ALL libraries (COBIB.SI union bibliographic/catalogue database)
  • Blood-sucking leech optimizer
    Bai, Jianfu ...
    In this paper, a new meta-heuristic optimization algorithm motivated by the foraging behaviour of blood-sucking leeches in rice fields is presented, named Blood-Sucking Leech Optimizer (BSLO). BSLO ... is modelled by five hunting strategies, which are the exploration of directional leeches, exploitation of directional leeches, switching mechanism of directional leeches, search strategy of directionless leeches, and re-tracking strategy. BSLO and ten comparative meta-heuristic optimization algorithms are used for optimizing twenty-three classical benchmark functions, CEC 2017, and CEC 2019. The strong robustness and optimization efficiency of BSLO are confirmed via four qualitative analyses, two statistical tests and convergence curves. Furthermore, the superiority of BSLO for real-world problems under constraints is demonstrated using five classical engineering problems. Finally, a BSLO-based Artificial Neural Network (ANN) predictive model for diameter prediction of melt electrospinning writing fibre is proposed, which further verifies BSLO’s applicability for real-world problems. Therefore, BSLO is a potential optimizer for optimizing various problems. Source codes of BSLO are publicly available
    Source: Advances in engineering software. - ISSN 0965-9978 (Vol. 195, Art. 103696, 2024, 33 str.)
    Type of material - article, component part
    Publish date - 2024
    Language - english
    COBISS.SI-ID - 199092739
    DOI

source: Advances in engineering software. - ISSN 0965-9978 (Vol. 195, Art. 103696, 2024, 33 str.)
loading ...
loading ...
loading ...