Cuckoo optimization algorithm via Grey wolf optimizer

Version 1.0.0 (4.67 KB) by Pavel
• COGWO blends cuckoo eggs+migration with wolf moves. • It clusters, spawns variants then refines. • It clamps bounds, caps size, logs best.
45 Downloads
Updated 6 Sep 2025

View License

  • COA exploration: Each agent lays eggs within a local radius tied to search-range and egg share; new eggs are sampled around parents, the worst fraction is discarded, and the population is trimmed back to a fixed size.
  • COA migration: The population is clustered into habitats; a focal habitat is chosen by average fitness, and all agents move a controlled step toward its best member with a small random directional deviation.
  • GWO exploitation: Inside each habitat, three leaders (alpha, beta, delta) guide the rest; agents update their positions toward the leaders using time-decreasing influence to intensify search near promising areas.
  • Hybrid loop & constraints: Each iteration evaluates fitness, clusters, migrates, lays eggs and culls, merges and truncates, then applies the GWO update—while positions are clamped to the variable bounds.
  • Convergence tracking: The global best-so-far (strongest alpha across habitats) is updated after the full iteration and logged to produce a monotone convergence curve for minimization.

Cite As

Pavel (2026). Cuckoo optimization algorithm via Grey wolf optimizer (https://se.mathworks.com/matlabcentral/fileexchange/181972-cuckoo-optimization-algorithm-via-grey-wolf-optimizer), MATLAB Central File Exchange. Retrieved .

MATLAB Release Compatibility
Created with R2025a
Compatible with any release
Platform Compatibility
Windows macOS Linux
Version Published Release Notes
1.0.0