Draft:Goat Optimization Algorithm
Submission declined on 5 April 2025 by Pythoncoder (talk).
Where to get help
How to improve a draft
You can also browse Wikipedia:Featured articles and Wikipedia:Good articles to find examples of Wikipedia's best writing on topics similar to your proposed article. Improving your odds of a speedy review To improve your odds of a faster review, tag your draft with relevant WikiProject tags using the button below. This will let reviewers know a new draft has been submitted in their area of interest. For instance, if you wrote about a female astronomer, you would want to add the Biography, Astronomy, and Women scientists tags. Editor resources
| ![]() |
- Goat Optimization Algorithm
The **Goat Optimization Algorithm (GOA)** is a bio-inspired metaheuristic algorithm proposed in 2025. It mimics the natural climbing behavior and problem-solving intelligence of mountain goats to solve complex global optimization problems. GOA is part of a growing family of nature-inspired optimization methods designed to find near-optimal solutions in high-dimensional and nonlinear search spaces.
- Overview
GOA models the ability of goats to explore steep and rugged terrains while avoiding local traps and dynamically adapting to changes in the environment. The algorithm alternates between **exploration** and **exploitation** phases using mathematical modeling of goat behavior, such as random jumps, terrain sensing, and leader-following mechanisms.
The algorithm is particularly suitable for continuous optimization tasks and has been applied in engineering, machine learning, and operations research.
- Key Features
- Bio-inspired from real-world goat behavior - Adaptive movement patterns - Balance between exploration and exploitation - Suitable for high-dimensional search spaces
- Applications
GOA has been applied in:
- Engineering design optimization - Benchmark functions in global optimization - Machine learning parameter tuning - Resource allocation problems
- Related Algorithms
- Particle Swarm Optimization (PSO) - Grey Wolf Optimizer (GWO) - Whale Optimization Algorithm (WOA) - Greedy Man Optimization Algorithm (GMOA)
- References
1. Nozari, H., Abdi, H., Schmeltzer-Jarosch, A. (2025). *Goat Optimization Algorithm: A Novel Bio-Inspired Metaheuristic for Global Optimization*. **Applied Innovations in Industrial Management (AIIM)**. [1](https://www.iscihub.com/index.php/AIIM/article/view/37)
2. *Goat Optimization Algorithm*. The Science Archive. (2025). [2](https://thesciencearchive.org/2503-02331v1/)
3. Goat Optimization Algorithm – arXiv preprint. [3](https://doi.org/10.48550/arXiv.2503.02331)
4. GOA Code Repository. MathWorks. [4](https://www.mathworks.com/matlabcentral/fileexchange/180278-goat-optimization-algorithm-goa)
- External links
- [ResearchGate publication](https://www.researchgate.net/publication/389495030_Goat_Optimization_Algorithm_A_Novel_Bio-Inspired_Metaheuristic_for_Global_Optimization) - [Academia.edu version](https://www.academia.edu/127960384/Goat_Optimization_Algorithm_A_Novel_Bio_Inspired_Metaheuristic_for_Global_Optimization)
- See also
- Metaheuristic algorithms - Swarm intelligence - Evolutionary computation
- Promotional tone, editorializing and other words to watch
- Vague, generic, and speculative statements extrapolated from similar subjects
- Essay-like writing
- Hallucinations (plausible-sounding, but false information) and non-existent references
- Close paraphrasing
Please address these issues. The best way to do it is usually to read reliable sources and summarize them, instead of using a large language model. See our help page on large language models.