This paper presents a performance evaluation of a novel Vector Evaluated Gravitational Search Algorithm II (VEGSAII) for multi-objective optimization problems. The VEGSAII algorithm uses a number of populations of particles. In particular, a population of particles corresponds to one objective function to be minimized or maximized. Simultaneous minimization or maximization of every objective function is realized by exchanging a variable between populations. The results shows that the VEGSA is outperformed by other multi-objective optimization algorithms and further enhancements are needed before it can be employed in any application
Gravitational Search Algorithm (GSA) is a metaheuristic population-based optimization alg orithm in...
Recently, we have introduced Multi-Leader Particle Swarm Optimization (MLPSO) algorithm for multi-ob...
The binary-based algorithms including the binary gravitational search algorithm (BGSA) were designed...
This paper presents a performance evaluation of a novel Vector Evaluated Gravitational Search Algori...
This paper presents a performance evaluation of a Vector Evaluated Gravitational Search Algorithm (V...
This paper presents a performance evaluation of Vector Evaluated Gravitational Search Algorithm (VEG...
This paper presents a novel algorithm, which is based on Gravitational Search Algorithm (GSA), for m...
GSA is a physic inspired optimization algorithm. It is based on how bodies in the universe are attra...
The gravitational search algorithm (GSA) is a kind of swarm intelligence optimization algorithm base...
The gravitational search algorithm (GSA) is a novel heuristic method inspired by Newton's gravity an...
Previously, non-dominated solutions have been employed to improve the performance of particle swarm ...
Recently, we have introduced Multi-Leader Particle Swarm Optimization (MLPSO) algorithm for multi-ob...
Gravitational Search Algorithm (GSA) is based on the acceleration trend feature of objects with a ma...
Multi-objective optimization (MOO) is an important research topic in both science and engineering. T...
Gravitational search algorithm (GSA) is a nature-inspired conceptual framework with roots in gravita...
Gravitational Search Algorithm (GSA) is a metaheuristic population-based optimization alg orithm in...
Recently, we have introduced Multi-Leader Particle Swarm Optimization (MLPSO) algorithm for multi-ob...
The binary-based algorithms including the binary gravitational search algorithm (BGSA) were designed...
This paper presents a performance evaluation of a novel Vector Evaluated Gravitational Search Algori...
This paper presents a performance evaluation of a Vector Evaluated Gravitational Search Algorithm (V...
This paper presents a performance evaluation of Vector Evaluated Gravitational Search Algorithm (VEG...
This paper presents a novel algorithm, which is based on Gravitational Search Algorithm (GSA), for m...
GSA is a physic inspired optimization algorithm. It is based on how bodies in the universe are attra...
The gravitational search algorithm (GSA) is a kind of swarm intelligence optimization algorithm base...
The gravitational search algorithm (GSA) is a novel heuristic method inspired by Newton's gravity an...
Previously, non-dominated solutions have been employed to improve the performance of particle swarm ...
Recently, we have introduced Multi-Leader Particle Swarm Optimization (MLPSO) algorithm for multi-ob...
Gravitational Search Algorithm (GSA) is based on the acceleration trend feature of objects with a ma...
Multi-objective optimization (MOO) is an important research topic in both science and engineering. T...
Gravitational search algorithm (GSA) is a nature-inspired conceptual framework with roots in gravita...
Gravitational Search Algorithm (GSA) is a metaheuristic population-based optimization alg orithm in...
Recently, we have introduced Multi-Leader Particle Swarm Optimization (MLPSO) algorithm for multi-ob...
The binary-based algorithms including the binary gravitational search algorithm (BGSA) were designed...