Most sensitivity analysis studies of optimization algorithm control parameters are restricted to a single objective function evaluation (OFE) budget. This restriction is problematic because the optimality of control parameter values (CPVs) is dependent not only on the problem's fitness landscape, but also on the OFE budget available to explore that landscape. Therefore, the OFE budget needs to be taken into consideration when performing control parameter tuning. This paper presents a new algorithm tuning multiobjective particle swarm optimization (tMOPSO) for tuning the CPVs of stochastic optimization algorithms under a range of OFE budget constraints. Specifically, for a given problem tMOPSO aims to determine multiple groups of CPVs, each ...
Robust optimization over time is a new approach to solving dynamic optimization problems. It aims to...
This study focuses on the development of a scheme for self-adapting the Particle Swarm Optimization ...
Abstract—Many optimisation problems are multi-objective and change dynamically. Many methods use a w...
The particle swarm optimization (PSO) algorithm is a stochastic, population-based optimization techn...
: Particel Swarm Optimization (PSO) is a form of population evolutionary algorithm introduced in the...
Optimisation problems occur in many situations and aspects of modern life. In reality, many of these...
International audienceOffline parameter tuning (OPT) of multi-objective evolutionary algorithms (MOE...
Abstract.- Tuning the parameters of any evolutionary algorithm is a difficult task. In this paper, w...
WOS: 000297127200011The development cycle of high-performance optimization algorithms requires the a...
Abstract. Obviously, it is not a good idea to apply an optimization algorithm with wrongly specified...
Evolutionary Algorithms (EAs) and other metaheuristics are greatly affected by the choice of their p...
Many practical problems in the real world nowadays can be formulated as constraintsingle or multiple...
Most conventional robust design methods assume design solutions are fixed values. Using these method...
One issue in applying Particle Swarm Optimization (PSO) is to And a good working set of parameters. ...
The development cycle of high-performance optimization algorithms requires the algorithm designer to...
Robust optimization over time is a new approach to solving dynamic optimization problems. It aims to...
This study focuses on the development of a scheme for self-adapting the Particle Swarm Optimization ...
Abstract—Many optimisation problems are multi-objective and change dynamically. Many methods use a w...
The particle swarm optimization (PSO) algorithm is a stochastic, population-based optimization techn...
: Particel Swarm Optimization (PSO) is a form of population evolutionary algorithm introduced in the...
Optimisation problems occur in many situations and aspects of modern life. In reality, many of these...
International audienceOffline parameter tuning (OPT) of multi-objective evolutionary algorithms (MOE...
Abstract.- Tuning the parameters of any evolutionary algorithm is a difficult task. In this paper, w...
WOS: 000297127200011The development cycle of high-performance optimization algorithms requires the a...
Abstract. Obviously, it is not a good idea to apply an optimization algorithm with wrongly specified...
Evolutionary Algorithms (EAs) and other metaheuristics are greatly affected by the choice of their p...
Many practical problems in the real world nowadays can be formulated as constraintsingle or multiple...
Most conventional robust design methods assume design solutions are fixed values. Using these method...
One issue in applying Particle Swarm Optimization (PSO) is to And a good working set of parameters. ...
The development cycle of high-performance optimization algorithms requires the algorithm designer to...
Robust optimization over time is a new approach to solving dynamic optimization problems. It aims to...
This study focuses on the development of a scheme for self-adapting the Particle Swarm Optimization ...
Abstract—Many optimisation problems are multi-objective and change dynamically. Many methods use a w...