A method for the nonintrusive and structure-preserving model reduction of canonical and noncanonical Hamiltonian systems is presented. Based on the idea of operator inference, this technique is provably convergent and reduces to a straightforward linear solve given snapshot data and gray-box knowledge of the system Hamiltonian. Examples involving several hyperbolic partial differential equations show that the proposed method yields reduced models which, in addition to being accurate and stable with respect to the addition of basis modes, preserve conserved quantities well outside the range of their training data.
翻译:本文提出了一种用于规范和非规范哈密顿系统非侵入性结构保持模型简化的方法。基于算子推断的思想,该技术证明收敛并在给定快照数据和系统哈密顿量的灰盒知识的情况下,化简为一个简单的线性求解。涉及多个双曲型偏微分方程的示例表明,所提出的方法产生的简化模型不仅精确且稳定,对基模式的添加也保持了守恒量,这些守恒量位于它们的训练数据范围之外。