Optimization is necessary for finding appropriate solutions to a range of real-life problems. In particular, genetic (or more generally, evolutionary) algorithms have proved very useful in solving many problems for which analytical solutions are not available. In this paper, we present an optimization algorithm called Dynamic Schema with Dissimilarity and Similarity of Chromosomes (DSDSC) which is a variant of the classical genetic algorithm. This approach constructs new chromosomes from a schema and pairs of existing ones by exploring their dissimilarities and similarities. To show the effectiveness of the algorithm, it is tested and compared with the classical GA, on 15 two-dimensional optimization problems taken from literature. We have ...
Recently, a wealthy of research works has been dedicated to the design of effective and efficient ge...
Genetic algorithm (GA) is a well known algorithm applied to a wide variety of optimization problems ...
John Holland and his colleagues at the University of Michigan introduced genetic algorithms (GAs) in...
Optimization is essential for nding suitable answers to real life problems. In particular, genetic (...
Optimization is essential for nding suitable answers to real life problems. In particular, genetic (...
An improved evolutionary algorithm (SCAGA) is proposed in this paper for solving optimization proble...
In this work, six evolutionary algorithms are constructed and programmed by using Graphic User Inter...
[[abstract]]Genetic algorithm is a novel optimization technique for solving constrained optimization...
This article introduces the concept of variable chromosome lengths in the context of an adaptive gen...
Genetic algorithm (GA) is a well-known population-based optimization algorithm. GA utilizes a random...
The complicated nature of modern scientific endeavors often times requires the employment of black-b...
Classical Genetic Algorithms (CGA) are known to find good sub-optimal solutions for complex and intr...
The genetic algorithm, a search and optimization technique based on the theory of natural selection,...
The past thirty years have seen a rapid growth in the popularity and use of Genetic Algorithms for s...
In this work, a genetic algorithm (GA) for multiobjective topology optimization of linear elastic st...
Recently, a wealthy of research works has been dedicated to the design of effective and efficient ge...
Genetic algorithm (GA) is a well known algorithm applied to a wide variety of optimization problems ...
John Holland and his colleagues at the University of Michigan introduced genetic algorithms (GAs) in...
Optimization is essential for nding suitable answers to real life problems. In particular, genetic (...
Optimization is essential for nding suitable answers to real life problems. In particular, genetic (...
An improved evolutionary algorithm (SCAGA) is proposed in this paper for solving optimization proble...
In this work, six evolutionary algorithms are constructed and programmed by using Graphic User Inter...
[[abstract]]Genetic algorithm is a novel optimization technique for solving constrained optimization...
This article introduces the concept of variable chromosome lengths in the context of an adaptive gen...
Genetic algorithm (GA) is a well-known population-based optimization algorithm. GA utilizes a random...
The complicated nature of modern scientific endeavors often times requires the employment of black-b...
Classical Genetic Algorithms (CGA) are known to find good sub-optimal solutions for complex and intr...
The genetic algorithm, a search and optimization technique based on the theory of natural selection,...
The past thirty years have seen a rapid growth in the popularity and use of Genetic Algorithms for s...
In this work, a genetic algorithm (GA) for multiobjective topology optimization of linear elastic st...
Recently, a wealthy of research works has been dedicated to the design of effective and efficient ge...
Genetic algorithm (GA) is a well known algorithm applied to a wide variety of optimization problems ...
John Holland and his colleagues at the University of Michigan introduced genetic algorithms (GAs) in...