This paper describes a parallel genetic algorithm developed for the solution of the set partitioning problem- a difficult combinatorial optimization problem used by many airlines as a mathematical model for flight crew scheduling. The genetic algorithm is based on an island model where multiple independent subpopulations each run a steady-state genetic algorithm on their own subpopulation and occasionally fit strings migrate between the subpopulations. Tests on forty real-world set partitioning problems were carried out on up to 128 nodes of an IBM SP1 parallel computer. We found that performance, as measured by the quality of the solution found and the iteration on which it was found, improved as additional subpopulations were added to the...
AbstractSet partitioning problems are among NP-Hard problems due to their complexities. It is diffic...
The optimal sequential partitioning problem is defined as the problem to find the minimum cost parti...
The main aim of this thesis is the comparison of parallel and sequential algorithm implementation fo...
Crew pairing, which constitute the one phase of airline crew planning is deliberated in this study....
This thesis submitted in partial fulfillment of the requirements for the degree of Bachelor of Scien...
Genetic algorithms are stochastic search and optimization techniques which can be used for a wide ra...
The efficient implementation of parallel processing architectures generally requires the solution of...
A parallel genetic algorithm for the graph partitioning problem is presented, which combines general...
The implementation and evaluation of several algorithms for the solution of the partitioning pro...
Genetic algorithms are one example of the use of a random element within an algorithm for combinator...
This paper presents a genetic algorithm solution for the parallel machine scheduling problems with a...
Abstract: Genetic algorithm is very powerful technique to find approximate solution to search proble...
This paper proposes two different parallel genetic al-gorithms (PGAs) for constrained ordering probl...
Parallel genetic algorithms (PGA) use two major modifications compared to the genetic algorithm. Fir...
This paper introduces a two‐phase sub population genetic algorithm to solve the parallel machine-sch...
AbstractSet partitioning problems are among NP-Hard problems due to their complexities. It is diffic...
The optimal sequential partitioning problem is defined as the problem to find the minimum cost parti...
The main aim of this thesis is the comparison of parallel and sequential algorithm implementation fo...
Crew pairing, which constitute the one phase of airline crew planning is deliberated in this study....
This thesis submitted in partial fulfillment of the requirements for the degree of Bachelor of Scien...
Genetic algorithms are stochastic search and optimization techniques which can be used for a wide ra...
The efficient implementation of parallel processing architectures generally requires the solution of...
A parallel genetic algorithm for the graph partitioning problem is presented, which combines general...
The implementation and evaluation of several algorithms for the solution of the partitioning pro...
Genetic algorithms are one example of the use of a random element within an algorithm for combinator...
This paper presents a genetic algorithm solution for the parallel machine scheduling problems with a...
Abstract: Genetic algorithm is very powerful technique to find approximate solution to search proble...
This paper proposes two different parallel genetic al-gorithms (PGAs) for constrained ordering probl...
Parallel genetic algorithms (PGA) use two major modifications compared to the genetic algorithm. Fir...
This paper introduces a two‐phase sub population genetic algorithm to solve the parallel machine-sch...
AbstractSet partitioning problems are among NP-Hard problems due to their complexities. It is diffic...
The optimal sequential partitioning problem is defined as the problem to find the minimum cost parti...
The main aim of this thesis is the comparison of parallel and sequential algorithm implementation fo...