1. An Adaptive Hybrid PSO Multi-Objective Optimization Algorithm for Constrained Optimization Problems.
- Author
-
Hu, Hongzhi, Tian, Shulin, Guo, Qing, and Ouyang, Aijia
- Subjects
- *
PARTICLE swarm optimization , *ALGORITHMS , *PROBLEM solving , *ADAPTIVE computing systems , *HYBRID systems , *POINT set theory - Abstract
In attempting to overcome the limitation of current methods to solve complicated constrained optimization problems, this paper proposes an adaptive hybrid particle swarm optimization multi-objective optimization (AHPSOMO) algorithm. In the early stage, this algorithm initializes the individuals in a population in an even manner using good point set (GPS) theory so that the diversity of the population can be guaranteed. In the process of local search, differential evolution (DE) algorithm is introduced for updating local optimal individuals. Particle swarm optimization method is further adopted to conduct global search as per the multi-objective approach. The results of simulation tests on 24 classic test functions and three engineering constrained optimization problems show that compared with other algorithms, our proposed algorithm is effective and feasible, which can offer highly accurate solutions with good robustness. [ABSTRACT FROM AUTHOR]
- Published
- 2015
- Full Text
- View/download PDF