We present a new surrogate modeling technique for efficient approximation of input-output maps governed by parametrized PDEs. The model is hierarchical as it is built on a full order model (FOM), reduced order model (ROM) and machine-learning (ML) model chain. The model is adaptive in the sense that the ROM and ML model are adapted on-the-fly during a sequence of parametric requests to the model. To allow for a certification of the model hierarchy, as well as to control the adaptation process, we employ rigorous a posteriori error estimates for the ROM and ML models. In particular, we provide an example of an ML-based model that allows for rigorous analytical quality statements. We demonstrate the efficiency of the modeling chain on a Monte Carlo and a parameter-optimization example. Here, the ROM is instantiated by Reduced Basis Methods and the ML model is given by a neural network or a VKOGA kernel model.
翻译:我们提出了一种新的替代模型技术,以有效近似由平衡的PDE管理的投入-输出地图。模型是等级式的,因为它建在一个完整的订单模型(FOM)、减序模型(ROM)和机器学习模型(ML)链上。模型具有适应性,因为ROM和ML模型在对模型的参数性请求顺序上可以随地调整。为了能够验证模型等级和控制适应过程,我们为ROM和ML模型采用了严格的事后误差估计。特别是,我们提供了一个基于ML的模型的例子,以便能够进行严格的分析质量说明。我们展示了蒙特卡洛号模型链的效率和一个参数优化示例。在这里,该模型是用简化的基础方法即时转换的,而ML模型是由一个神经网络或VKOGA内核模型提供的。