This paper proposes a methodology to find weakly Pareto optimal solutions to a symmetric multi-objective traveling salesman problem using a memetic random-key genetic algorithm that has been augmented by a 2-opt local search. The methodology uses a ?target-vector approach? in which the evaluation function is a weighted Tchebycheff metric with an ideal point and the local search is randomly guided by either a weighted sum of the objectives or a weighted Tchebycheff metric. The memetic algorithm has several advantages including the fact that the random keys representation ensures that feasible tours are maintained during the application of genetic operators. To illustrate the quality of the methodology, experiments are conducted using Euclide...
This paper considers the multi-objective Traveling Salesman Problem (TSP) where the travel time and ...
A new symmetric version of the time constrained traveling salesman problem is introduced, where citi...
Abstract: Premature Convergence and genetic drift are the inherent characteristics of genetic algori...
In this paper, a preference-based, interactive memetic random-key genetic algorithm (PIMRKGA) is dev...
Abstract — Memetic Algorithms have been proven to be successful to find the nearest optimum solution...
The combination of local search heuristics and genetic algorithms is a promising approach for findin...
We briefly review previous attempts to generate near-optimal solutions of the Traveling Salesman Pro...
The standard Genetic Algorithm often suffers from slow convergence for solving combinatorial optimiz...
The combination of local search heuristics and genetic algorithms has been shown to be an effective ...
Hybridization of genetic algorithms (GAs) with local search techniques has received significant atte...
The generalized traveling salesman problem (GTSP) is an extension of the well-known traveling salesm...
This paper presents the implementation of an efficient modified genetic algorithm for solving the mu...
Hybridization of genetic algorithms (GAs) with local search techniques has received significant atte...
Memetic algorithms (MAs) have been shown to be very effective in finding near-optimum solutions to h...
This paper introduces a multi-population genetic algorithm (M-PPGA) using a new genetic representati...
This paper considers the multi-objective Traveling Salesman Problem (TSP) where the travel time and ...
A new symmetric version of the time constrained traveling salesman problem is introduced, where citi...
Abstract: Premature Convergence and genetic drift are the inherent characteristics of genetic algori...
In this paper, a preference-based, interactive memetic random-key genetic algorithm (PIMRKGA) is dev...
Abstract — Memetic Algorithms have been proven to be successful to find the nearest optimum solution...
The combination of local search heuristics and genetic algorithms is a promising approach for findin...
We briefly review previous attempts to generate near-optimal solutions of the Traveling Salesman Pro...
The standard Genetic Algorithm often suffers from slow convergence for solving combinatorial optimiz...
The combination of local search heuristics and genetic algorithms has been shown to be an effective ...
Hybridization of genetic algorithms (GAs) with local search techniques has received significant atte...
The generalized traveling salesman problem (GTSP) is an extension of the well-known traveling salesm...
This paper presents the implementation of an efficient modified genetic algorithm for solving the mu...
Hybridization of genetic algorithms (GAs) with local search techniques has received significant atte...
Memetic algorithms (MAs) have been shown to be very effective in finding near-optimum solutions to h...
This paper introduces a multi-population genetic algorithm (M-PPGA) using a new genetic representati...
This paper considers the multi-objective Traveling Salesman Problem (TSP) where the travel time and ...
A new symmetric version of the time constrained traveling salesman problem is introduced, where citi...
Abstract: Premature Convergence and genetic drift are the inherent characteristics of genetic algori...