湍流建模中机器学习方法的展望

Q1 Mathematics
Andrea Beck, Marius Kurz
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引用次数: 51

摘要

本文综述了数据驱动湍流闭合建模的研究现状。它提供了一个关于挑战和开放问题的观点,但也提供了机器学习(ML)方法应用于参数估计、模型识别、闭项重建等方面的优势和前景,主要是从大涡模拟和相关技术的角度出发。我们强调训练数据、模型、底层物理和离散化的一致性是一个成功的ml增强建模策略需要考虑的关键问题。为了使讨论对任何一个领域的非专家都有用,我们以简洁和自一致的方式介绍了湍流中的建模问题以及突出的ML范式和方法。在本研究中,我们对当前数据驱动模型的概念和方法进行了调查,强调了重要的发展,并将它们置于所讨论的挑战的背景下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A perspective on machine learning methods in turbulence modeling

A perspective on machine learning methods in turbulence modeling

This work presents a review of the current state of research in data-driven turbulence closure modeling. It offers a perspective on the challenges and open issues but also on the advantages and promises of machine learning (ML) methods applied to parameter estimation, model identification, closure term reconstruction, and beyond, mostly from the perspective of large Eddy simulation and related techniques. We stress that consistency of the training data, the model, the underlying physics, and the discretization is a key issue that needs to be considered for a successful ML-augmented modeling strategy. In order to make the discussion useful for non-experts in either field, we introduce both the modeling problem in turbulence as well as the prominent ML paradigms and methods in a concise and self-consistent manner. In this study, we present a survey of the current data-driven model concepts and methods, highlight important developments, and put them into the context of the discussed challenges.

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来源期刊
GAMM Mitteilungen
GAMM Mitteilungen Mathematics-Applied Mathematics
CiteScore
8.80
自引率
0.00%
发文量
23
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