{"title":"机器学习在计算等离子体物理和降序等离子体建模中的应用:透视","authors":"Farbod Faraji, Maryam Reza","doi":"arxiv-2409.02349","DOIUrl":null,"url":null,"abstract":"Machine learning (ML) provides a broad spectrum of tools and architectures\nthat enable the transformation of data from simulations and experiments into\nuseful and explainable science, thereby augmenting domain knowledge.\nFurthermore, ML-enhanced numerical modelling can revamp scientific computing\nfor real-world complex engineering systems, creating unique opportunities to\nexamine the operation of the technologies in detail and automate their\noptimization and control. In recent years, ML applications have seen\nsignificant growth across various scientific domains, particularly in fluid\nmechanics, where ML has shown great promise in enhancing computational modeling\nof fluid flows. In contrast, ML applications in numerical plasma physics\nresearch remain relatively limited in scope and extent. Despite this, the close\nrelationship between fluid mechanics and plasma physics presents a valuable\nopportunity to create a roadmap for transferring ML advances in fluid flow\nmodeling to computational plasma physics. This Perspective aims to outline such\na roadmap. We begin by discussing some general fundamental aspects of ML,\nincluding the various categories of ML algorithms and the different types of\nproblems that can be solved with the help of ML. With regard to each problem\ntype, we then present specific examples from the use of ML in computational\nfluid dynamics, reviewing several insightful prior efforts. We also review\nrecent ML applications in plasma physics for each problem type. The paper\ndiscusses promising future directions and development pathways for ML in plasma\nmodelling within the different application areas. Additionally, we point out\nprominent challenges that must be addressed to realize ML's full potential in\ncomputational plasma physics, including the need for cost-effective\nhigh-fidelity simulation tools for extensive data generation.","PeriodicalId":501274,"journal":{"name":"arXiv - PHYS - Plasma Physics","volume":"45 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-09-04","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Machine Learning Applications to Computational Plasma Physics and Reduced-Order Plasma Modeling: A Perspective\",\"authors\":\"Farbod Faraji, Maryam Reza\",\"doi\":\"arxiv-2409.02349\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Machine learning (ML) provides a broad spectrum of tools and architectures\\nthat enable the transformation of data from simulations and experiments into\\nuseful and explainable science, thereby augmenting domain knowledge.\\nFurthermore, ML-enhanced numerical modelling can revamp scientific computing\\nfor real-world complex engineering systems, creating unique opportunities to\\nexamine the operation of the technologies in detail and automate their\\noptimization and control. 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引用次数: 0
摘要
机器学习(ML)提供了范围广泛的工具和架构,能够将模拟和实验数据转化为有意义、可解释的科学数据,从而增强领域知识。此外,ML 增强型数值建模能够改造现实世界复杂工程系统的科学计算,为详细研究技术的运行以及自动优化和控制创造独特的机会。近年来,ML 的应用在各个科学领域都有显著增长,尤其是在流体力学领域,ML 在增强流体流动的计算建模方面显示出巨大前景。相比之下,ML 在等离子体数值物理研究中的应用在范围和程度上仍然相对有限。尽管如此,流体力学与等离子体物理之间的密切关系提供了一个宝贵的机会,为将 ML 在流体流动建模方面的进展转移到计算等离子体物理方面绘制路线图。本视角旨在勾勒这样一个路线图。我们首先讨论了 ML 的一些一般基本方面,包括 ML 算法的不同类别以及在 ML 帮助下可以解决的不同类型的问题。然后,针对每种问题类型,我们介绍了 ML 在计算流体力学中应用的具体实例,回顾了之前几项有见地的工作。我们还针对每种问题类型回顾了 ML 在等离子物理学中的最新应用。本文讨论了 ML 在不同应用领域的等离子体建模中的未来发展方向和发展途径。此外,我们还指出了为充分发挥 ML 在计算等离子体物理中的潜力而必须应对的主要挑战,包括需要具有成本效益的高保真仿真工具来生成大量数据。
Machine Learning Applications to Computational Plasma Physics and Reduced-Order Plasma Modeling: A Perspective
Machine learning (ML) provides a broad spectrum of tools and architectures
that enable the transformation of data from simulations and experiments into
useful and explainable science, thereby augmenting domain knowledge.
Furthermore, ML-enhanced numerical modelling can revamp scientific computing
for real-world complex engineering systems, creating unique opportunities to
examine the operation of the technologies in detail and automate their
optimization and control. In recent years, ML applications have seen
significant growth across various scientific domains, particularly in fluid
mechanics, where ML has shown great promise in enhancing computational modeling
of fluid flows. In contrast, ML applications in numerical plasma physics
research remain relatively limited in scope and extent. Despite this, the close
relationship between fluid mechanics and plasma physics presents a valuable
opportunity to create a roadmap for transferring ML advances in fluid flow
modeling to computational plasma physics. This Perspective aims to outline such
a roadmap. We begin by discussing some general fundamental aspects of ML,
including the various categories of ML algorithms and the different types of
problems that can be solved with the help of ML. With regard to each problem
type, we then present specific examples from the use of ML in computational
fluid dynamics, reviewing several insightful prior efforts. We also review
recent ML applications in plasma physics for each problem type. The paper
discusses promising future directions and development pathways for ML in plasma
modelling within the different application areas. Additionally, we point out
prominent challenges that must be addressed to realize ML's full potential in
computational plasma physics, including the need for cost-effective
high-fidelity simulation tools for extensive data generation.