Detail publikačního výsledku

On the Effectiveness of Optimisation Algorithms for Hydrodynamic Lubrication Problems

KOCMAN, F.; NOVOTNÝ, P.

Originální název

On the Effectiveness of Optimisation Algorithms for Hydrodynamic Lubrication Problems

Anglický název

On the Effectiveness of Optimisation Algorithms for Hydrodynamic Lubrication Problems

Druh

Článek WoS

Originální abstrakt

In many applications, it is necessary to optimise the performance of hydrodynamic (HD) bearings. Many studies have proposed different strategies, but there remains a lack of conclusive research on the suitability of various optimisation methods. This study evaluates the most commonly used algorithms, including the genetic (GA), particle swarm (PSWM), pattern search (PSCH) and surrogate (SURG) algorithms. The effectiveness of each algorithm in finding the global minimum is analysed, with attention to the parameter settings of each algorithm. The algorithms are assessed on HD journal and thrust bearings, using analytical and numerical solutions for friction moment, bearing load-carrying capacity and outlet lubricant flow rate under multiple operating conditions. The results indicate that the PSCH algorithm was the most efficient in all cases, excelling in both finding the global minimum and speed. While the PSWM algorithm also reliably found the global minimum, it exhibited lower speed in the defined problems. In contrast, genetic algorithms and the surrogate algorithm demonstrated significantly lower efficiency in the tested problems. Although the PSCH algorithm proved to be the most efficient, the PSWM algorithm is recommended as the best default choice due to its ease of use and minimal sensitivity to parameter settings.

Anglický abstrakt

In many applications, it is necessary to optimise the performance of hydrodynamic (HD) bearings. Many studies have proposed different strategies, but there remains a lack of conclusive research on the suitability of various optimisation methods. This study evaluates the most commonly used algorithms, including the genetic (GA), particle swarm (PSWM), pattern search (PSCH) and surrogate (SURG) algorithms. The effectiveness of each algorithm in finding the global minimum is analysed, with attention to the parameter settings of each algorithm. The algorithms are assessed on HD journal and thrust bearings, using analytical and numerical solutions for friction moment, bearing load-carrying capacity and outlet lubricant flow rate under multiple operating conditions. The results indicate that the PSCH algorithm was the most efficient in all cases, excelling in both finding the global minimum and speed. While the PSWM algorithm also reliably found the global minimum, it exhibited lower speed in the defined problems. In contrast, genetic algorithms and the surrogate algorithm demonstrated significantly lower efficiency in the tested problems. Although the PSCH algorithm proved to be the most efficient, the PSWM algorithm is recommended as the best default choice due to its ease of use and minimal sensitivity to parameter settings.

Klíčová slova

journal bearing; thrust bearing; hydrodynamic lubrication; particle swarm algorithm; pattern search; surrogate algorithm; genetic algorithm

Klíčová slova v angličtině

journal bearing; thrust bearing; hydrodynamic lubrication; particle swarm algorithm; pattern search; surrogate algorithm; genetic algorithm

Autoři

KOCMAN, F.; NOVOTNÝ, P.

Vydáno

08.05.2025

Nakladatel

MDPI

Místo

BASEL

ISSN

2075-4442

Periodikum

Lubricants

Svazek

13

Číslo

5

Stát

Švýcarská konfederace

Strany od

1

Strany do

32

Strany počet

32

URL

Plný text v Digitální knihovně

BibTex

@article{BUT198031,
  author="František {Kocman} and Pavel {Novotný}",
  title="On the Effectiveness of Optimisation Algorithms for Hydrodynamic Lubrication Problems",
  journal="Lubricants",
  year="2025",
  volume="13",
  number="5",
  pages="1--32",
  doi="10.3390/lubricants13050207",
  url="https://www.mdpi.com/2075-4442/13/5/207"
}

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