用不同级别的频谱方法来降低随机电路仿真的计算成本。本文提出了一个有效的框架,可以分层地模拟具有挑战性的包括高维子系统的随机电路/系统。由于参数维数高,因此在设计层次结构的低层提取代理模型并在高层仿真中处理它们都具有挑战性。在本文中,我们开发了一种基于方差的随机电路/微机电系统模拟器的有效分析,可以在低水平下有效地提取替代模型。为了避免维数的诅咒,我们在高层使用张量-列分解来构造基函数和高斯正交点。作为演示,我们在具有四个MEMS电容器和184个随机参数的随机振荡器上验证我们的算法。在我们的模拟器上,使用常规个人计算机在MATLAB中仅花费10分钟即可有效地模拟这个具有挑战性的示例。

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