H-o Formulation in Sparselizard Combined with Domain Decomposition Methods for Modeling Superconducting Tapes, Stacks, and Twisted Wires
Riva, N.; Halbach, A.; Lyly, M.; Messe, C.; Ruuskanen, J.; Lahtinen, V. (2023-08)
Riva, N.
Halbach, A.
Lyly, M.
Messe, C.
Ruuskanen, J.
Lahtinen, V.
08 / 2023
4900405
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Julkaisun pysyvä osoite on
https://urn.fi/URN:NBN:fi:tuni-202305226000
https://urn.fi/URN:NBN:fi:tuni-202305226000
Kuvaus
Peer reviewed
Tiivistelmä
The growing interest in the modeling of superconductors has led to the development of effective numerical methods and software. One of the most utilized approaches for magnetoquasistatic simulations in applied superconductivity is the H formulation. However, due to the large number of degrees of freedom (DOFs) present when modeling large and complex systems (e.g. large coils for fusion applications, electrical machines, and medical applications) using the standard H formulation on a desktop machine becomes infeasible. The H formulation solves the Faraday's law formulated in terms of the magnetic field intensity \mathbf {H} using edge elements in the whole modeling domain. For this reason, a very high resistivity is assumed for the non-conducting domains, leading to an ill-conditioned system matrix and therefore long computation times. In contrast, the H-\phi formulation uses the H formulation in the conducting region, and the \phi formulation (magnetic scalar potential) in the surrounding non-conducting domains, drastically reducing DOFs and computation time. In this work, we use the H-\phi formulation in 2D for the magnetothermal (AC losses and quench) analysis of stacks of REBCO tapes. The same approach is extended to a 3D case for the AC loss analysis of a twisted superconducting wire. All the results obtained by simulations in Sparselizard are compared with results obtained with COMSOL. Our custom tool allows us to distribute the simulations over hundreds of CPUs using domain decomposition methods, considerably reducing the simulation times without compromising accuracy.
Kokoelmat
- TUNICRIS-julkaisut [18237]