Scheduling optimization problems provide much potential for innovative solutions by genetic algorithms. The complexities, constraints and practicalities of the scheduling process motivate the development of genetic algorithm (GA) techniques to allow innovative and flexible scheduling solutions. Multiobjective genetic algorithms (MOGAs) extend the standard evolutionary-based genetic algorithm optimization technique to allow individual treatment of several objectives simultaneously. This allows the user to attempt to optimize several conflicting objectives, and to explore the trade-offs, conflicts and constraints inherent in this process. The area of MOGA performance assessment and comparison is a relatively new field, as much research concen...
This research proposes a method to solve the adaptive, multi-objective job shop scheduling problem. ...
Abstract: This paper compares the optimization of a logistic scheduling problem us-ing two different...
This paper exemplifies a framework for development of multi-objective genetic algorithm based job se...
Production scheduling is a notoriously difficult problem. Manufacturing environments contain comple...
[[abstract]]Over time, the traditional single-objective job shop scheduling method has grown increas...
Genetic algorithms have during the recent years gained popularity also in the domain of chemical eng...
Abstract—Effective approaches are important to batch process scheduling problems, especially those w...
This paper presents a novel genetic algorithm (GA) for the scheduling of a typical multi-purpose bat...
International audienceThis paper presents a MultiObjective Genetic Algorithm (MOGA) optimization fra...
This work deals with multiobjective optimization problems using Genetic Algorithms (GA). A MultiObje...
Scheduling problems can be seen as multi-objective optimization problems (MOPs), involving the simul...
In this paper, is considered the scheduling problem for a two-machine flow shop model with a batch m...
This paper presents a heuristic rule-based genetic algorithm (GA) for large-size single-stage multi-...
This article introduces a novel framework to deal with the scheduling problem concerning batch chemi...
Single-stage multi-product scheduling problem (SMSP) with parallel units has been widely studied, ve...
This research proposes a method to solve the adaptive, multi-objective job shop scheduling problem. ...
Abstract: This paper compares the optimization of a logistic scheduling problem us-ing two different...
This paper exemplifies a framework for development of multi-objective genetic algorithm based job se...
Production scheduling is a notoriously difficult problem. Manufacturing environments contain comple...
[[abstract]]Over time, the traditional single-objective job shop scheduling method has grown increas...
Genetic algorithms have during the recent years gained popularity also in the domain of chemical eng...
Abstract—Effective approaches are important to batch process scheduling problems, especially those w...
This paper presents a novel genetic algorithm (GA) for the scheduling of a typical multi-purpose bat...
International audienceThis paper presents a MultiObjective Genetic Algorithm (MOGA) optimization fra...
This work deals with multiobjective optimization problems using Genetic Algorithms (GA). A MultiObje...
Scheduling problems can be seen as multi-objective optimization problems (MOPs), involving the simul...
In this paper, is considered the scheduling problem for a two-machine flow shop model with a batch m...
This paper presents a heuristic rule-based genetic algorithm (GA) for large-size single-stage multi-...
This article introduces a novel framework to deal with the scheduling problem concerning batch chemi...
Single-stage multi-product scheduling problem (SMSP) with parallel units has been widely studied, ve...
This research proposes a method to solve the adaptive, multi-objective job shop scheduling problem. ...
Abstract: This paper compares the optimization of a logistic scheduling problem us-ing two different...
This paper exemplifies a framework for development of multi-objective genetic algorithm based job se...