Evolutionary Algorithms have proved to be a powerful tool for solving complex optimization problems. The underlying physical and biological strategies can equally be described by a Schrödinger equation. The properties of the dynamics of optimization are encoded in the spectrum of the Hamiltonian. Analytic solutions and convergence velocity of the dynamics are calculated and compared with simulations of the corresponding algorithms. The connection between physical and biological strategies is analyzed. Mixing both strategies creates a new basic class of Evolutionary Algorithms improving robustness and velocity of optimization
Evolutionary algorithms are widespread heuristic methods inspired by natural evolution to solve diff...
Abstract If the optimization problem is dynamic, the goal is no longer to find the extrema, but to t...
ABSTRACT By the advances in the Evolution Algorithms (EAs) and the intelligent optimization methods...
Abstract. Evolution strategies are inspired in biology and form part of a larger research field know...
Evolutionary algorithms are successively applied to wide optimization problems in the engineering, m...
Evolutionary processes have attracted considerable interest in recent years for solving a variety of...
Abstract. This paper is concerned with the application of evolutionary strategies to the opti-mizati...
Evolutionary algorithms (EA) are a computation tool that utilizes biological principles found in th...
In recent times computational algorithms inspired by biological processes and evolution are gaining ...
If the optimization problem is dynamic, the goal is no longer to find the extrema, but to track thei...
International audienceEvolution strategies are evolutionary algorithms that date back to the 1960s a...
. We investigate the biologically motivated selfreproduction strategies, by numerical and analytical...
The use of numerical optimization techniques on simulation models is a developing field. Many of the...
The use of numerical optimization techniques on simulation models is a developing field. Many of the...
This book provides a compilation on the state-of-the-art and recent advances of evolutionary computa...
Evolutionary algorithms are widespread heuristic methods inspired by natural evolution to solve diff...
Abstract If the optimization problem is dynamic, the goal is no longer to find the extrema, but to t...
ABSTRACT By the advances in the Evolution Algorithms (EAs) and the intelligent optimization methods...
Abstract. Evolution strategies are inspired in biology and form part of a larger research field know...
Evolutionary algorithms are successively applied to wide optimization problems in the engineering, m...
Evolutionary processes have attracted considerable interest in recent years for solving a variety of...
Abstract. This paper is concerned with the application of evolutionary strategies to the opti-mizati...
Evolutionary algorithms (EA) are a computation tool that utilizes biological principles found in th...
In recent times computational algorithms inspired by biological processes and evolution are gaining ...
If the optimization problem is dynamic, the goal is no longer to find the extrema, but to track thei...
International audienceEvolution strategies are evolutionary algorithms that date back to the 1960s a...
. We investigate the biologically motivated selfreproduction strategies, by numerical and analytical...
The use of numerical optimization techniques on simulation models is a developing field. Many of the...
The use of numerical optimization techniques on simulation models is a developing field. Many of the...
This book provides a compilation on the state-of-the-art and recent advances of evolutionary computa...
Evolutionary algorithms are widespread heuristic methods inspired by natural evolution to solve diff...
Abstract If the optimization problem is dynamic, the goal is no longer to find the extrema, but to t...
ABSTRACT By the advances in the Evolution Algorithms (EAs) and the intelligent optimization methods...