Xu Daolin, Khanmohamadi Omid
School of Mechanical and Aerospace Engineering, Nanyang Technological University, Singapore 639798.
Chaos. 2008 Dec;18(4):043122. doi: 10.1063/1.3030611.
A technique based on trigonometric spectral methods and structure selection is proposed for the reconstruction, from observed time series, of spatiotemporal systems governed by nonlinear partial differential equations of polynomial type with terms of arbitrary derivative order and nonlinearity degree. The system identification using Fourier spectral differentiation operators in conjunction with a structure selection procedure leads to a parsimonious model of the original system by detecting and eliminating the redundant parameters using orthogonal decomposition of the state data. Implementation of the technique is exemplified for a highly stiff reaction-diffusion system governed by the Kuramoto-Sivashinsky equation. Numerical experiments demonstrate the superior performance of the proposed technique in terms of accuracy as well as robustness, even with smaller sets of sampling data.
提出了一种基于三角谱方法和结构选择的技术,用于从观测时间序列中重建由具有任意导数阶数和非线性程度项的多项式型非线性偏微分方程所支配的时空系统。使用傅里叶谱微分算子结合结构选择过程进行系统识别,通过对状态数据进行正交分解来检测和消除冗余参数,从而得到原始系统的简约模型。以由Kuramoto-Sivashinsky方程支配的高度刚性反应扩散系统为例说明了该技术的实现。数值实验表明,即使使用较少的采样数据集,所提出的技术在准确性和鲁棒性方面也具有卓越的性能。