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New information processing methods for control on JET

机译:用于JET控制的新信息处理方法

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摘要

Magnetic confinement fusion devices are very integrated systems, difficult to access for measurement, and therefore they pose particular challenges to identification and to the prediction of undesired events. With regard to system identification, Bayesian statistics is a very promising methodology, which provides for the first time a sound way to include physical information about the diagnostics in the evaluation of the error bars. In a prototypical application, a Bayesian statistical approach determines the magnetic topology without any assumption on the equilibrium and provides clear confidence intervals on all the derived quantities. This technique, which complements another more traditional approach based on the Grad-Shafranov equation, can be implemented to provide results about every few milliseconds and therefore it can be envisaged to exploit for feedback purposes. Some phenomena in the evolution of Tokamak plasmas, like disruptions, are too dangerous and prohibitively difficult to control. For these cases avoidance is the best alternative and therefore specific classifiers have been trained and optimized to predict the occurrence of disruptions. The success rates of these predictors, mainly based on Support Vector Machines, are very often of the order or higher than 90%. The generalisation capability of the method has been confirmed by applying the same predictor to new campaigns without retraining. The success rate remains very high (above 80%) even 12 campaigns after the last one used for training.
机译:磁约束聚变设备是非常集成的系统,难以进行测量,因此它们对识别和预测不良事件提出了特殊的挑战。关于系统识别,贝叶斯统计是一种非常有前途的方法,它首次提供了一种合理的方法,可以将有关诊断的物理信息包括在误差条的评估中。在原型应用中,贝叶斯统计方法无需对平衡进行任何假设即可确定磁拓扑,并为所有导出的量提供明确的置信区间。该技术是对基于Grad-Shafranov方程的另一种更传统方法的补充,可以实施以提供大约每几毫秒的结果,因此可以设想将其用于反馈目的。托卡马克等离子体演化过程中的某些现象(如破坏)过于危险,难以控制。对于这些情况,避免是最好的选择,因此,已经对特定的分类器进行了训练和优化以预测中断的发生。主要基于支持向量机的这些预测器的成功率通常约为90%或更高。通过将相同的预测变量应用于新的活动而无需重新训练,已经确认了该方法的泛化能力。即使在最后一个训练之后的12个运动之后,成功率仍然很高(超过80%)。

著录项

  • 来源
    《Fusion Engineering and Design》 |2010年第4期|P.428-432|共5页
  • 作者单位

    Associazione EURATOM-ENEA per la Fusione, Consorzio RFX, 4-35127 Padova, Italy;

    rnAsociacion EURATOM/CIEMAT para Fusion, Madrid, Spain;

    rnAssociation EURATOM-CEA. CEA Cadarache DSM/JRFM, 13108 Saint-Paul-lez-Durance. France;

    rnAsociacion EURATOM/CIEMAT para Fusion, Madrid, Spain;

    rnMax-Planck-Institut fuer Plasmaphysik, Teilinstitut Greifswald, EURATOM Association, Wendelsteinstr. 1, 17491 Greifswald, Germany;

    rnDipartimento di Ingegneria Elettrica Elettronica e dei Sistemi-Universita degli Studi di Catania. 95125 Catania, Italy;

    rnLaboratoire J-A Dieudonne (UMR 66 21), Universite de Nice Sophia-Antipolis, CNRS Pare Valrose, 06108 Nice Cedex 02 France;

    rnLaboratoire J-A Dieudonne (UMR 66 21), Universite de Nice Sophia-Antipolis, CNRS Pare Valrose, 06108 Nice Cedex 02 France;

    rnLaboratoire J-A Dieudonne (UMR 66 21), Universite de Nice Sophia-Antipolis, CNRS Pare Valrose, 06108 Nice Cedex 02 France;

  • 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

    bayesian statistics; SVM; disruption prediction; EQUINOX;

    机译:贝叶斯统计;支持向量机;破坏预测;春分;

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