The problem of minimising the maximum number of open stacks arises in many contexts (production planning, cutting environments, very-large-scale- integration circuit design, etc.) and consists of finding a sequence of tasks (products, cutting patterns, circuit gates, etc.) that determines an efficient utilisation of resources (stacks). We propose a genetic approach that combines classical genetic operators (selection, order crossover and pairwise interchange mutation) with an adaptive search strategy, where intensification and diversification phases are obtained by neighbourhood search and by a composite and dynamic fitness function that suitably modifies the search landscape. Computational tests on random and real-world benchmarks show tha...
This paper investigates the power of genetic algorithms at solving the MAX-CLIQUE problem. We measur...
The genetic algorithm technique known as crowding preserves population diversity by pairing each off...
Recent development of large databases, especially those in genetics and proteomics, is pushing the d...
The problem of minimising the maximum number of open stacks arises in many contexts (production plan...
The combinatorial optimization problem always is ubiquitous in various applications and has been pro...
This chapter is devoted to an application of genetic algorithms and coevolutionary principles to a l...
In this paper, we study the efficacy of genetic algorithms in the context of combinatorial optimizat...
This paper presents a new approach of genetic algorithm (GA) to solve the constrained optimization p...
Genetic adaptive algorithms provide an efficient way to search large function spaces, and are increa...
Recently, Genetic Algorithms (GAs) have been investigated as a technique for solving combinatorial o...
A novel genetic algorithm is reported that is non-revisiting: It remembers every position that it ha...
This article introduces the concept of variable chromosome lengths in the context of an adaptive gen...
Abstract—This work proposes an evolutionary algorithm, called the heterogeneous selection evolutiona...
The k-means problem is one of the most popular models of cluster analysis. The problem is NP-hard, a...
How has a stack of n blocks to be arranged in order to max-imize its overhang over a table edge whil...
This paper investigates the power of genetic algorithms at solving the MAX-CLIQUE problem. We measur...
The genetic algorithm technique known as crowding preserves population diversity by pairing each off...
Recent development of large databases, especially those in genetics and proteomics, is pushing the d...
The problem of minimising the maximum number of open stacks arises in many contexts (production plan...
The combinatorial optimization problem always is ubiquitous in various applications and has been pro...
This chapter is devoted to an application of genetic algorithms and coevolutionary principles to a l...
In this paper, we study the efficacy of genetic algorithms in the context of combinatorial optimizat...
This paper presents a new approach of genetic algorithm (GA) to solve the constrained optimization p...
Genetic adaptive algorithms provide an efficient way to search large function spaces, and are increa...
Recently, Genetic Algorithms (GAs) have been investigated as a technique for solving combinatorial o...
A novel genetic algorithm is reported that is non-revisiting: It remembers every position that it ha...
This article introduces the concept of variable chromosome lengths in the context of an adaptive gen...
Abstract—This work proposes an evolutionary algorithm, called the heterogeneous selection evolutiona...
The k-means problem is one of the most popular models of cluster analysis. The problem is NP-hard, a...
How has a stack of n blocks to be arranged in order to max-imize its overhang over a table edge whil...
This paper investigates the power of genetic algorithms at solving the MAX-CLIQUE problem. We measur...
The genetic algorithm technique known as crowding preserves population diversity by pairing each off...
Recent development of large databases, especially those in genetics and proteomics, is pushing the d...