Abstract:
In this paper, a novel competitive swarm optimizer (CSO) for large scale optimization is proposed. The algorithm is fundamentally inspired by the particle swarm optimizat...Show MoreMetadata
Abstract:
In this paper, a novel competitive swarm optimizer (CSO) for large scale optimization is proposed. The algorithm is fundamentally inspired by the particle swarm optimization but is conceptually very different. In the proposed CSO, neither the personal best position of each particle nor the global best position (or neighborhood best positions) is involved in updating the particles. Instead, a pairwise competition mechanism is introduced, where the particle that loses the competition will update its position by learning from the winner. To understand the search behavior of the proposed CSO, a theoretical proof of convergence is provided, together with empirical analysis of its exploration and exploitation abilities showing that the proposed CSO achieves a good balance between exploration and exploitation. Despite its algorithmic simplicity, our empirical results demonstrate that the proposed CSO exhibits a better overall performance than five state-of-the-art metaheuristic algorithms on a set of widely used large scale optimization problems and is able to effectively solve problems of dimensionality up to 5000.
Published in: IEEE Transactions on Cybernetics ( Volume: 45, Issue: 2, February 2015)
Funding Agency:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Large-scale Optimization ,
- Competitive Swarm Optimizer ,
- Optimization Problem ,
- Particle Swarm Optimization ,
- Particle Position ,
- Competitive Mechanism ,
- Theoretical Proof ,
- Large-scale Optimization Problems ,
- Statistical Results ,
- Variety Of Sources ,
- Global Optimization ,
- Local Optimum ,
- Particle Velocity ,
- Termination Condition ,
- Separate Functions ,
- Simple Implementation ,
- High Degree Of Diversity ,
- Search Performance ,
- Premature Convergence ,
- Influence Of Control ,
- Swarm Size ,
- Covariance Matrix Adaptation Evolution Strategy ,
- Optimal Error ,
- Particle Update ,
- Dimensional Search ,
- Benchmark Functions ,
- Global Version ,
- Negative Value Means ,
- Function Tests ,
- Local Mean
- Author Keywords
- Author Free Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Large-scale Optimization ,
- Competitive Swarm Optimizer ,
- Optimization Problem ,
- Particle Swarm Optimization ,
- Particle Position ,
- Competitive Mechanism ,
- Theoretical Proof ,
- Large-scale Optimization Problems ,
- Statistical Results ,
- Variety Of Sources ,
- Global Optimization ,
- Local Optimum ,
- Particle Velocity ,
- Termination Condition ,
- Separate Functions ,
- Simple Implementation ,
- High Degree Of Diversity ,
- Search Performance ,
- Premature Convergence ,
- Influence Of Control ,
- Swarm Size ,
- Covariance Matrix Adaptation Evolution Strategy ,
- Optimal Error ,
- Particle Update ,
- Dimensional Search ,
- Benchmark Functions ,
- Global Version ,
- Negative Value Means ,
- Function Tests ,
- Local Mean
- Author Keywords
- Author Free Keywords