TY - JOUR
T1 - A statistical approach for the automatic identification of the start of the chain of events leading to the disruptions at JET
AU - Avotiņa, Līga
AU - Baumane, Larisa
AU - Haļitovs, Mihails
AU - Jansons, Juris
AU - Ķizāne, Gunta
AU - Kovaldins, Ričards
AU - Leščinskis, Andris
AU - Leščinskis, Broņislavs
AU - Pajuste, Elīna
AU - Vītiņš, Aigars
AU - Zariņš, Artūrs
AU - Aymerich, E.
N1 - Publisher Copyright:
© 2021 Institute of Physics Publishing. All rights reserved.
PY - 2021/3
Y1 - 2021/3
N2 - This paper reports an algorithm to automatically identify the chain of events leading to a disruption, evaluating the so-called reference warning time. This time separates the plasma current flat-top of each disrupted discharge into two parts: A non-disrupted part and a pre-disrupted one. The algorithm can be framed into the anomaly detection techniques as it aims to detect the off-normal behavior of the plasma. It is based on a statistical analysis of a set of dimensionless plasma parameters computed for a selection of discharges from the JET experimental campaigns. In every data-driven model, such as the generative topographic mapping (GTM) predictor proposed in this paper, it is indeed necessary to label the samples needed for training the model itself. The samples describing the disruption-free behavior are extracted from the plasma current flat-top phase of the regularly terminated discharges. The disrupted space is described by all the samples belonging to the pre-disruptive phase of each disruptive discharge in the training set. Note that a proper selection of the pre-disruptive phase plays a key role in the prediction performance of the model. Moreover, these models, which are highly dependent on the training input space, may be particularly prone to degradation as the operational space of any experimental machine is continuously evolving. Hence, a regular schedule of model review and retrain must be planned. The proposed algorithm avoids the cumbersome and time-consuming manual identification of the warning times, helping to implement a continuous learning system that could be automated, despite being offline. In this paper, the automatically evaluated warning times are compared with those obtained with a manual analysis in terms of the impact on the mapping of the JET input parameter space using the GTM methodology. Moreover, the algorithm has been used to build the GTM of recent experimental campaigns, with promising results. â-Author to whom any correspondence should be addressed. aSee Joffrin et al 2019 (https://doi.org/10.1088/1741-4326/ab2276) for the JET contributors.
AB - This paper reports an algorithm to automatically identify the chain of events leading to a disruption, evaluating the so-called reference warning time. This time separates the plasma current flat-top of each disrupted discharge into two parts: A non-disrupted part and a pre-disrupted one. The algorithm can be framed into the anomaly detection techniques as it aims to detect the off-normal behavior of the plasma. It is based on a statistical analysis of a set of dimensionless plasma parameters computed for a selection of discharges from the JET experimental campaigns. In every data-driven model, such as the generative topographic mapping (GTM) predictor proposed in this paper, it is indeed necessary to label the samples needed for training the model itself. The samples describing the disruption-free behavior are extracted from the plasma current flat-top phase of the regularly terminated discharges. The disrupted space is described by all the samples belonging to the pre-disruptive phase of each disruptive discharge in the training set. Note that a proper selection of the pre-disruptive phase plays a key role in the prediction performance of the model. Moreover, these models, which are highly dependent on the training input space, may be particularly prone to degradation as the operational space of any experimental machine is continuously evolving. Hence, a regular schedule of model review and retrain must be planned. The proposed algorithm avoids the cumbersome and time-consuming manual identification of the warning times, helping to implement a continuous learning system that could be automated, despite being offline. In this paper, the automatically evaluated warning times are compared with those obtained with a manual analysis in terms of the impact on the mapping of the JET input parameter space using the GTM methodology. Moreover, the algorithm has been used to build the GTM of recent experimental campaigns, with promising results. â-Author to whom any correspondence should be addressed. aSee Joffrin et al 2019 (https://doi.org/10.1088/1741-4326/ab2276) for the JET contributors.
KW - Automatic pre-disruptive phase identification
KW - Dimensionless physics-based indicators
KW - Disruption mitigation and avoidance
KW - Machine learning
KW - Operational space mapping
UR - https://iopscience.iop.org/article/10.1088/1741-4326/abcb28
UR - https://www.scopus.com/pages/publications/85101443536
U2 - 10.1088/1741-4326/abcb28
DO - 10.1088/1741-4326/abcb28
M3 - Article
SN - 0029-5515
VL - 61
JO - Nuclear Fusion
JF - Nuclear Fusion
IS - 3
M1 - 036013
ER -