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Hybrid deep-learning architecture for general disruption prediction across multiple tokamaks

机译:跨多个托卡马克的一般中断预测的混合深度学习架构

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摘要

In this paper, we present a new deep-learning disruption-prediction algorithm based on important findings from explorative data analysis which effectively allows knowledge transfer from existing devices to new ones, thereby predicting disruptions using very limited disruption data from the new devices. The explorative data analysis, conducted via unsupervised clustering techniques confirms that time-sequence data are much better separators of disruptive and non-disruptive behavior than the instantaneous plasma-state data, with further advantageous implications for a sequence-based predictor. Based on such important findings, we have designed a new algorithm for multi-machine disruption prediction that achieves high predictive accuracy for the C-Mod (AUC = 0.801), DⅢ-D (AUC = 0.947) and EAST (AUC = 0.973) tokamaks with limited hyperparameter tuning. Through numerical experiments, we show that a boosted accuracy (AUC = 0.959) is achieved for the EAST predictions by including only 20 disruptive discharges with thousands of non-disruptive discharges from EAST in the training, combined with more than a thousand discharges from DIII-D and C-Mod. The improvement in the predictive ability obtained by combining disruption data from other devices is found to be true for all permutations of the three devices. Furthermore, by comparing the predictive performance of each individual numerical experiment, we find that non-disruption data are machine-specific, while disruption data from multiple devices contain device-independent knowledge that can be used to inform predictions for disruptions occurring in a new device.
机译:在本文中,我们提出了一种基于探索性数据分析的重要发现的新的深度学习中断预测算法,其有效地允许从现有设备到新的知识转移,从而预测使用来自新设备的非常有限的中断数据的中断。通过无监督的聚类技术进行的探索数据分析证实,时间序列数据比瞬时等离子体状态数据更好地是破坏性和非中断行为的分离器,其具有对基于序列的预测器的进一步有利影响。基于这样的重要发现,我们设计了一种新的多机破坏预测算法,实现了C-Mod(AUC = 0.801),DⅢ-D(AUC = 0.947)和East(AUC = 0.973)Tokamaks的高预测精度带有有限的覆盖物调整。通过数值实验,我们表明,通过仅包括来自培训中的数千个无破坏性排放的20个中断排放,从培训中只有20个中断排放,与DIII-的数千次放电结合在一起,为东部预测实现了提升的准确度(AUC = 0.959)。 d和c-mod。对于三个设备的所有排列,发现通过组合来自其他设备的中断数据而获得的预测能力的改进。此外,通过比较每个单独实验的预测性能,我们发现非中断数据是特定于机器的,而来自多个设备的中断数据包含可独立于设备的知识,这些知识可用于告知新设备中发生中断的预测。

著录项

  • 来源
    《Nuclear fusion》 |2021年第2期|026007.1-026007.16|共16页
  • 作者单位

    Plasma Science and Fusion Center Massachusetts Institute of Technology Cambridge MA United States of America;

    Plasma Science and Fusion Center Massachusetts Institute of Technology Cambridge MA United States of America;

    Plasma Science and Fusion Center Massachusetts Institute of Technology Cambridge MA United States of America;

    Plasma Science and Fusion Center Massachusetts Institute of Technology Cambridge MA United States of America;

    Plasma Science and Fusion Center Massachusetts Institute of Technology Cambridge MA United States of America;

    Plasma Science and Fusion Center Massachusetts Institute of Technology Cambridge MA United States of America;

  • 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; machine learning; stability; tokamak;

    机译:破坏;预言;机器学习;稳定;托卡马克;
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