Data-driven models in fusion exhaust: AI methods and perspectives

IF 3.5 1区 物理与天体物理 Q1 PHYSICS, FLUIDS & PLASMAS
S. Wiesen, S. Dasbach, A. Kit, A.E. Jaervinen, A. Gillgren, A. Ho, A. Panera, D. Reiser, M. Brenzke, Y. Poels, E. Westerhof, V. Menkovski, G.F. Derks and P. Strand
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引用次数: 0

Abstract

A review is given on the highlights of a scatter-shot approach of developing machine-learning methods and artificial neural networks based fast predictors for the application to fusion exhaust. The aim is to enable and facilitate optimized and improved modeling allowing more flexible integration of physics models in the light of extrapolations towards future fusion devices. The project encompasses various research objectives: (a) developments of surrogate model predictors for power & particle exhaust in fusion power plants; (b) assessments of surrogate models for time-dependent phenomena in the plasma-edge; (c) feasibility studies of micro–macro model discovery for plasma-facing components surface morphology & durability; and (d) enhancements of pedestal models & databases through interpolators and generators exploiting uncertainty quantification. Presented results demonstrate useful applications for machine-learning and artificial intelligence in fusion exhaust modeling schemes, enabling an unprecedented combination of both fast and accurate simulation.
融合排气中的数据驱动模型:人工智能方法与视角
本文综述了基于机器学习方法和人工神经网络的快速预测器在聚变排气中的应用。其目的是实现并促进优化和改进建模,以便根据对未来聚变装置的推断,更灵活地整合物理模型。该项目包含多个研究目标:(a)开发用于聚变电站功率和粒子排气的代理模型预测器;(b)评估等离子体边缘随时间变化的现象的代理模型;(c)等离子体面部件表面形态和耐久性的微观-宏观模型发现的可行性研究;以及(d)通过利用不确定性量化的内插器和生成器增强基座模型和数据库。所展示的成果证明了机器学习和人工智能在融合排气建模方案中的有用应用,实现了前所未有的快速和精确模拟的结合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Nuclear Fusion
Nuclear Fusion 物理-物理:核物理
CiteScore
6.30
自引率
39.40%
发文量
411
审稿时长
2.6 months
期刊介绍: Nuclear Fusion publishes articles making significant advances to the field of controlled thermonuclear fusion. The journal scope includes: -the production, heating and confinement of high temperature plasmas; -the physical properties of such plasmas; -the experimental or theoretical methods of exploring or explaining them; -fusion reactor physics; -reactor concepts; and -fusion technologies. The journal has a dedicated Associate Editor for inertial confinement fusion.
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