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Assessment of linear disruption predictors using JT-60U data

机译:使用JT-60U数据评估线性破坏预测因子

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Disruptions are dangerous events in tokamaks that require mitigation methods to alleviate its detrimental effects. A prerequisite to trigger any mitigation action is the existence of a reliable disruption predictor. This article assesses a predictor that relates in a linear way consecutive samples of a single quantity (in particular, the magnetic perturbation time derivative signal has been used). With this kind of predictor, the recognition of disruptions does not depend on how large the signal amplitude is but on how large the signal increments are: small increments mean smooth plasma evolution whereas abrupt increments reflect a non-smooth evolution and potential risk of disruption. Results are presented with data from the JT-60U tokamak and high-beta discharges. Two training methods have been tested: a classical approach in which the more data for training the better and an adaptive method that starts from scratch. In both cases the success rate is about 95%. It should be noted that predictors based on signal increments and their adaptive versions can be of big interest for next devices such as JT-60SA or ITER.
机译:扰乱是托卡马克中的危险事件,需要采取缓解措施来减轻其不利影响。触发任何缓解措施的先决条件是存在可靠的中断预测器。本文评估了一个预测变量,该预测变量以线性方式关联单个数量的连续样本(特别是已使用磁扰动时间导数信号)。使用这种预测器,对中断的识别并不取决于信号幅度有多大,而取决于信号增量有多大:小的增量意味着平稳的等离子体演化,而突然的增量则反映出非平滑的演化和潜在的分裂风险。结果与JT-60U托卡马克和高β排放的数据一起显示。已经测试了两种训练方法:一种经典的训练方法,其中,用于训练的数据越多越好;以及一种从头开始的自适应方法。在这两种情况下,成功率均约为95%。应当注意,基于信号增量的预测器及其自适应版本对于诸如JT-60SA或ITER之类的下一个设备可能会引起极大的兴趣。

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