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tLOSS: a collaborative machine learning platform for predicting AC losses in HTS devices

Vieira, Miguel; Rosas, João; João, Murta-Pina ; Oliveira, Roberto de ORCID iD icon 1; Pronto, Anabela; Simas, Henrique; Ardestani, Masoud
1 Institut für Technische Physik (ITEP), Karlsruher Institut für Technologie (KIT)

Abstract:

This work describes an open access platform for collaborative data-driven modelling of AC losses in high-temperature superconducting (HTS) devices, as opposed to computationally intensive, time-consuming numerical methods. The platform is being developed in the frame of the Portuguese project tLOSS. HTS devices are usually modelled and simulated by the Finite Element Method (FEM), due to its accuracy and ability to address multiphysics problems. Yet, the non-linearity of HTS properties or huge width-to- thickness ratios, makes FEM extremely computationally intensive, leading to unreasonable processing times in the optimization of devices, when, e.g., thousands of configurations need to be simulated and assessed. This is still a major impediment to HTS technologies dissemination. There is an opportunity for the development of data-driven based approaches, from the field of Artificial Intelligence (AI), for modelling and simulating the behaviour of HTS devices. Data-driven approaches use data (from experiments and/or simulation) to learn patterns in it. The built computational models can be used for obtaining predictions of distinct conditions instantly. ... mehr


Zugehörige Institution(en) am KIT Institut für Technische Physik (ITEP)
Publikationstyp Poster
Publikationsmonat/-jahr 06.2022
Sprache Englisch
Identifikator KITopen-ID: 1000192327
HGF-Programm 38.05.03 (POF IV, LK 01) High Temperature Superconductivity
Weitere HGF-Programme 38.05.03 (POF IV, LK 01) High Temperature Superconductivity
Veranstaltung 8th International Workshop on Numerical Modeling of High Temperature Superconductors (HTS Modelling 2022), Nancy, Frankreich, 14.06.2022 – 16.06.2022
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