A Modified Sine Cosine Algorithm Based on A Novel Locally Weighted Method for Global Optimization Problems

The sine cosine algorithm (SCA), a recently discovered population-based optimization technique, is used to resolve optimization issues. In this research, the study proposes employing the LWSCA (Locally Weighted Sine Cosine Algorithm) as a hybrid approach to enhance the performance of the original SC...

Full description

Saved in:
Bibliographic Details
Main Authors: Shahad Mohammed, Nazar Hussein, Mohammed Alkahya
Format: Article
Language:English
Published: Mosul University 2024-06-01
Series:Al-Rafidain Journal of Computer Sciences and Mathematics
Subjects:
Online Access:https://csmj.mosuljournals.com/article_183916_40096de1ad6533f499bc388ddaf62811.pdf
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849406040247894016
author Shahad Mohammed
Nazar Hussein
Mohammed Alkahya
author_facet Shahad Mohammed
Nazar Hussein
Mohammed Alkahya
author_sort Shahad Mohammed
collection DOAJ
description The sine cosine algorithm (SCA), a recently discovered population-based optimization technique, is used to resolve optimization issues. In this research, the study proposes employing the LWSCA (Locally Weighted Sine Cosine Algorithm) as a hybrid approach to enhance the performance of the original SCA (Sine Cosine Algorithm) and mitigate its limitations. These limitations encompass restricted resolution, slow convergence rates, and difficulties in achieving global optimization when dealing with complex, multi-dimensional spaces. The fundamental idea underlying LWSCA is to incorporate the SCA algorithm with the locally weighted (LW) technique and mutation diagram. The hybridization process has two stages: An algorithm is initially changed by altering the fundamental equations to ensure greater effectiveness and accuracy. The second point is that when the LW local approach is used to create a new dependent site, it increases the randomness during the search process. This, in turn, raises the population variance of the optimizer being proposed, ultimately enhancing the overall effectiveness of the global search. The putative method's hybrid architecture is anticipated to significantly increase the potential for exploration and exploitation. By evaluating SCA's performance against IEEE CEC 2017 functions and contrasting it with a variety of different metaheuristic techniques, the usefulness of SCA is investigated. According to the experimental data gathered, the LWSCA's convergence, exploration, and exploitation tendencies have all greatly improved. According to the results, the suggested LWSCA method is a good one that performs better than SCA and other rival algorithms in most functions.
format Article
id doaj-art-4ef7fd224ed6448fb5a9fddf6dd2f38c
institution Kabale University
issn 1815-4816
2311-7990
language English
publishDate 2024-06-01
publisher Mosul University
record_format Article
series Al-Rafidain Journal of Computer Sciences and Mathematics
spelling doaj-art-4ef7fd224ed6448fb5a9fddf6dd2f38c2025-08-20T03:36:31ZengMosul UniversityAl-Rafidain Journal of Computer Sciences and Mathematics1815-48162311-79902024-06-01181102110.33899/csmj.2023.142253.1080183916A Modified Sine Cosine Algorithm Based on A Novel Locally Weighted Method for Global Optimization ProblemsShahad Mohammed0Nazar Hussein1Mohammed Alkahya2Tikrit University, College of Computer Sciences and mathematics, Department of MathematicsCollege of Computer science and mathematics- University of TikritUniversity of Mosul, College of Education for Pure SciencesThe sine cosine algorithm (SCA), a recently discovered population-based optimization technique, is used to resolve optimization issues. In this research, the study proposes employing the LWSCA (Locally Weighted Sine Cosine Algorithm) as a hybrid approach to enhance the performance of the original SCA (Sine Cosine Algorithm) and mitigate its limitations. These limitations encompass restricted resolution, slow convergence rates, and difficulties in achieving global optimization when dealing with complex, multi-dimensional spaces. The fundamental idea underlying LWSCA is to incorporate the SCA algorithm with the locally weighted (LW) technique and mutation diagram. The hybridization process has two stages: An algorithm is initially changed by altering the fundamental equations to ensure greater effectiveness and accuracy. The second point is that when the LW local approach is used to create a new dependent site, it increases the randomness during the search process. This, in turn, raises the population variance of the optimizer being proposed, ultimately enhancing the overall effectiveness of the global search. The putative method's hybrid architecture is anticipated to significantly increase the potential for exploration and exploitation. By evaluating SCA's performance against IEEE CEC 2017 functions and contrasting it with a variety of different metaheuristic techniques, the usefulness of SCA is investigated. According to the experimental data gathered, the LWSCA's convergence, exploration, and exploitation tendencies have all greatly improved. According to the results, the suggested LWSCA method is a good one that performs better than SCA and other rival algorithms in most functions.https://csmj.mosuljournals.com/article_183916_40096de1ad6533f499bc388ddaf62811.pdfsine cosine optimizerlocally weightglobal solutions
spellingShingle Shahad Mohammed
Nazar Hussein
Mohammed Alkahya
A Modified Sine Cosine Algorithm Based on A Novel Locally Weighted Method for Global Optimization Problems
Al-Rafidain Journal of Computer Sciences and Mathematics
sine cosine optimizer
locally weight
global solutions
title A Modified Sine Cosine Algorithm Based on A Novel Locally Weighted Method for Global Optimization Problems
title_full A Modified Sine Cosine Algorithm Based on A Novel Locally Weighted Method for Global Optimization Problems
title_fullStr A Modified Sine Cosine Algorithm Based on A Novel Locally Weighted Method for Global Optimization Problems
title_full_unstemmed A Modified Sine Cosine Algorithm Based on A Novel Locally Weighted Method for Global Optimization Problems
title_short A Modified Sine Cosine Algorithm Based on A Novel Locally Weighted Method for Global Optimization Problems
title_sort modified sine cosine algorithm based on a novel locally weighted method for global optimization problems
topic sine cosine optimizer
locally weight
global solutions
url https://csmj.mosuljournals.com/article_183916_40096de1ad6533f499bc388ddaf62811.pdf
work_keys_str_mv AT shahadmohammed amodifiedsinecosinealgorithmbasedonanovellocallyweightedmethodforglobaloptimizationproblems
AT nazarhussein amodifiedsinecosinealgorithmbasedonanovellocallyweightedmethodforglobaloptimizationproblems
AT mohammedalkahya amodifiedsinecosinealgorithmbasedonanovellocallyweightedmethodforglobaloptimizationproblems
AT shahadmohammed modifiedsinecosinealgorithmbasedonanovellocallyweightedmethodforglobaloptimizationproblems
AT nazarhussein modifiedsinecosinealgorithmbasedonanovellocallyweightedmethodforglobaloptimizationproblems
AT mohammedalkahya modifiedsinecosinealgorithmbasedonanovellocallyweightedmethodforglobaloptimizationproblems