Javascript must be enabled to continue!
Learning Competitive Swarm Optimization
View through CrossRef
Particle swarm optimization (PSO) is a popular method widely used in solving different optimization problems. Unfortunately, in the case of complex multidimensional problems, PSO encounters some troubles associated with the excessive loss of population diversity and exploration ability. This leads to a deterioration in the effectiveness of the method and premature convergence. In order to prevent these inconveniences, in this paper, a learning competitive swarm optimization algorithm (LCSO) based on the particle swarm optimization method and the competition mechanism is proposed. In the first phase of LCSO, the swarm is divided into sub-swarms, each of which can work in parallel. In each sub-swarm, particles participate in the tournament. The participants of the tournament update their knowledge by learning from their competitors. In the second phase, information is exchanged between sub-swarms. The new algorithm was examined on a set of test functions. To evaluate the effectiveness of the proposed LCSO, the test results were compared with those achieved through the competitive swarm optimizer (CSO), comprehensive particle swarm optimizer (CLPSO), PSO, fully informed particle swarm (FIPS), covariance matrix adaptation evolution strategy (CMA-ES) and heterogeneous comprehensive learning particle swarm optimization (HCLPSO). The experimental results indicate that the proposed approach enhances the entropy of the particle swarm and improves the search process. Moreover, the LCSO algorithm is statistically and significantly more efficient than the other tested methods.
Title: Learning Competitive Swarm Optimization
Description:
Particle swarm optimization (PSO) is a popular method widely used in solving different optimization problems.
Unfortunately, in the case of complex multidimensional problems, PSO encounters some troubles associated with the excessive loss of population diversity and exploration ability.
This leads to a deterioration in the effectiveness of the method and premature convergence.
In order to prevent these inconveniences, in this paper, a learning competitive swarm optimization algorithm (LCSO) based on the particle swarm optimization method and the competition mechanism is proposed.
In the first phase of LCSO, the swarm is divided into sub-swarms, each of which can work in parallel.
In each sub-swarm, particles participate in the tournament.
The participants of the tournament update their knowledge by learning from their competitors.
In the second phase, information is exchanged between sub-swarms.
The new algorithm was examined on a set of test functions.
To evaluate the effectiveness of the proposed LCSO, the test results were compared with those achieved through the competitive swarm optimizer (CSO), comprehensive particle swarm optimizer (CLPSO), PSO, fully informed particle swarm (FIPS), covariance matrix adaptation evolution strategy (CMA-ES) and heterogeneous comprehensive learning particle swarm optimization (HCLPSO).
The experimental results indicate that the proposed approach enhances the entropy of the particle swarm and improves the search process.
Moreover, the LCSO algorithm is statistically and significantly more efficient than the other tested methods.
Related Results
Collective Cognition on Global Density in Dynamic Swarm
Collective Cognition on Global Density in Dynamic Swarm
Swarm density plays a key role in the performance of a robot swarm, which can be averagely measured by swarm size and the area of a workspace. In some scenarios, the swarm workspac...
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
The pandemic Covid-19 currently demands teachers to be able to use technology in teaching and learning process. But in reality there are still many teachers who have not been able ...
Modeling Strategies for Conducting Wave Surveillance Using a Swarm of Security Drones
Modeling Strategies for Conducting Wave Surveillance Using a Swarm of Security Drones
This work formulates and solves the actual problem of studying the logistics of unmanned aerial vehicle (UAV) operations in facility security planning. The study is related to secu...
Military logistics planning models for enemy targets attack by a swarm of combat drones
Military logistics planning models for enemy targets attack by a swarm of combat drones
This article describes and investigates the planning aspect of military actions aimed at destroying enemy targets with the help of an attack drone swarm. This study attempts to sol...
Learner-Centred, Teacher-Centred and Blended Curriculum Design in Swarm Systems
Learner-Centred, Teacher-Centred and Blended Curriculum Design in Swarm Systems
Abstract
Robot swarms have been used in various civilian and military applications, from entertainment to serious missions. Complex swarm tasks involve multiple i...
The Project Research for Optimal Scheduling Based on Particle Swarm Optimization
The Project Research for Optimal Scheduling Based on Particle Swarm Optimization
The project management optimization for an important aspect of the scheduling scheme is reasonable to reduce costs, improve quality and shorten the cycle. Traditional project sched...
A Review Study of Modified Swarm Intelligence: Particle Swarm Optimization, Firefly, Bat and Gray Wolf Optimizer Algorithms
A Review Study of Modified Swarm Intelligence: Particle Swarm Optimization, Firefly, Bat and Gray Wolf Optimizer Algorithms
Background:
Limitations exist in traditional optimization algorithms. Studies show that
bio-inspired alternatives have overcome these drawbacks. Bio-inspired algorithm mimics the c...
Improved electrical coupling integrated energy system based on particle swarm optimization
Improved electrical coupling integrated energy system based on particle swarm optimization
AbstractThe rational utilization of energy is an important issue for sustainable development. Electrically coupled integrated energy systems can enhance energy utilization efficien...

