We use genetic programming to find variants of the well-known Nawaz, En-score and Ham (NEH) heuristic for the permutation flow shop problem. Each variant uses a different ranking function to prioritize operations during schedule construction. We have tested our ideas on problems where jobs have release times, due dates, and weights and have considered five objective functions: makespan, sum of tardiness, sum of weighted tardiness, sum of completion times and sum of weighted completion times. The implemented genetic programming system has been carefully tuned and used to generate one variant of NEH for each objective function. The new NEHs, obtained with genetic programming, have been compared with the original NEH and randomized NEH version...
In this paper we develop a Self-guided Genetic Algorithm (Self-guided GA), which belongs to the cate...
Genetic algorithms simulate the survival of the fittest among individuals over consecutive generatio...
There are different suggested values to adapt the basic parameters of a Genetic Algorithm, however...
This paper deals with the problem of scheduling on makespan criterion in the flow shop environment. ...
Permutation flow shop scheduling problems have been an interesting area of research for over six dec...
The general flowshop scheduling problem is a production problem where a set of n jobs have to be pro...
Genetic Algorithm (GA) has been widely used for optimizing the flow shop scheduling problem due to i...
In this paper, permutation flow shop scheduling problems (PFSS) are investigated with a genetic algo...
Abstract—a new heuristic algorithm was designed by combining with Johnson method, NEH method and cha...
The m-machine, n-job, permutation flowshop problem with the total tardiness objective is a common sc...
The well-known NEH heuristic from Nawaz, Enscore and Ham proposed in 1983 has been recognized as the...
This paper proposed self-guided genetic algorithm, which is one of the algorithms in the category of...
Genetic algorithms are a very popular heuristic which have been suc-cessfully applied to many optimi...
Abstract: A new genetic algorithm coding is proposed in this paper to solve flowshop scheduling prob...
In the paper an improvement heuristic is proposed for permutation flow-shop problem based on the ide...
In this paper we develop a Self-guided Genetic Algorithm (Self-guided GA), which belongs to the cate...
Genetic algorithms simulate the survival of the fittest among individuals over consecutive generatio...
There are different suggested values to adapt the basic parameters of a Genetic Algorithm, however...
This paper deals with the problem of scheduling on makespan criterion in the flow shop environment. ...
Permutation flow shop scheduling problems have been an interesting area of research for over six dec...
The general flowshop scheduling problem is a production problem where a set of n jobs have to be pro...
Genetic Algorithm (GA) has been widely used for optimizing the flow shop scheduling problem due to i...
In this paper, permutation flow shop scheduling problems (PFSS) are investigated with a genetic algo...
Abstract—a new heuristic algorithm was designed by combining with Johnson method, NEH method and cha...
The m-machine, n-job, permutation flowshop problem with the total tardiness objective is a common sc...
The well-known NEH heuristic from Nawaz, Enscore and Ham proposed in 1983 has been recognized as the...
This paper proposed self-guided genetic algorithm, which is one of the algorithms in the category of...
Genetic algorithms are a very popular heuristic which have been suc-cessfully applied to many optimi...
Abstract: A new genetic algorithm coding is proposed in this paper to solve flowshop scheduling prob...
In the paper an improvement heuristic is proposed for permutation flow-shop problem based on the ide...
In this paper we develop a Self-guided Genetic Algorithm (Self-guided GA), which belongs to the cate...
Genetic algorithms simulate the survival of the fittest among individuals over consecutive generatio...
There are different suggested values to adapt the basic parameters of a Genetic Algorithm, however...