Genetic Algorithms (GA) are useful optimization methods for exploration of the search space, but they usually have slowness problems to exploit and converge to the minimum. On the other hand, gradient based methods converge faster to local minimums, although are not so robust (e.g., flat areas and discontinuities can cause problems) and they lack exploration capabilities. This article presents a hybrid optimization method trying to combine the virtues of genetic and gradient based algorithms, and to overcome their corresponding drawbacks. The performance of the Hybrid Method is compared against a gradient based method and a Genetic Algorithm, both used alone. The rate of convergence of the methods is used to compare their performance. To ta...
An application of hybrid optimization techniques to airfoil design with Navier-Stokes equations is h...
O presente trabalho tem por objetivo o estudo da otimização multiobjetivo aplicada ao projeto de per...
AbstractDifferent evolutionary algorithms, by their very nature, will have different search trajecto...
Genetic Algorithms (GA) are useful optimization methods for exploration of the search space, but the...
Active flow control is an area of heightened interest in the aerospace community. Previous research ...
This study investigates the application of two advanced optimization methods for solving active flow...
Algorithms (EA) are useful optimization methods for exploration of the search space, but they usuall...
Aerodynamic optimization is a very actual problem in aircraft design and airfoils are basic two-dime...
Economic and environmental considerations call for highly sophisticated new aircraft designs. Numeri...
Active control of the flow over an airfoil is an area of heightened interest in the aerospace commun...
Since many aerodynamic optimization problems in the area of aeronautics contain highly nonlinear obj...
The use of Active Flow Control (AFC) technologies to modify the forces acting on streamlined bodies ...
The convergence behaviour of Genetic Algorithms (GAs) applied to aerodynamic optimisation problems f...
With the development of increasingly sophisticated adjoint flow-solvers capable of providing objecti...
In this Master Thesis, an airfoil optimisation using a Genetic Algorithm is developed. This project...
An application of hybrid optimization techniques to airfoil design with Navier-Stokes equations is h...
O presente trabalho tem por objetivo o estudo da otimização multiobjetivo aplicada ao projeto de per...
AbstractDifferent evolutionary algorithms, by their very nature, will have different search trajecto...
Genetic Algorithms (GA) are useful optimization methods for exploration of the search space, but the...
Active flow control is an area of heightened interest in the aerospace community. Previous research ...
This study investigates the application of two advanced optimization methods for solving active flow...
Algorithms (EA) are useful optimization methods for exploration of the search space, but they usuall...
Aerodynamic optimization is a very actual problem in aircraft design and airfoils are basic two-dime...
Economic and environmental considerations call for highly sophisticated new aircraft designs. Numeri...
Active control of the flow over an airfoil is an area of heightened interest in the aerospace commun...
Since many aerodynamic optimization problems in the area of aeronautics contain highly nonlinear obj...
The use of Active Flow Control (AFC) technologies to modify the forces acting on streamlined bodies ...
The convergence behaviour of Genetic Algorithms (GAs) applied to aerodynamic optimisation problems f...
With the development of increasingly sophisticated adjoint flow-solvers capable of providing objecti...
In this Master Thesis, an airfoil optimisation using a Genetic Algorithm is developed. This project...
An application of hybrid optimization techniques to airfoil design with Navier-Stokes equations is h...
O presente trabalho tem por objetivo o estudo da otimização multiobjetivo aplicada ao projeto de per...
AbstractDifferent evolutionary algorithms, by their very nature, will have different search trajecto...