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Machine learning for disruption warnings on Alcator C-Mod, DIII-D, and EAST

机译:Alcator C-Mod,DIII-D和East中断警告机器学习

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摘要

This paper reports on disruption prediction using a shallow machine learning method known as a random forest, trained on large databases containing only plasma parameters that arc available in real-time on Alcator C-Mod, DIII-D, and EAST. The database for each tokamak contains parameters sampled similar to 10(6) times throughout similar to 10(4) discharges (disruptive and non-disruptive) over the last four years of operation. It is found that a number of parameters (e.g. P-rad/P-input, l(i), n(G), B-n=1/B-0) exhibit changes in aggregate as a disruption is approached on one or more of these tokamaks. However, for each machine, the most useful parameters, as well as the details of their precursor behaviors, are markedly different. When the prediction problem is framed using a binary classification scheme to discriminate between tune slices 'close to disruption' and 'far from disruption', it is found that the prediction algorithms differ substantially in performance among the three machines on a time slice-by-time slice basis, but have similar disruption detection rates (similar to 80%similar to 90%) on a shot-by-shot basis after appropriate optimisation. This could have important implications for disruption prediction and avoidance on ITER, for which development of a training database of disruptions may be infeasible. The algorithm's output is interpretable using a method that identifies the most strongly contributing input signals, which may have implications for avoiding disruptive scenarios. To further support its real-time capability, successful applications in inter-shot and real-time environments on EAST and DIII-D are also discussed.
机译:本文通过称为随机森林的浅机器学习方法报告了中断预测,在大型数据库上培训,仅包含仅在Alcator C-Mod,DIII-D和East上实时可用的等离子体参数。每个Tokamak的数据库包含与在过去四年中相似的10(6)次相似的参数,类似于10(4)次放电(中断和无中断)。发现,在一个或一个或中,接近了许多参数(例如p-rad / p键,l(i),n / n(g),bn = 1 / b-0)作为中断的变化更多这些tokamaks。但是,对于每台机器,最有用的参数以及它们的前体行为的细节明显不同。当使用二进制分类方案进行预测问题以区分曲调切片的“接近中断”和“远离中断”,发现预测算法在三台机器上的三台机器中的性能大致不同于 - 时间切片基础,但在适当的优化后,在逐次拍摄的基础上具有类似的中断检测率(类似于80%)。这可能对ITER的中断预测和避免具有重要意义,其中开发中断的培训数据库可能是不可行的。算法的输出是使用识别最强烈贡献输入信号的方法来解释,这可能对避免破坏性方案具有影响。为了进一步支持其实时能力,还讨论了东部和DIII-D的拍摄和实时环境中的成功应用。

著录项

  • 来源
    《Nuclear fusion》 |2019年第9期|096015.1-096015.12|共12页
  • 作者单位

    MIT Plasma Sci & Fus Ctr Cambridge MA 02319 USA;

    MIT Plasma Sci & Fus Ctr Cambridge MA 02319 USA;

    MIT Plasma Sci & Fus Ctr Cambridge MA 02319 USA;

    MIT Plasma Sci & Fus Ctr Cambridge MA 02319 USA;

    Gen Atom San Diego CA 92121 USA;

    Gen Atom San Diego CA 92121 USA;

    Chinese Acad Sci Inst Plasma Phys Hefei 230031 Anhui Peoples R China;

    Chinese Acad Sci Inst Plasma Phys Hefei 230031 Anhui Peoples R China;

    Chinese Acad Sci Inst Plasma Phys Hefei 230031 Anhui Peoples R China;

    Princeton Plasma Phys Lab Princeton NJ 08540 USA;

    Princeton Plasma Phys Lab Princeton NJ 08540 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    disruption; prediction; real-time; machine learning; stability; control; tokamak;

    机译:破坏;预测;实时;机器学习;稳定;控制;托卡马克;
  • 入库时间 2022-08-18 21:19:04

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