Jason Healing Optimization (JHO) Algorithm

sphere function is used.
11 téléchargements
Mise à jour 11 nov. 2024

Afficher la licence

Jason Healing Optimization (JHO) AlgorithmConcept:
The JHO Algorithm emphasizes the idea of healing or improving solutions that are not performing well, similar to how a healer restores health. The approach uses a balance of exploration and a targeted healing process to optimize the objective function.
Key Features:
  1. Healing Mechanism:
  • Poorly performing solutions (those with high objective function values) are "healed" using a targeted improvement strategy. This healing can involve refining or adjusting these solutions to improve their performance.
  1. Exploration and Exploitation:
  • The algorithm includes an exploration phase to discover new areas in the search space and an exploitation phase where the healing process refines existing solutions.
  1. Golden Guidance:
  • The algorithm uses a "Golden Healer" (the best solution found so far) to guide the healing process. This guidance helps ensure that the search converges toward optimal regions efficiently.
Algorithm Flow:
  1. Initialization: Generate an initial population of solutions randomly within the search space. Evaluate their fitness values using the objective function.
  2. Healing Phase:
  • Identify poorly performing solutions.
  • Apply the healing mechanism to improve these solutions by moving them closer to better-performing regions or using small perturbations to enhance their fitness.
  1. Exploration Phase:
  • Introduce new solutions into the search space to maintain diversity and avoid local optima.
  1. Golden Guidance: Use the Golden Healer (best solution) to influence both the healing and exploration processes.
  2. Update and Repeat: If a healed or newly explored solution performs better than the Golden Healer, update the Golden Healer. Repeat the process until a stopping criterion is met.
  3. Termination: The algorithm stops after a set number of iterations or when no significant improvement is observed.
Compatibilité avec les versions de MATLAB
Créé avec R2024b
Compatible avec toutes les versions
Plateformes compatibles
Windows macOS Linux

Community Treasure Hunt

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

Start Hunting!
Version Publié le Notes de version
1.0.0