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A real-time machine learning-based disruption predictor in DIII-D

机译:DIII-D中基于实时机器学习的中断预测器

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A disruption prediction algorithm, called disruption prediction using random forests (DPRF), has run in real-time in the DIII-D plasma control system (PCS) for more than 900 discharges. DPRF naturally provides a probability mapping associated with its predictions, i.e. the disruptivity signal, now incorporated in the DIII-D PCS. This paper discusses disruption prediction accomplishments in terms of shot-by-shot performances, by simulating alarms on each discharge as in the PCS framework. Depending on the optimised performance metric chosen to evaluate DPRF, we find that almost all disruptive discharges are detected on average with a few hundred milliseconds of warning time, but this comes at a high cost of false alarms produced. Performances do not satisfy ITER requirements, where the success rate has to be higher than 95%, but this is not completely unexpected. DPRF is trained on many years of major disruptions occurring during the flattop phase of the plasma current in DIII-D, but without any differentiation by cause. Furthermore, we find that DPRF is affected by a relatively high fraction of false alarms occurring during the first 500 milliseconds from the flattop onset. This subtle effect, more evident on discharges where DPRF is run in real-time, can be marginalised by taking specific precautions on the validity range of the predictions, and performances do improve. Even if presently burdened by some limitations, DPRF provides an incredible and novel advantage. Thanks to the feature contribution analysis (e.g. the identification of which signals contributed to triggering an alarm), it is possible to interpret and explain DPRF predictions. It is the first time that such interpretability features are exploited by a disruption predictor: by uncovering the causes of the disruption events, a better understanding of disruption dynamics is achieved, and a clear path toward the design of disruption avoidance strategies can be provided.
机译:DIII-D等离子体控制系统(PCS)中实时运行了900种放电的中断预测算法,称为使用随机森林的中断预测(DPRF)。 DPRF自然提供了与其预测相关的概率映射,即现在被纳入DIII-D PCS的破坏性信号。本文通过模拟PCS框架中每次放电的警报来讨论逐个镜头性能的破坏预测成果。根据选择用于评估DPRF的最佳性能指标,我们发现平均几乎所有破坏性放电都在几百毫秒的警告时间内被检测到,但这会产生高昂的虚假警报成本。性能不能满足ITER要求,成功率必须高于95%,但这并不是完全意外的。对DPRF进行了DIII-D等离子体电流平顶阶段多年发生的重大破坏的培训,但没有任何原因的区分。此外,我们发现DPRF受到从平顶面开始的前500毫秒内发生的误报率较高的影响。通过在预测的有效范围内采取特定的预防措施,可以将这种微妙的影响(在DPRF实时运行的放电中更明显)被边缘化,并且性能确实得到了改善。即使当前受到某些限制的负担,DPRF也提供了令人难以置信的新颖优势。由于功能贡献分析(例如,识别哪些信号有助于触发警报),可以解释和解释DPRF预测。这是中断预测器首次利用这种可解释性功能:通过揭示中断事件的原因,可以更好地理解中断动态,并可以为避免中断策略的设计提供一条清晰的道路。

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