This paper addresses the stochastic permutation flow shop problem (SPFSP) in which the stochastic parameters are the processing times. This allows the modeling of setups and machine breakdowns. Likewise, it is proposed a multi-objective greedy randomized adaptive search procedure (GRASP) coupled with Monte-Carlo Simulation to obtain expected makespan and expected tardiness. To manage the bi-objective function, a sequential combined method is considered in the construction phase of the meta-heuristic. Moreover, the local Search combines 2-optimal interchanges with a Pareto Archived Evolution Strategy (PAES) to obtain the Pareto front. Also, some Taillard benchmark instances of deterministic permutation flow shop problem were adapted in order...
[EN] The permutation flowshop problem is a classic machine scheduling problem where n jobs must be p...
This paper presents a new, carefully designed algorithm for five bi-objective permutation flow shop ...
This paper presents an effective stochastic algorithm that embeds a large neighborhood decomposition...
This paper proposes a hybridized simheuristic approach that couples a greedy randomized adaptive sea...
This paper describes a simulation optimization algorithm for the Permutation Flow shop Problem with...
Greedy Randomized Adaptive Search Procedures (GRASP) are among the most popular metaheuristics for t...
The permutation flowshop scheduling problem (PFSP) is NP-complete and tends to be more complicated wh...
11 páginasThe aim of this paper is to present a simheuristic approach that obtains robust schedules ...
International audienceThe importance of multi-objective optimization is globably stablished nowadays...
The importance of multi-objective optimization is globably established nowadays. Furthermore, a grea...
[EN] Stochastic, as well as fuzzy uncertainty, can be found in most real-world systems. Considering ...
Abstract. The importance of multi-objective optimization is globably established nowadays. Furthermo...
En los últimos años la programación de la producción -Scheduling- ha tomado fuerza y relevancia dent...
This paper deals with scheduling problems in m machines permutation flow shop subject to random brea...
Scheduling is an analytic tool for making decisions that has acquired an important role in manufactu...
[EN] The permutation flowshop problem is a classic machine scheduling problem where n jobs must be p...
This paper presents a new, carefully designed algorithm for five bi-objective permutation flow shop ...
This paper presents an effective stochastic algorithm that embeds a large neighborhood decomposition...
This paper proposes a hybridized simheuristic approach that couples a greedy randomized adaptive sea...
This paper describes a simulation optimization algorithm for the Permutation Flow shop Problem with...
Greedy Randomized Adaptive Search Procedures (GRASP) are among the most popular metaheuristics for t...
The permutation flowshop scheduling problem (PFSP) is NP-complete and tends to be more complicated wh...
11 páginasThe aim of this paper is to present a simheuristic approach that obtains robust schedules ...
International audienceThe importance of multi-objective optimization is globably stablished nowadays...
The importance of multi-objective optimization is globably established nowadays. Furthermore, a grea...
[EN] Stochastic, as well as fuzzy uncertainty, can be found in most real-world systems. Considering ...
Abstract. The importance of multi-objective optimization is globably established nowadays. Furthermo...
En los últimos años la programación de la producción -Scheduling- ha tomado fuerza y relevancia dent...
This paper deals with scheduling problems in m machines permutation flow shop subject to random brea...
Scheduling is an analytic tool for making decisions that has acquired an important role in manufactu...
[EN] The permutation flowshop problem is a classic machine scheduling problem where n jobs must be p...
This paper presents a new, carefully designed algorithm for five bi-objective permutation flow shop ...
This paper presents an effective stochastic algorithm that embeds a large neighborhood decomposition...