Multi-objective optimization (MOO) is an important research topic in both science and engineering. This paper proposes a diversity-enhanced and memory-based multi-objective gravitational search algorithm (DMMOGSA). We combine the memory of the best states of individual particles and their population in their evolution paths and the gravitational rules to construct a new search strategy. Under this strategy, the position and mass states of each particle are updated based on the memory associated with it and the current states of all particles in the current population in terms of their gravitational forces on it. A novel diversity-enhancement mechanism is also employed to control the velocity of each particle for traveling to a new position....
The choice of the best optimization algorithm is a hard issue, and it sometime depends on specific p...
The choice of the best optimization algorithm is a hard issue, and it sometime depends on specific p...
The choice of the best optimization algorithm is a hard issue, and it sometime depends on specific p...
Recently, we have introduced Multi-Leader Particle Swarm Optimization (MLPSO) algorithm for multi-ob...
Recently, we have introduced Multi-Leader Particle Swarm Optimization (MLPSO) algorithm for multi-ob...
Recently, we have introduced Multi-Leader Particle Swarm Optimization (MLPSO) algorithm for multiobj...
GSA is a physic inspired optimization algorithm. It is based on how bodies in the universe are attra...
This paper presents a novel algorithm, which is based on Gravitational Search Algorithm (GSA), for m...
Gravitational Search Algorithm (GSA) is a metaheuristic for solving unimodal problems. In this paper...
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 a Vector Evaluated Gravitational Search Algorithm (V...
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...
The choice of the best optimization algorithm is a hard issue, and it sometime depends on specific p...
The choice of the best optimization algorithm is a hard issue, and it sometime depends on specific p...
The choice of the best optimization algorithm is a hard issue, and it sometime depends on specific p...
The choice of the best optimization algorithm is a hard issue, and it sometime depends on specific p...
Recently, we have introduced Multi-Leader Particle Swarm Optimization (MLPSO) algorithm for multi-ob...
Recently, we have introduced Multi-Leader Particle Swarm Optimization (MLPSO) algorithm for multi-ob...
Recently, we have introduced Multi-Leader Particle Swarm Optimization (MLPSO) algorithm for multiobj...
GSA is a physic inspired optimization algorithm. It is based on how bodies in the universe are attra...
This paper presents a novel algorithm, which is based on Gravitational Search Algorithm (GSA), for m...
Gravitational Search Algorithm (GSA) is a metaheuristic for solving unimodal problems. In this paper...
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 a Vector Evaluated Gravitational Search Algorithm (V...
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...
The choice of the best optimization algorithm is a hard issue, and it sometime depends on specific p...
The choice of the best optimization algorithm is a hard issue, and it sometime depends on specific p...
The choice of the best optimization algorithm is a hard issue, and it sometime depends on specific p...
The choice of the best optimization algorithm is a hard issue, and it sometime depends on specific p...