基于多项式混沌的哈密顿、多时间尺度和混沌系统的不确定性量化

J. M. Pasini, T. Sahai
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引用次数: 6

摘要

多项式混沌是一种通过常微分方程和偏微分方程传播不确定性的强大技术。将随机变量用正交多项式展开,并推导出展开系数的微分方程。本文研究了原始系统具有哈密顿结构、具有多时间尺度或呈现混沌动力学时这些微分方程的结构和动力学。特别地,我们证明了哈密顿系统的广义多项式混沌展开式中展开系数的微分方程相对于系综平均哈密顿量保持了哈密顿结构。我们将此与哈密顿流的保体积性质联系起来,表明对于一个频率不确定的振子,无论其展开的顺序如何,有限的膨胀在很长时间内必定失败。此外,使用双时间尺度强迫非线性振荡器,我们证明了时间平均方程的多项式混沌展开捕获了系统庞加莱部分缓慢演化中的不确定性,并且随着时间尺度分离的增加,该过程的计算优势增加。最后,以强迫Duffing振子为例,证明了当原动力系统表现为混沌动力学时,多项式混沌得到的动力系统也表现为混沌动力学,限制了其适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Polynomial chaos based uncertainty quantification in Hamiltonian, multi-time scale, and chaotic systems
Polynomial chaos is a powerful technique for propagating uncertainty through ordinary and partial differential equations. Random variables are expanded in terms of orthogonal polynomials and differential equations are derived for the expansion coefficients. Here we study the structure and dynamics of these differential equations when the original system has Hamiltonian structure, has multiple time scales, or displays chaotic dynamics. In particular, we prove that the differential equations for the expansion coefficients in generalized polynomial chaos expansions of Hamiltonian systems retain the Hamiltonian structure relative to the ensemble average Hamiltonian. We connect this with the volume-preserving property of Hamiltonian flows to show that, for an oscillator with uncertain frequency, a finite expansion must fail at long times, regardless of the order of the expansion. Also, using a two-time scale forced nonlinear oscillator, we show that a polynomial chaos expansion of the time-averaged equations captures uncertainty in the slow evolution of the Poincar\'e section of the system and that, as the time scale separation increases, the computational advantage of this procedure increases. Finally, using the forced Duffing oscillator as an example, we demonstrate that when the original dynamical system displays chaotic dynamics, the resulting dynamical system from polynomial chaos also displays chaotic dynamics, limiting its applicability.
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