论文标题

排名自适应结构的模型订单减少哈密顿系统

Rank-adaptive structure-preserving model order reduction of Hamiltonian systems

论文作者

Hesthaven, Jan S., Pagliantini, Cecilia, Ripamonti, Nicolò

论文摘要

这项工作提出了一种自适应结构的模型降低方法,用于有限维参数化的汉密尔顿系统,建模非解剖现象。为了克服典型的运输问题的缓慢腐烂的kolmogorov宽度,在局部还原的空间上近似使用动态低级别近似技术在时间上适应的局部缩小空间。通过近似于切线空间中哈密顿矢量场的符合性投影来规定降低的动力学。这样可以确保在还原过程中保存哈密顿动力学的规范符号结构。另外,通过允许减小空间的尺寸在时间演化期间变化,可以获得具有低级别减少溶液的准确近似值。每当通过误差指标评估的还原解决方案的质量不满意时,降低的基础就会以当前基础近似的参数方向增加。与全球和传统的减少基础方法相比,涉及波相互作用,非线性传输问题和弗拉索夫方程的广泛数值测试表明,该方法的稳定性和相当大的运行时加速。

This work proposes an adaptive structure-preserving model order reduction method for finite-dimensional parametrized Hamiltonian systems modeling non-dissipative phenomena. To overcome the slowly decaying Kolmogorov width typical of transport problems, the full model is approximated on local reduced spaces that are adapted in time using dynamical low-rank approximation techniques. The reduced dynamics is prescribed by approximating the symplectic projection of the Hamiltonian vector field in the tangent space to the local reduced space. This ensures that the canonical symplectic structure of the Hamiltonian dynamics is preserved during the reduction. In addition, accurate approximations with low-rank reduced solutions are obtained by allowing the dimension of the reduced space to change during the time evolution. Whenever the quality of the reduced solution, assessed via an error indicator, is not satisfactory, the reduced basis is augmented in the parameter direction that is worst approximated by the current basis. Extensive numerical tests involving wave interactions, nonlinear transport problems, and the Vlasov equation demonstrate the superior stability properties and considerable runtime speedups of the proposed method as compared to global and traditional reduced basis approaches.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源