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Title:

A deep reinforcement learning framework for dynamic optimization of numerical schemes for compressible flow simulations

Document type:
Zeitschriftenaufsatz
Author(s):
Feng, Yiqi; Schranner, Felix S.; Winter, Josef; Adams, Nikolaus A.
Abstract:
Marginal or under-resolved simulations of compressible flow configurations that often occur in practical applications classically are enabled by administering sufficient numerical dissipation to keep the simulation stable. Such measures, however, often are physically inconsistent due to non-selectively altering of dynamics across scales. Sustaining physically consistent large scale dynamics requires the numerical solution to effectively model non-resolved small scale dynamics. In this work, we p...     »
Keywords:
Adaptive numerical scheme optimization; Compressible flow simulation; Deep reinforcement learning; Dispersion-dissipation relation
Dewey Decimal Classification:
620 Ingenieurwissenschaften
Journal title:
Journal of Computational Physics
Year:
2023
Journal volume:
493
Pages contribution:
112436
Covered by:
Scopus
Language:
en
Fulltext / DOI:
doi:10.1016/j.jcp.2023.112436
Publisher:
Elsevier BV
E-ISSN:
0021-9991
Notes:
Funding text The first author acknowledges financial support from the China Scholarship Council (No. 201906060144 )
Submitted:
08.05.2023
Accepted:
13.08.2023
Date of publication:
01.11.2023
TUM Institution:
Lehrstuhl für Aerodynamik und Strömungsmechanik
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