Rioult Julien
TUPM036
First anomalies exploration from data mining and machine learning at the ARRONAX cyclotron C70XP
2273
The cyclotron C70XP of the Interest Public Group ARRONAX is regularly producing radio-isotopes for medical and research purposes. To support these productions an internal data network based on EPICS has been deployed, extending the collection of data on the accelerator components and, beam and technical diagnostics. With the accumulation of the new data, a study program is being addressed focusing on the application of data mining and Machine Learning (ML). ML Algorithm, e.g. clusterisation such as density-based spatial clustering of applications with noise or isolation forest, are used to explore the capacity to highlight anomalies for long runs with two extreme temporal cases. First explored approaches and results are presented in this paper as well as the robustness of the algorithms, which are investigated using dedicated methods (indices or iterations).
  • F. Poirier, C. Lassalle, J. Rioult
    Cyclotron ARRONAX
  • D. Mateus
    Laboratoire des Sciences du Numérique de Nantes
Paper: TUPM036
DOI: reference for this paper: 10.18429/JACoW-IPAC2023-TUPM036
About:  Received: 03 May 2023 — Revised: 09 May 2023 — Accepted: 22 Jun 2023 — Issue date: 26 Sep 2023
Cite: reference for this paper using: BibTeX, LaTeX, Text/Word, RIS, EndNote