Improved sine cosine algorithm for optimization problems based on self-adaptive weight and social strategy

Author:

chun Ye1,hua Xu2

Affiliation:

1. Jiangsu vocational college of information technology

2. Jiangnan University

Abstract

Abstract The Sine Cosine Algorithm (SCA) is a well-known optimization technique that utilizes sine and cosine functions to identify optimal solutions. Despite its popularity, the SCA has limitations in terms of low diversity, stagnation in local optima, and difficulty in achieving global optimization, particularly in complex large-scale problems. In response, we propose a novel approach named the Improved Weight and Strategy Sine Cosine Algorithm (IWSCA). The IWSCA achieves this by introducing novel self-adaptive weight and social strategies that enable the algorithm to efficiently search for optimal solutions in complex large-scale problems. The performance of the IWSCA is evaluated with 23 benchmark test functions and the IEEE CEC 2019 benchmark suite, compare it to a state-of-the-art heuristic algorithm and two improved versions of the SCA. Our experimental results demonstrate that the IWSCA outperforms existing methods in terms of convergence precision and robustness.

Publisher

Research Square Platform LLC

Reference38 articles.

1. A review of meta-heuristic algorithms for reactive power planning problem;Abdullah M;Ain Shams Engineering Journal

2. A scalability study of the multi-guide particle swarm optimization algorithm to many-objectives;Cian Steenkamp, Andries P;Swarm and Evolutionary Computation,2021

3. Modified Social Group Optimization—a meta-heuristic algorithm to solve short-term hydrothermal scheduling;Anima;Applied Soft Computing Journal,2020

4. Optimization of support vector machine parameters in modeling of deposit mineralization and alteration zones using particle swarm optimization algorithm and grid search method;Maliheh Abbaszadeh, Saeed Soltani-Mohammadi;Computers & Geosciences,2022

5. A review on the studies employing artificial bee colony algorithm to solve combinatorial optimization problems;Kaya Ebubekir;Engineering Applications of Artificial Intelligence,2022

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