Genetic algorithms are nowadays commonly used in simulation-based optimization of vehicle routing problems. These algorithms work with a population of solutions that are iteratively improved in an evolutionary process. Usually, the initial population is created randomly. In general, this is not very efficient since it takes unnecessarily long time before sufficiently good solutions have evolved. For a better performance of genetic algorithms, this work describes the use of heuristic search for creating the initial population. A new heuristic search procedure is described in the paper and evaluated using a real-world problem of garbage collection. The results from the evaluation show that the new procedure is able to improve a genetic algori...
This paper deals with the optimization of vehicle routing problem in which multiple depots, multiple...
Summarization: The Vehicle Routing Problem (VRP) is one of the most well studied problems in operati...
Hybridization is a common theme employed to improve metaheuristics. Having been known as a less effe...
Genetic algorithms are nowadays commonly used in simulation-based optimization of vehicle routing pr...
This thesis identifies some problems, the genetic algorithm (GA) is facing in the area of vehicle ro...
Abstract — The main goal of this research is to find a solution of Vehicle Routing Problem using gen...
A generalized clustering method based on a Genetic Algorithm is proposed. The Genetic Clustering (Ge...
Almost all heuristic optimization procedures require the presence of a well-tuned set of parameters....
In recent years, many service suppliers and distributors have recognized the importance of designing...
The aim of this work is to present some alternatives to improve the performance of an Evolutionary A...
Many researches on different heuristic approaches can be found for the solution of the vehicle routi...
Assessment of the components of a solution helps provide useful information for an optimization prob...
Abstract. This paper is the second part of a work on the application of new search techniques for th...
The traveling salesman problem (TSP) consists of finding the shortest way between cities, which pass...
Summarization: Usually in a genetic algorithm, individual solutions do not evolve during their lifet...
This paper deals with the optimization of vehicle routing problem in which multiple depots, multiple...
Summarization: The Vehicle Routing Problem (VRP) is one of the most well studied problems in operati...
Hybridization is a common theme employed to improve metaheuristics. Having been known as a less effe...
Genetic algorithms are nowadays commonly used in simulation-based optimization of vehicle routing pr...
This thesis identifies some problems, the genetic algorithm (GA) is facing in the area of vehicle ro...
Abstract — The main goal of this research is to find a solution of Vehicle Routing Problem using gen...
A generalized clustering method based on a Genetic Algorithm is proposed. The Genetic Clustering (Ge...
Almost all heuristic optimization procedures require the presence of a well-tuned set of parameters....
In recent years, many service suppliers and distributors have recognized the importance of designing...
The aim of this work is to present some alternatives to improve the performance of an Evolutionary A...
Many researches on different heuristic approaches can be found for the solution of the vehicle routi...
Assessment of the components of a solution helps provide useful information for an optimization prob...
Abstract. This paper is the second part of a work on the application of new search techniques for th...
The traveling salesman problem (TSP) consists of finding the shortest way between cities, which pass...
Summarization: Usually in a genetic algorithm, individual solutions do not evolve during their lifet...
This paper deals with the optimization of vehicle routing problem in which multiple depots, multiple...
Summarization: The Vehicle Routing Problem (VRP) is one of the most well studied problems in operati...
Hybridization is a common theme employed to improve metaheuristics. Having been known as a less effe...