Publication detail

Hot Off the Press: Soft computing methods in the solution of an inverse heat transfer problem with phase change

MAUDER, T. KŮDELA, J. KLIMEŠ, L. ZÁLEŠÁK, M. CHARVÁT, P.

English title

Hot Off the Press: Soft computing methods in the solution of an inverse heat transfer problem with phase change

Type

conference paper

Language

en

Original abstract

This Hot Off the Press paper summarizes our recent work “Soft computing methods in the solution of an inverse heat transfer problem with phase change: A comparative study” published in Engineering Applications of Artificial Intelligence [5]. In the paper, we study inverse heat transfer problems with phase change, where the boundary heat flux is estimated. Such problems are ill-posed and their solution is challenging. Although there were conventional developed for this problem in the past, they are not well-suited for cases including phase change, as these contain strong nonlinearities that bring additional computational difficulties. For such problems, soft computing methods provide a promising approach. Four methods from distinct categories of techniques are applied to this problem and thoroughly compared – the conventional gradientbased method, a fuzzy logic-based method, a population-based meta-heuristic, and a surrogate-assisted method. A reformulation of the problem utilizing dimension reduction and decomposition schemes was developed, bringing extensive computational improvements. The metaheuristic and the surrogate-based methods showed superior performance. Their performance was also rather stable and insensitive to the location of the temperature sensor (the source of data for the inverse estimation). A Zenodo repository with the complete implementation of all considered problems and methods is available

English abstract

This Hot Off the Press paper summarizes our recent work “Soft computing methods in the solution of an inverse heat transfer problem with phase change: A comparative study” published in Engineering Applications of Artificial Intelligence [5]. In the paper, we study inverse heat transfer problems with phase change, where the boundary heat flux is estimated. Such problems are ill-posed and their solution is challenging. Although there were conventional developed for this problem in the past, they are not well-suited for cases including phase change, as these contain strong nonlinearities that bring additional computational difficulties. For such problems, soft computing methods provide a promising approach. Four methods from distinct categories of techniques are applied to this problem and thoroughly compared – the conventional gradientbased method, a fuzzy logic-based method, a population-based meta-heuristic, and a surrogate-assisted method. A reformulation of the problem utilizing dimension reduction and decomposition schemes was developed, bringing extensive computational improvements. The metaheuristic and the surrogate-based methods showed superior performance. Their performance was also rather stable and insensitive to the location of the temperature sensor (the source of data for the inverse estimation). A Zenodo repository with the complete implementation of all considered problems and methods is available

Keywords in English

Inverse heat transfer; Soft computing; Machine learning; Metaheuristics; Surrogate model; Fuzzy logic

Released

01.08.2024

Publisher

Association for Computing Machinery, Inc

ISBN

979-8-4007-0495-6

Book

2024 Genetic and Evolutionary Computation Conference Companion

Pages from–to

47–48

Pages count

2

BIBTEX


@inproceedings{BUT196897,
  author="Tomáš {Mauder} and Jakub {Kůdela} and Lubomír {Klimeš} and Martin {Zálešák} and Pavel {Charvát},
  title="Hot Off the Press: Soft computing methods in the solution of an inverse heat transfer problem with phase change",
  booktitle="2024 Genetic and Evolutionary Computation Conference Companion",
  year="2024",
  month="August",
  pages="47--48",
  publisher="Association for Computing Machinery, Inc",
  isbn="979-8-4007-0495-6"
}