Active learning methodologies for surrogate model development in CFD applications

ORAL

Abstract

Computational fluid dynamic simulations typically have high computational costs, such that for parametric analysis and engineering design an inexpensive surrogate model, which is capable of reproducing the trends of some variables of interest, may be desired. However, generating regressions based on a full grid-based parametric variation is generally infeasible even for a system with moderate number of parameters. In this work, a wide array of active learning techniques were coupled with different regression models to achieve high predictive performance under the constraints of a limited function evaluation budget. The case studies involve flows of industrial relevance and the results outline some best practices for such simulations and highlights future research directions.

*CNPq funding for GG, and PETRONAS/Royal Academy of Engineering Research Chair for OKM is gratefully acknowledged.

Authors

  • Indranil Pan

    • Imperial College London
  • Gabriel Goncalves

    • Imperial College London
  • Assen Batchvarov

    • Imperial College London
  • Yuxin Liu

    • Imperial College London
  • Yuyi Liu

    • Imperial College London
  • Vikneswaran Sathasivam

    • Imperial College London
  • Nicholas Yiakoumi

    • Imperial College London
  • Lachlan Mason

    • Alan Turing Institute
    • Alan Turing Institute, UK
  • Omar Matar

    • Imperial College London
    • Department of Chemical Engineering, Imperial College London