Combinatorial optimization problems are important in operations research and computer science. They include specific, well-known problems such as the bin packing problem, sequencing and scheduling problems, and location and network design problems. Each of these problems has a wide variety of real-world applications. In addition, most of these problems are inherently difficult to solve, as they are NP-hard. No polynomial-time algorithm currently exists for solving them to optimality. Therefore, we are interested in developing high-quality heuristics that find near-optimal solutions in a reasonable amount of computing time. In this dissertation, we focus on applications of genetic algorithms, dynamic programming, and linear programming...
Genetic algorithms are one example of the use of a random element within an algorithm for combinator...
Over the past three decades a significant amount of time and effort has been expended in an attempt...
Powerpoint presentationBioinspired computation methods, such as evolutionary algorithms and ant colo...
Solving Combinatorial Optimization Problem is significant a s it abounds in our daily lives. Howe...
This dissertation presents metaheuristic approaches in the areas of genetic algorithms and ant colon...
This thesis addresses the issues associated with conventional genetic algorithms (GA) when applied t...
Solving large combinatorial optimization problems is a ubiquitous task across multiple disciplines. ...
Combinatorial optimization problems usually have a finite number of feasible solutions. However, the...
As a branch of operations research, combinatorial optimization plays important role in obtaining eff...
This paper presents an application of genetic algorithms (GAs) to a well-known traveling salesman pr...
AbstractThe most common application of genetic algorithms to combinatorial optimization problems has...
This article describes the genetic algorithm used to solve the problem related to the scheduling the...
Abstract:- Almost all real-world problems are dynamic and as such not all problem instances are know...
Preface: Advances in Theoretical and Practical Combinatorial Optimization Said Salhi1, Richard Eg...
The motivation for this work is to study complex real-world scenarios and provide tools that can act...
Genetic algorithms are one example of the use of a random element within an algorithm for combinator...
Over the past three decades a significant amount of time and effort has been expended in an attempt...
Powerpoint presentationBioinspired computation methods, such as evolutionary algorithms and ant colo...
Solving Combinatorial Optimization Problem is significant a s it abounds in our daily lives. Howe...
This dissertation presents metaheuristic approaches in the areas of genetic algorithms and ant colon...
This thesis addresses the issues associated with conventional genetic algorithms (GA) when applied t...
Solving large combinatorial optimization problems is a ubiquitous task across multiple disciplines. ...
Combinatorial optimization problems usually have a finite number of feasible solutions. However, the...
As a branch of operations research, combinatorial optimization plays important role in obtaining eff...
This paper presents an application of genetic algorithms (GAs) to a well-known traveling salesman pr...
AbstractThe most common application of genetic algorithms to combinatorial optimization problems has...
This article describes the genetic algorithm used to solve the problem related to the scheduling the...
Abstract:- Almost all real-world problems are dynamic and as such not all problem instances are know...
Preface: Advances in Theoretical and Practical Combinatorial Optimization Said Salhi1, Richard Eg...
The motivation for this work is to study complex real-world scenarios and provide tools that can act...
Genetic algorithms are one example of the use of a random element within an algorithm for combinator...
Over the past three decades a significant amount of time and effort has been expended in an attempt...
Powerpoint presentationBioinspired computation methods, such as evolutionary algorithms and ant colo...