Recent years have witnessed a growth in mathematics for deep learning--which seeks a deeper understanding of the concepts of deep learning with mathematics, and explores how to make it more robust--and deep learning for mathematics, where deep learning algorithms are used to solve problems in mathematics. The latter has popularised the field of scientific machine learning where deep learning is applied to problems in scientific computing. Specifically, more and more neural network architectures have been developed to solve specific classes of partial differential equations (PDEs). Such methods exploit properties that are inherent to PDEs and thus solve the PDEs better than classical feed-forward neural networks, recurrent neural networks, and convolutional neural networks. This has had a great impact in the area of mathematical modeling where parametric PDEs are widely used to model most natural and physical processes arising in science and engineering, In this work, we review such methods and extend them for parametric studies as well as for solving the related inverse problems. We equally proceed to show their relevance in some industrial applications.
翻译:近些年来,深入学习的数学在数学方面出现了增长 -- -- 寻求更深入地理解数学深层次学习的概念,并探索如何使数学更有力和更深入地学习数学,即运用深层次的学习算法解决数学方面的问题。后者推广了科学机器学习领域,将深层次学习应用于科学计算的问题。具体地说,已经开发了越来越多的神经网络结构,以解决部分差异方程(PDEs)的具体类别。这些方法利用了PDEs所固有的特性,从而解决了PDEs,比传统的进取神经网络、经常性神经网络和进化神经网络更好。这在数学建模领域产生了巨大影响,参数PDEs被广泛用于模拟科学和工程中产生的最自然和物理过程。在这项工作中,我们审查了这些方法,并将这些方法扩大到参数研究以及解决相关的反向问题。我们同样着手在一些工业应用中展示其相关性。