Uncertainty Analysis of Limit Cycle Oscillations in Nonlinear Dynamical Systems with the Fourier Generalized Polynomial Chaos Expansion

Lars de Jong, Paula Clasen, Michael Müller, Ulrich Römer
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Abstract

In engineering, simulations play a vital role in predicting the behavior of a nonlinear dynamical system. In order to enhance the reliability of predictions, it is essential to incorporate the inherent uncertainties that are present in all real-world systems. Consequently, stochastic predictions are of significant importance, particularly during design or reliability analysis. In this work, we concentrate on the stochastic prediction of limit cycle oscillations, which typically occur in nonlinear dynamical systems and are of great technical importance. To address uncertainties in the limit cycle oscillations, we rely on the recently proposed Fourier generalized Polynomial Chaos expansion (FgPC), which combines Fourier analysis with spectral stochastic methods. In this paper, we demonstrate that valuable insights into the dynamics and their variability can be gained with a FgPC analysis, considering different benchmarks. These are the well-known forced Duffing oscillator and a more complex model from cell biology in which highly non-linear electrophysiological processes are closely linked to diffusive processes. With our spectral method, we are able to predict complicated marginal distributions of the limit cycle oscillations and, additionally, for self-excited systems, the uncertainty in the base frequency. Finally we study the sparsity of the FgPC coefficients as a basis for adaptive approximation.
用傅里叶广义多项式混沌展开分析非线性动力系统中极限周期振荡的不确定性
在工程学中,模拟在预测非线性动态系统的行为方面发挥着至关重要的作用。为了提高预测的可靠性,必须将所有真实世界系统中存在的固有不确定性考虑在内。因此,随机预测具有重要意义,尤其是在设计或可靠性分析过程中。在这项工作中,我们主要研究极限周期振荡的随机预测,这种振荡通常发生在非线性动力学系统中,具有重要的技术意义。为了解决极限周期振荡中的不确定性问题,我们依赖于最近提出的傅立叶广义多项式混沌扩展(FgPC),它将傅立叶分析与频谱随机方法相结合。在本文中,考虑到不同的基准,我们证明通过 FgPC 分析可以获得对动力学及其可变性的宝贵见解。这些基准是众所周知的强迫达芬振荡器和一个更为复杂的细胞生物学模型,其中高度非线性的电生理过程与扩散过程密切相关。利用我们的频谱方法,我们能够预测极限周期振荡的复杂边际分布,此外,对于自激系统,还能预测基频的不确定性。最后,我们研究了作为自适应近似基础的 FgPC 系数的稀疏性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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