深度学习
人工智能
偏微分方程
卷积神经网络
反问题
相关性(法律)
人工神经网络
参数统计
计算机科学
数学
领域(数学)
利用
鉴定(生物学)
机器学习
算法
应用数学
数学分析
统计
植物
计算机安全
政治学
纯数学
法学
生物
作者
Derick Nganyu Tanyu,Jianfeng Ning,Tom Freudenberg,Nick Heilenkötter,Andreas Rademacher,Uwe Iben,Peter Maaß
出处
期刊:Inverse Problems
[IOP Publishing]
日期:2023-07-24
卷期号:39 (10): 103001-103001
被引量:27
标识
DOI:10.1088/1361-6420/ace9d4
摘要
Abstract 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 (NN) 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 standard feed-forward NNs, recurrent NNs, or convolutional neural networks. This has had a great impact in the area of mathematical modelling 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 as well as their extensions for parametric studies and for solving the related inverse problems. We also show their relevance in various industrial applications.
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