Global Artificial Joint optimization Algorithm(GAJOA)
Version 1.0.0 (1.85 KB) by
praveen kumar
sphere function is used
General Concept for GAJA:
- Global: The algorithm explores the entire solution space (global search).
- Artificial Joint: The algorithm may be inspired by how different parts of a system (particles, solutions, or components) interact through a joint mechanism (links between solutions).
- Evolution: Like other optimization algorithms, GAJA could involve iterative updates based on interaction rules between different solutions, aiming to converge to an optimal solution.
Possible Characteristics of GAJA:
- Joint Mechanism: Solutions in the search space interact based on a defined mechanism (such as physical joints, spring-like forces, or connected agents).
- Movement and Flexibility: The particles or agents could adjust their positions dynamically, seeking optimality through exploration and exploitation.
- Global Search and Adaptation: GAJA would combine global search techniques (wide exploration) with local search (fine-tuning) to ensure both diversity and convergence toward the optimal solution.
Given this conceptualization, let's assume GAJA works similarly to evolutionary or swarm-based algorithms but introduces "joint" interaction between solutions. Here’s a basic structure and possible MATLAB implementation for a GAJA Optimization Algorithm.
MATLAB Release Compatibility
Created with
R2024b
Compatible with any release
Platform Compatibility
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gaja
| Version | Published | Release Notes | |
|---|---|---|---|
| 1.0.0 |
