A Two-Stage Machine Learning-Aided Approach for Quench Identification at the European XFEL
This paper introduces a machine learning-aided fault detection and isolation method applied to the case study of quench identification at the European X-Ray Free-Electron Laser. The plant utilizes 800 superconducting radio-frequency cavities in order to accelerate electron bunches to high energies o...
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Zusammenfassung: | This paper introduces a machine learning-aided fault detection and isolation
method applied to the case study of quench identification at the European X-Ray
Free-Electron Laser. The plant utilizes 800 superconducting radio-frequency
cavities in order to accelerate electron bunches to high energies of up to 17.5
GeV. Various faulty events can disrupt the nominal functioning of the
accelerator, including quenches that can lead to a loss of the
superconductivity of the cavities and the interruption of their operation. In
this context, our solution consists in analyzing signals reflecting the
dynamics of the cavities in a two-stage approach. (I) Fault detection that uses
analytical redundancy to process the data and generate a residual. The
evaluation of the residual through the generalized likelihood ratio allows
detecting the faulty behaviors. (II) Fault isolation which involves the
distinction of the quenches from the other faults. To this end, we proceed with
a data-driven model of the k-medoids algorithm that explores different
similarity measures, namely, the Euclidean and the dynamic time warping.
Finally, we evaluate the new method and compare it to the currently deployed
quench detection system, the results show the improved performance achieved by
our method. |
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DOI: | 10.48550/arxiv.2407.08408 |