混合分析和建模,折衷主义和多保真计算走向数字孪生革命

Q1 Mathematics
Omer San, Adil Rasheed, Trond Kvamsdal
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引用次数: 26

摘要

大多数建模方法属于两类:基于物理的或数据驱动的。最近,第三种方法,即这些确定性和统计模型的结合,正在出现在科学应用中。为了利用这些发展,我们在这篇观点论文中的目标是围绕探索许多原则概念来解决以下挑战:(i)开发数据驱动模型的可信度和通用性,以阐明理解其准确性和效率的基本权衡;(ii)接口学习和多保真耦合方法的无缝集成,在不同实体之间传递和表示信息;特别是当不同的尺度由不同的物理控制时,每一个都在不同的抽象层次上运作。解决这些挑战可以为科学和工程应用带来数字孪生技术的革命。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid analysis and modeling, eclecticism, and multifidelity computing toward digital twin revolution

Most modeling approaches lie in either of the two categories: physics-based or data-driven. Recently, a third approach which is a combination of these deterministic and statistical models is emerging for scientific applications. To leverage these developments, our aim in this perspective paper is centered around exploring numerous principle concepts to address the challenges of (i) trustworthiness and generalizability in developing data-driven models to shed light on understanding the fundamental trade-offs in their accuracy and efficiency and (ii) seamless integration of interface learning and multifidelity coupling approaches that transfer and represent information between different entities, particularly when different scales are governed by different physics, each operating on a different level of abstraction. Addressing these challenges could enable the revolution of digital twin technologies for scientific and engineering applications.

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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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