In this work we propose a new distributed evolutionary algorithm that uses a proactive strategy to adapt its migration policy and the mutation rate. The proactive decision is carried out locally in each subpopulation based on the entropy of that subpopulation. In that way, each subpopulation can change their own incoming flow of individuals by asking their neighbors for more frequent or less frequent migrations in order to maintain the genetic diversity at a desired level. Moreover, this proactive strategy is reinforced by adapting the mutation rate while the algorithm is searching for the problem solution. All these strategies avoid the subpopulations to get trapped into local minima. We conduct computational experiments on large instances...
International audienceThis paper is concerned with a fixed-size population of autonomous agents faci...
This paper proposes a new approach, wherein multiple populations are evolved on different landscapes...
In this paper we evaluates the effectiveness of three different distributed genetic algorithms (DGAs...
Migration strategy plays an important role in designing effective distributed evolutionary algorithm...
Many distributed systems (task scheduling, moving priorities, changing mobile environments, ...) can...
The genetic algorithm is a general purpose, population-based search algorithm in which the individua...
Nowadays, parallel genetic algorithms are one of the most used meta-heuristics for solving combinato...
Migration of individuals allows a fruitful interaction between subpopulations in the island model, a...
This paper discusses the effect of randomization of migration rate in distributed genetic algorithms...
This paper proposes a novel distributed differential evolution algorithm, namely Distributed Differe...
Migration of individuals allows a fruitful interaction between subpopulations in the island model, a...
This article is concerned with a fixed-size population of autonomous agents facing unknown, possibly...
Differential evolution (DE) is a simple, effective, and robust algorithm, which has demonstrated exc...
A multi-agent system is divided into groups forming sub-populations of agents. These groups of agent...
Since practical problems often are very complex with a large number of objectives it can be difficul...
International audienceThis paper is concerned with a fixed-size population of autonomous agents faci...
This paper proposes a new approach, wherein multiple populations are evolved on different landscapes...
In this paper we evaluates the effectiveness of three different distributed genetic algorithms (DGAs...
Migration strategy plays an important role in designing effective distributed evolutionary algorithm...
Many distributed systems (task scheduling, moving priorities, changing mobile environments, ...) can...
The genetic algorithm is a general purpose, population-based search algorithm in which the individua...
Nowadays, parallel genetic algorithms are one of the most used meta-heuristics for solving combinato...
Migration of individuals allows a fruitful interaction between subpopulations in the island model, a...
This paper discusses the effect of randomization of migration rate in distributed genetic algorithms...
This paper proposes a novel distributed differential evolution algorithm, namely Distributed Differe...
Migration of individuals allows a fruitful interaction between subpopulations in the island model, a...
This article is concerned with a fixed-size population of autonomous agents facing unknown, possibly...
Differential evolution (DE) is a simple, effective, and robust algorithm, which has demonstrated exc...
A multi-agent system is divided into groups forming sub-populations of agents. These groups of agent...
Since practical problems often are very complex with a large number of objectives it can be difficul...
International audienceThis paper is concerned with a fixed-size population of autonomous agents faci...
This paper proposes a new approach, wherein multiple populations are evolved on different landscapes...
In this paper we evaluates the effectiveness of three different distributed genetic algorithms (DGAs...