Sat, Nov 30, 2024
[
Archive
]
Remember me
Create Account
Reset Password
Home
About
Introduction
Aims and Scopes
Editorial Board
Journal Ethics
For Reviewer
Reviewer Zone
Consultation for reviewers
Quick Help for Reviewers
Review Instruction in Persian
For Authors
Notes for Contributors
Publishing Ethics
Copyright Information
Paper Instruction
Registration
Article submission
All Volumes & Issues
Latest Issue
Forthcoming
All Issues
Contact us
Facilities
Search
Tops
Volume 11, Issue 2 (5-2021)
IJOCE 2021, 11(2): 291-327
|
Back to browse issues page
Download citation:
BibTeX
|
RIS
|
EndNote
|
Medlars
|
ProCite
|
Reference Manager
|
RefWorks
Send citation to:
Mendeley
Zotero
RefWorks
Sarjamei S, Massoudi M S, Esfandi Sarafraz M. GOLD RUSH OPTIMIZATION ALGORITHM. IJOCE 2021; 11 (2) :291-327
URL:
http://ijoce.iust.ac.ir/article-1-476-en.html
GOLD RUSH OPTIMIZATION ALGORITHM
S. Sarjamei
,
M. S. Massoudi
*
,
M. Esfandi Sarafraz
Abstract:
(9145 Views)
This article presents a new meta-heuristic optimization algorithm based on the power of human thinking and decision-making, which will be called Gold Rush Optimization (GRO). The thinking and decision-making ability of humans were used in this paper to develop a approach to create an optimization method. The hypothetical interaction between human operators in search of gold, based on the sound volume received from metal detectors,
was used to develop the method. Benchmark functions, engineering design examples, and truss structures (which were optimized using different algorithms previously) were used for validation and verification of the proposed algorithm. MATLAB was used for programming. The CEC 2005 benchmark functions obtained reached the global target minimum, and the numerical engineering and truss examples were improved compared to the previous algorithms. Therefore, the proposed algorithm can be used as an alternative for the previously developed meta-heuristic optimization algorithms, which can be used in all optimization fields
.
Keywords:
Gold Rush algorithm
,
meta-heuristic optimal design
,
constrained optimization
,
human inspiration
,
GRO
Full-Text
[PDF 1277 kb]
(3834 Downloads)
Type of Study:
Research
| Subject:
Optimal design
Received: 2021/06/19 | Accepted: 2021/05/30 | Published: 2021/05/30
Add your comments about this article : Your username or Email:
Rights and permissions
This work is licensed under a
Creative Commons Attribution-NonCommercial 4.0 International License
.