Raman Effect-Inspired Optimization Algorithm (REO)

complex objective function is tested
10 download
Aggiornato 11 nov 2024

Visualizza la licenza

Explanation of the Code:
  1. Initialization:
  • The algorithm initializes numPhotons potential solutions randomly within the defined bounds.
  • It evaluates the initial fitness of all solutions and identifies the best one.
  1. Scattering Events:
  • For each photon (solution), the algorithm performs a scattering event:
  • Stokes Shift (Exploration): A random, larger perturbation to explore new areas.
  • Anti-Stokes Shift (Exploitation): A smaller perturbation to refine and improve the solution locally.
  • The rand < 0.5 probability ensures a 50-50 chance between exploration and exploitation.
  1. Fitness Evaluation and Update:
  • If a newly generated solution improves the fitness, it replaces the current solution.
  • The global best solution is updated accordingly if the new solution outperforms the previous best.
  1. History and Visualization:
  • The history array records the best fitness value at each iteration for convergence analysis.
  • The final plot shows how the best fitness value evolves over the iterations.
Customization:
  • Objective Function: You can replace the example objFunction with your specific function.
  • Algorithm Parameters: Adjust numPhotons, maxIterations, lowerBound, and upperBound based on your problem's requirements.
  • Exploration and Exploitation: Modify the shiftFactor parameters to fine-tune the balance between exploration and exploitation.
Compatibilità della release di MATLAB
Creato con R2022b
Compatibile con qualsiasi release
Compatibilità della piattaforma
Windows macOS Linux

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!
Versione Pubblicato Note della release
1.0.0