We discuss structure-preserving model order reduction for port-Hamiltonian systems based on an approximation of the full-order state by a linear combination of ansatz functions which depend themselves on the state of the reduced-order model. In recent years, such nonlinear approximation ansatzes have gained more and more attention especially due to their effectiveness in the context of model reduction for transport-dominated systems which are challenging for classical linear model reduction techniques. We demonstrate that port-Hamiltonian reduced-order models can often be obtained by a residual minimization approach where a special weighted norm is used for the residual. Moreover, we discuss sufficient conditions for the resulting reduced-order models to be stable. Finally, the methodology is illustrated by means of two transport-dominated numerical test cases, where the ansatz functions are determined based on snapshot data of the full-order state.
翻译:我们讨论在完全定购状态近似值的基础上,以依赖减少定购模式状态的安萨兹函数线性组合为基础,减少港口-安密尔顿系统的结构保护示范订单减少,近年来,这种非线性近似闭塞系统由于在减少以运输为主的系统模式方面的有效性而日益受到越来越多的关注,这对传统的线性模式减少技术具有挑战性。我们证明,港口-安密尔顿减少订单模型通常可以通过对剩余物质使用特殊加权规范的剩余物质最小化方法获得。此外,我们讨论了使由此形成的减少定购模式保持稳定的充分条件。最后,这种方法通过两个以运输为主的数字测试案例加以说明,在这些案例中,根据全订单状态的简便数据确定安塔兹功能。