A general multi-objective Bayesian optimization framework for the design of hybrid schemes towards adaptive complex flow simulations

Yiqi Feng, Josef Winter, Nikolaus A. Adams, Felix S. Schranner

Research output: Contribution to journalArticlepeer-review

Abstract

Achieving accuracy with underresolved simulation of complex compressible flows with multiscale flow structures is a challenge. Either the numerical dissipation or the resolution and thereby the numerical cost is impractically high. Also, in the design of numerical solvers, the application of a solver for specific flow classes is balanced by robustness allowing the study of a broad range of flows. In this study, we propose a hybrid fifth-order targeted essentially non-oscillatory (TENO5)-based scheme tailored to optimally simulate compressible flows with underresolved dilatational and vortical multiscale structures. For optimal design, three data-driven objectives are defined. A novel objective that derives from the numerical dissipation rate analysis is a key element to deal with underresolved complex flows in practical applications. The optimization process employs a multi-objective Bayesian optimization framework with an expected hypervolume improvement and three flow configurations representative for a broad range of two- and three-dimensional flows with genuine and non-genuine subgrid scales.

Original languageEnglish
Article number113088
JournalJournal of Computational Physics
Volume510
DOIs
StatePublished - 1 Aug 2024

Keywords

  • Complex flow simulations
  • Dispersion-dissipation relation
  • Hybrid scheme
  • Implicit large eddy simulation
  • Multi-objective Bayesian optimization

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