In the present work, we introduce a novel approach to enhance the precision of reduced order models by exploiting a multi-fidelity perspective and DeepONets. Reduced models provide a real-time numerical approximation by simplifying the original model. The error introduced by such operation is usually neglected and sacrificed in order to reach a fast computation. We propose to couple the model reduction to a machine learning residual learning, such that the above-mentioned error can be learnt by a neural network and inferred for new predictions. We emphasize that the framework maximizes the exploitation of the high-fidelity information, using it for building the reduced order model and for learning the residual. In this work we explore the integration of proper orthogonal decomposition (POD), and gappy POD for sensors data, with the recent DeepONet architecture. Numerical investigations for a parametric benchmark function and a nonlinear parametric Navier-Stokes problem are presented.
翻译:在目前的工作中,我们采用一种新颖的方法,通过利用多种忠诚观点和DeepONets来提高降序模型的精确性。减让模型通过简化原始模型提供了实时数字近似值。这种操作带来的错误通常被忽视,为了快速计算而牺牲。我们提议将减让模型与机学习剩余学习结合起来,以便通过神经网络学习上述错误,并推断出新的预测。我们强调,该框架最大限度地利用高忠诚信息,用它来建立降序模型和学习剩余部分。我们在此工作中探索将适当的正正正方形脱形(POD)和感应数据的偏差POD(POD)与最近的DeepONet结构结合起来。提出了对准基准功能和非线性准准参数 Navier-Stoks问题进行数值调查。</s>