FATA: An Efficient Optimization Method Based on Geophysics
Version 1.0.2 (3,14 MB) von
Ali Asghar Heidari
A novel efficient optimization method based on geophysics is proposed called the fata morgana algorithm (FATA).
An efficient swarm intelligence algorithm is proposed to solve continuous multi-type optimization problems, named the fata morgana algorithm (FATA). By mimicking the process of mirage formation, FATA designs the mirage light filtering principle (MLF) and the light propagation strategy (LPS), respectively. The MLF strategy, combined with the definite integration principle, drives the algorithmic population to enhance FATA’s exploration capability. The LPS strategy, combined with the trigonometric principle, drives the algorithmic individual to improve the algorithm's convergence speed and exploitation capability. These two search strategies can better use FATA’s population and individual search capabilities. The FATA is compared with a broad array of competitive optimizers on 23 benchmark functions and IEEE CEC 2014 to verify the optimization capability. This work is designed separately for qualitative analysis, exploration and exploitation competence analysis, the analysis of avoiding locally optimal solutions, and comprehensive comparison experiments. The experimental results demonstrate the comprehensiveness and competitiveness of FATA for solving multi-type functions. Meanwhile, FATA is applied to three practical engineering optimization problems to evaluate its performance. Then, the algorithm obtains better results than its counterparts in engineering problems. According to the results, FATA has excellent potential to be used as an efficient computer-aided tool for dealing with practical optimization tasks.
Zitieren als
Qi, Ailiang, et al. “FATA: An Efficient Optimization Method Based on Geophysics.” Neurocomputing, Elsevier BV, Aug. 2024, p. 128289, doi:10.1016/j.neucom.2024.128289.
Kompatibilität der MATLAB-Version
Erstellt mit
R2024a
Kompatibel mit allen Versionen
Plattform-Kompatibilität
Windows macOS LinuxTags
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!Live Editor erkunden
Erstellen Sie Skripte mit Code, Ausgabe und formatiertem Text in einem einzigen ausführbaren Dokument.
Artemisinin Optimizer (AO)-2024
Educational Competition Optimizer (ECO)-2024
Fata Morgana Algorithm (FATA)-2024
Harris Hawk Optimization (HHO)-2019
Hunger Games Search (HGS)-2021
Moss Growth Optimization (MGO)-2024
Parrot Optimizer (PO)-2024
Polar Lights Optimizer (PLO)-2024
Rime Optimization Algorithm (RIME)-2023/RIME Iteration version
Rime Optimization Algorithm (RIME)-2023/RIME function evaluation version
Runge Kutta Optimization (RUN)-2021
Slime mould algorithm (SMA)-2020
Weighted Mean of Vectors (INFO)-2022
Version | Veröffentlicht | Versionshinweise | |
---|---|---|---|
1.0.2 | 2024 |
||
1.0.1 | . |
||
1.0.0 |