This article presents an algorithm for multi-objective optimization that blends together a number of heuristics. A population of agents combines heuristics that aim at exploring the search space both globally and in a neighbourhood of each agent. These heuristics are complemented with a combination of a local and global archive. The novel agent-based algorithm is tested at first on a set of standard problems and then on three specific problems in space trajectory design. Its performance is compared against a number of state-of-the-art multi-objective optimization algorithms that use the Pareto dominance as selection criterion: non-dominated sorting genetic algorithm (NSGA-II), Pareto archived evolution strategy (PAES), multiple objective pa...
A hybrid multi-objective optimization algorithm based on genetic algorithm and stochastic local sear...
Abstract. In order to approximate the set of Pareto optimal solutions, several evolutionary multi-ob...
This volume presents a collection of original research works by leading specialists focusing on nove...
This paper presents the hybridisation of the fundamental heuristics underneath monotonic basin hoppi...
This paper presents the hybridisation of the fundamental heuristics underneath monotonic basin hoppi...
This chapter presents an overview of Multi Agent Collaborative Search (MACS), for multi-objective op...
This paper presents a novel formulation of Multi Agent Collaborative Search, for multi-objective opt...
This paper presents a novel formulation of Multi Agent Collaborative Search for multiobjective optim...
This paper presents a new archiving strategy and some modified search heuristics for the Multi Agent...
In this paper we consider a global optimization method for space trajectory design problems. The met...
The cooperate behavior that emerges from the interactions among simple multi-agent robots along with...
This paper proposes a memetic direct transcription algorithm to solve Multi-Objective Optimal Contro...
this paper we present a new search methodology that we view as a development of intelligent agent ap...
In conjunction with AAMAS 2013. http://www.emse.fr/~picard/publications/vplh13optmas.pdfInternationa...
This paper addresses the solution of optimal control problems with multiple and possibly conflicting...
A hybrid multi-objective optimization algorithm based on genetic algorithm and stochastic local sear...
Abstract. In order to approximate the set of Pareto optimal solutions, several evolutionary multi-ob...
This volume presents a collection of original research works by leading specialists focusing on nove...
This paper presents the hybridisation of the fundamental heuristics underneath monotonic basin hoppi...
This paper presents the hybridisation of the fundamental heuristics underneath monotonic basin hoppi...
This chapter presents an overview of Multi Agent Collaborative Search (MACS), for multi-objective op...
This paper presents a novel formulation of Multi Agent Collaborative Search, for multi-objective opt...
This paper presents a novel formulation of Multi Agent Collaborative Search for multiobjective optim...
This paper presents a new archiving strategy and some modified search heuristics for the Multi Agent...
In this paper we consider a global optimization method for space trajectory design problems. The met...
The cooperate behavior that emerges from the interactions among simple multi-agent robots along with...
This paper proposes a memetic direct transcription algorithm to solve Multi-Objective Optimal Contro...
this paper we present a new search methodology that we view as a development of intelligent agent ap...
In conjunction with AAMAS 2013. http://www.emse.fr/~picard/publications/vplh13optmas.pdfInternationa...
This paper addresses the solution of optimal control problems with multiple and possibly conflicting...
A hybrid multi-objective optimization algorithm based on genetic algorithm and stochastic local sear...
Abstract. In order to approximate the set of Pareto optimal solutions, several evolutionary multi-ob...
This volume presents a collection of original research works by leading specialists focusing on nove...