This chapter is devoted to an application of genetic algorithms and coevolutionary principles to a large optimization problem. Starting point is a mixed integer linear program which models our problem - in this case a facility layout problem. As the number of binary variables increases quadratically with the problem size, currently available solvers fail already for small problem instances. Using an genetic search our algorithm reduces the number of binary variables by setting a considerable part of them. The genetic operators were specially designed to yield a high precentage of feasible variable settings. In order to further speed up the computation of large problems we propose a partition into interdipendent subproblems. Each subproblem ...
This paper is concerned with the application of the technique of genetic algorithms to solve the pro...
This thesis investigates the use of problem-specific knowledge to enhance a genetic algorithm approa...
Decision making features occur in all fields of human activities such as science and technological a...
This paper presents a coevolutionary approach to the numerical optimization of large facility layout...
Abstract:- Real world optimization problems are typically complex and difficult to solve. In this wo...
The paper describes the application of a genetic engineering based extension to genetic algorithms t...
Colloque sans acte à diffusion restreinte.We propose efficient approximate solutions to large size p...
A construction site represents a conflux of concerns, constantly calling for a broad and multi-crite...
This paper presents an algorithm combining dynamic programming and genetic search for solving a dyna...
Abstract — Genetic algorithms have proven to be a well-suited technique for solving selected combina...
Rapport interne.In this paper, we solve approximately a physical facility layout by using two geneti...
This paper presents an investigation of the applicability of a genetic approach for solving the cons...
The Facility Layout Problem (FLP) concerns minimising total traffic cost between facilities in a par...
The space layout planning problem belongs to the class of NP-hard problems with a wide range of prac...
The Unequal Area Facility Layout Problem (UA-FLP) comprises a class of extremely difficult and widel...
This paper is concerned with the application of the technique of genetic algorithms to solve the pro...
This thesis investigates the use of problem-specific knowledge to enhance a genetic algorithm approa...
Decision making features occur in all fields of human activities such as science and technological a...
This paper presents a coevolutionary approach to the numerical optimization of large facility layout...
Abstract:- Real world optimization problems are typically complex and difficult to solve. In this wo...
The paper describes the application of a genetic engineering based extension to genetic algorithms t...
Colloque sans acte à diffusion restreinte.We propose efficient approximate solutions to large size p...
A construction site represents a conflux of concerns, constantly calling for a broad and multi-crite...
This paper presents an algorithm combining dynamic programming and genetic search for solving a dyna...
Abstract — Genetic algorithms have proven to be a well-suited technique for solving selected combina...
Rapport interne.In this paper, we solve approximately a physical facility layout by using two geneti...
This paper presents an investigation of the applicability of a genetic approach for solving the cons...
The Facility Layout Problem (FLP) concerns minimising total traffic cost between facilities in a par...
The space layout planning problem belongs to the class of NP-hard problems with a wide range of prac...
The Unequal Area Facility Layout Problem (UA-FLP) comprises a class of extremely difficult and widel...
This paper is concerned with the application of the technique of genetic algorithms to solve the pro...
This thesis investigates the use of problem-specific knowledge to enhance a genetic algorithm approa...
Decision making features occur in all fields of human activities such as science and technological a...