This paper investigates the one-dimensional cutting stock problem considering two conflicting objective functions: minimization of both the number of objects and the number of different cutting patterns used. A new heuristic method based on the concepts of genetic algorithms is proposed to solve the problem. This heuristic is empirically analyzed by solving randomly generated instances and also practical instances from a chemical-fiber company. The computational results show that the method is efficient and obtains positive results when compared to other methods from the literature
The one-dimensional cutting stock problem has many applications in industries and during the past fe...
In this work we consider a one-dimensional cutting stock problem in which the non-used material in t...
The Cutting stock problem is one of the major optimization problems that affects a wide variety of i...
This paper investigates the one-dimensional cutting stock problem considering two conflicting object...
This paper investigates the one-dimensional cutting stock problem considering two conflicting object...
This paper deals with the one-dimensional integer cutting stock problem, which consists of cutting a...
This work presents a genetic symbiotic algorithm to minimize the number of objects and the setup in ...
This work presents a genetic symbiotic algorithm to minimize the number of objects and the setup in ...
The two-dimensional cutting stock problem is the problem of cutting two-dimensional parts from a sh...
This paper deals with the classical one-dimensional integer cutting stock problem, which consists of...
This paper describes an attempt to solve the one-dimensional cutting stock problem heuristically by ...
The cutting stock problem is that of finding a cutting of stock material to meet demands for small p...
This paper describes an attempt to solve the one-dimensional cutting stock problem heuristically by ...
Nesta dissertação, estudamos algoritmos genéticos para resolver o problema de corte unidimensional m...
Programming (EP) are two well-known optimization methods that belong to the class of Evolutionary Al...
The one-dimensional cutting stock problem has many applications in industries and during the past fe...
In this work we consider a one-dimensional cutting stock problem in which the non-used material in t...
The Cutting stock problem is one of the major optimization problems that affects a wide variety of i...
This paper investigates the one-dimensional cutting stock problem considering two conflicting object...
This paper investigates the one-dimensional cutting stock problem considering two conflicting object...
This paper deals with the one-dimensional integer cutting stock problem, which consists of cutting a...
This work presents a genetic symbiotic algorithm to minimize the number of objects and the setup in ...
This work presents a genetic symbiotic algorithm to minimize the number of objects and the setup in ...
The two-dimensional cutting stock problem is the problem of cutting two-dimensional parts from a sh...
This paper deals with the classical one-dimensional integer cutting stock problem, which consists of...
This paper describes an attempt to solve the one-dimensional cutting stock problem heuristically by ...
The cutting stock problem is that of finding a cutting of stock material to meet demands for small p...
This paper describes an attempt to solve the one-dimensional cutting stock problem heuristically by ...
Nesta dissertação, estudamos algoritmos genéticos para resolver o problema de corte unidimensional m...
Programming (EP) are two well-known optimization methods that belong to the class of Evolutionary Al...
The one-dimensional cutting stock problem has many applications in industries and during the past fe...
In this work we consider a one-dimensional cutting stock problem in which the non-used material in t...
The Cutting stock problem is one of the major optimization problems that affects a wide variety of i...