1. Artificial chicken swarm algorithm for multi-objective optimization with deep learning.
- Author
-
Wei, Qianzhou, Huang, Dongru, and Zhang, Yu
- Subjects
MATHEMATICAL optimization ,ALGORITHMS ,PROBLEM solving ,FORAGING behavior ,DEEP learning - Abstract
With the rapid development of computer hardware in the past three decades, various classic algorithms such as neural computing and bionic optimization computing have been widely used in practical problems. This paper extended the new bionic algorithm-flock algorithm proposed in 2014 and obtained a multi-objective flock algorithm to solve the multi-objective problem. This study used aggregate functions to define social ranks, and simulated the foraging behavior of chickens in the process of searching for food in the objective space and found the balance between diversity and convergence when looking for the best Pareto solution. The algorithm took five types of bi-objective functions and four types of three-objective functions as objects and compared it with four more widely used algorithms in multi-objective problems. The results demonstrate that the MOCSO (multi-objective chicken swarm optimization) algorithm shows better results in the optimization of multi-objective problems. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF