Operator learning frameworks, because of their ability to learn nonlinear maps between two infinite dimensional functional spaces and utilization of neural networks in doing so, have recently emerged as one of the more pertinent areas in the field of applied machine learning. Although these frameworks are extremely capable when it comes to modeling complex phenomena, they require an extensive amount of data for successful training which is often not available or is too expensive. However, this issue can be alleviated with the use of multi-fidelity learning, where a model is trained by making use of a large amount of inexpensive low-fidelity data along with a small amount of expensive high-fidelity data. To this end, we develop a new framework based on the wavelet neural operator which is capable of learning from a multi-fidelity dataset. The developed model's excellent learning capabilities are demonstrated by solving different problems which require effective correlation learning between the two fidelities for surrogate construction. Furthermore, we also assess the application of the developed framework for uncertainty quantification. The results obtained from this work illustrate the excellent performance of the proposed framework.
翻译:操作员学习框架,由于其在两个无限功能空间之间学习非线性地图的能力,以及利用神经网络,最近成为应用机器学习领域更相关的领域之一。虽然这些框架在模拟复杂现象方面极其有能力,但它们需要大量数据来成功培训,而这种数据往往不具备,或太昂贵。然而,通过使用多种忠诚学习,可以缓解这一问题。在这种学习中,通过使用大量廉价的低忠诚数据以及少量昂贵的高忠诚数据来培训模型。为此,我们根据能够从多忠诚数据集中学习的波盘神经操作员制定了一个新的框架。开发模型的优秀学习能力通过解决各种问题而得到证明,这些问题要求在代管建筑的两种忠诚之间进行有效的相互联系学习。此外,我们还评估了开发的不确定性量化框架的应用情况。从这项工作中取得的结果说明了拟议框架的出色表现。