Počet záznamů: 1  

Semi-supervised deep networks for plasma state identification

  1. 1.
    SYSNO ASEP0564063
    Druh ASEPJ - Článek v odborném periodiku
    Zařazení RIVJ - Článek v odborném periodiku
    Poddruh JČlánek ve WOS
    NázevSemi-supervised deep networks for plasma state identification
    Tvůrce(i) Zorek, M. (CZ)
    Škvára, V. (CZ)
    Smidl, L. (CZ)
    Pevný, T. (CZ)
    Seidl, Jakub (UFP-V) RID
    Grover, Ondřej (UFP-V) ORCID
    Celkový počet autorů6
    Číslo článku125004
    Zdroj.dok.Plasma Physics and Controlled Fusion. - : Institute of Physics Publishing - ISSN 0741-3335
    Roč. 64, č. 12 (2022)
    Poč.str.16 s.
    Jazyk dok.eng - angličtina
    Země vyd.GB - Velká Británie
    Klíč. slovaplasma ; neural networks ; semi-supervised learning ; classification
    Vědní obor RIVBL - Fyzika plazmatu a výboje v plynech
    Obor OECDFluids and plasma physics (including surface physics)
    CEPLM2018117 GA MŠMT - Ministerstvo školství, mládeže a tělovýchovy
    GA19-15229S GA ČR - Grantová agentura ČR
    Způsob publikováníOmezený přístup
    Institucionální podporaUFP-V - RVO:61389021
    UT WOS000876069600001
    EID SCOPUS85141293718
    DOI10.1088/1361-6587/ac9926
    AnotaceCorrect and timely detection of plasma confinement regimes and edge localized modes (ELMs) is important for improving the operation of tokamaks. Existing machine learning approaches detect these regimes as a form of post-processing of experimental data. Moreover, they are typically trained on a large dataset of tens of labeled discharges, which may be costly to build. We investigate the ability of current machine learning approaches to detect the confinement regime and ELMs with the smallest possible delay after the latest measurement. We also demonstrate that including unlabeled data into the training process can improve the results in a situation where only a limited set of reliable labels is available. All training and validation is performed on data from the COMPASS tokamak. The InceptionTime architecture trained using a semi-supervised approach was found to be the most accurate method based on the set of tested variants. It is able to achieve good overall accuracy of the regime classification at the time instant of 100 mu s delayed behind the latest data record. We also evaluate the capability of the model to correctly predict class transitions. While ELM occurrence can be detected with a tolerance smaller than 50 mu s, detection of the confinement regime transition is more demanding and it was successful with 2 ms tolerance. Sensitivity studies to different values of model parameters are provided. We believe that the achieved accuracy is acceptable in practice and the method could be used in real-time operation.
    PracovištěÚstav fyziky plazmatu
    KontaktVladimíra Kebza, kebza@ipp.cas.cz, Tel.: 266 052 975
    Rok sběru2023
    Elektronická adresahttps://iopscience.iop.org/article/10.1088/1361-6587/ac9926
Počet záznamů: 1  

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