Affiliation:
1. 1 Geely University of China , Chengdu , Sichuan , , China .
Abstract
Abstract
Due to the pervasive generalization challenges in optimization technology, there is a noticeable trend toward planning and diversifying optimization techniques. This paper focuses on particle swarm optimization algorithms, particularly their application in multi-objective optimization scenarios. Initially, the study examines basic particle swarm, standard particle swarm, and particle swarm algorithms with a shrinkage factor. Subsequently, an enhanced particle swarm optimization algorithm is proposed, incorporating a hybridization model and a convergence factor model tailored to the specific characteristics of particle swarm algorithms. This improved algorithm is then applied to multi-objective optimization problems, establishing a novel algorithm based on the fusion of the enhanced particle swarm approach with constrained optimization. Simulation experiments conducted on this model reveal significant findings. In low-dimensional settings, the algorithm achieves a 100% optimization success rate, marking an average improvement of 53.80%, 40.78%, and 24.76% over competing algorithms. Moreover, in multi-objective optimization simulation experiments, this algorithm generates 142 and 135 optimal solutions, outperforming traditional algorithms by 112 and 107 solutions, respectively. These results validate the efficiency and enhanced performance of the improved particle swarm-based multi-objective optimization algorithm, demonstrating its potential as an effective tool for addressing real-world optimization challenges.
Reference21 articles.
1. Ammar, H. B., Yahia, W. B., Ayadi, O., & Masmoudi, F. (2021). Design of efficient multiobjective binary pso algorithms for solving multi-item capacitated lot-sizing problem. International Journal of Intelligent Systems.
2. Gou, J., Guo, W. P., Wang, C., & Luo, W. (2017). A multi-strategy improved particle swarm optimization algorithm and its application to identifying uncorrelated multi-source load in the frequency domain. Neural Computing and Applications.
3. Li, H., Wang, S., Chen, Q., Gong, M., & Chen, L. (2022). Ipsmt: multi-objective optimization of multipath transmission strategy based on improved immune particle swarm algorithm in wireless sensor networks. Applied Soft Computing(121-), 121.
4. Gu, Q., Liu, Y., Chen, L., & Xiong, N. (2022). An improved competitive particle swarm optimization for many-objective optimization problems. Expert Systems with Applications, 189, 116118-.
5. Ruochen, Liu, Jianxia, Li, Jing, & fan, et al. (2017). A coevolutionary technique based on multi-swarm particle swarm optimization for dynamic multi-objective optimization. European Journal of Operational Research.