In the framework of reduced basis methods, we recently introduced a new certified hierarchical and adaptive surrogate model, which can be used for efficient approximation of input-output maps that are governed by parametrized partial differential equations. This adaptive approach combines a full order model, a reduced order model and a machine-learning model. In this contribution, we extend the approach by leveraging novel kernel models for the machine learning part, especially structured deep kernel networks as well as two layered kernel models. We demonstrate the usability of those enhanced kernel models for the RB-ML-ROM surrogate modeling chain and highlight their benefits in numerical experiments.
翻译:在减少基数方法的框架内,我们最近采用了一种新的经认证的等级和适应性替代模型,可用于有效近似输入-产出图,该模型由平衡化部分差异方程式管理,这种适应性方法结合了全顺序模型、减序模型和机器学习模型,为此,我们利用机器学习的新内核模型,特别是结构化的深内核网络和两个分层内核模型,扩展了这一方法,我们展示了RB-ML-ROM替代模型链这些强化内核模型的可用性,并突出了它们在数字实验中的益处。</s>