This paper introduces a multi-population genetic algorithm (M-PPGA) using a new genetic representation, the kth-nearest neighbor representation, for Euclidean Traveling Salesman Problems. The proposed M-PPGA runs M greedy genetic algorithms on M separate populations, each with two new operators, intersection repairing and cheapest insert. The M-PPGA finds optimal or near optimal solutions by using a novel communication operator among individually converged populations. The algorithm generates high quality building blocks within each population; then, combines these blocks to build the optimal or near optimal solutions by means of the communication operator. The proposed M-PPGA outperforms the GAs that we know of as competitive with respect ...
Genetic Algorithms use life as their model to solve difficult problems in computer science. They use...
The parallel genetic algorithm (PGA) uses two major modifications compared to the genetic algorithm....
This paper extends previous analyses of parallel GAs with multiple populations (demes) to consider c...
Traditional genetic algorithms often meet the occurrence of slow convergence and enclosure competiti...
This paper presents the implementation of an efficient modified genetic algorithm for solving the mu...
The main aim of this thesis is the comparison of parallel and sequential algorithm implementation fo...
ABSTRACT. Genetic algorithms (GAs) are powerful search techniques that are used success-fully to sol...
For the solution of combinatorial problem, various algorithms has been investigated. However, almost...
The multiple travelling salesman problem (MTSP), an extension of the well-known travelling salesman ...
Abstract: Problem statement: The aim of this research is to investigate the Traveling Salesman Probl...
Parallel genetic algorithms (PGA) use two major modifications compared to the genetic algorithm. Fir...
The Genetic Algorithm (GA) is one of the most important methods used to solve many combinatorial opt...
We present an “adaptive multi-start” genetic algorithm for the Euclidean traveling salesman problem ...
This research investigated the application of Genetic Algorithm capable of solving the traveling sal...
It is very effective to solve the multi variable optimization problem by using hierarchical genetic ...
Genetic Algorithms use life as their model to solve difficult problems in computer science. They use...
The parallel genetic algorithm (PGA) uses two major modifications compared to the genetic algorithm....
This paper extends previous analyses of parallel GAs with multiple populations (demes) to consider c...
Traditional genetic algorithms often meet the occurrence of slow convergence and enclosure competiti...
This paper presents the implementation of an efficient modified genetic algorithm for solving the mu...
The main aim of this thesis is the comparison of parallel and sequential algorithm implementation fo...
ABSTRACT. Genetic algorithms (GAs) are powerful search techniques that are used success-fully to sol...
For the solution of combinatorial problem, various algorithms has been investigated. However, almost...
The multiple travelling salesman problem (MTSP), an extension of the well-known travelling salesman ...
Abstract: Problem statement: The aim of this research is to investigate the Traveling Salesman Probl...
Parallel genetic algorithms (PGA) use two major modifications compared to the genetic algorithm. Fir...
The Genetic Algorithm (GA) is one of the most important methods used to solve many combinatorial opt...
We present an “adaptive multi-start” genetic algorithm for the Euclidean traveling salesman problem ...
This research investigated the application of Genetic Algorithm capable of solving the traveling sal...
It is very effective to solve the multi variable optimization problem by using hierarchical genetic ...
Genetic Algorithms use life as their model to solve difficult problems in computer science. They use...
The parallel genetic algorithm (PGA) uses two major modifications compared to the genetic algorithm....
This paper extends previous analyses of parallel GAs with multiple populations (demes) to consider c...