The problem of finding the global minimum of a real function on a set S ⊆ RN occurs in many real world problems. In this paper, the global optimization problem with a multiextremal objective function satisfying the Lipschitz condition over a hypercube is considered. We propose a local tuning technique that adaptively estimates the local Lipschitz constants over different zones of the search region and a technique, called the local improvement, in order to accelerate the search. Peano-type space-filling curves for reduction of the dimension of the problem are used. Convergence condition are given. Numerical experiments executed on several hundreds of test functions show quite a promising performance of the introduced acceleration techniques
This paper deals with two kinds of the one-dimensional global optimization problem over a closed fin...
This paper deals with two kinds of the one-dimensional global optimization problem over a closed fin...
AbstractNumerical methods for global optimization of the multidimensional multiextremal functions in...
In this paper the global optimization problem of a multiextremal function satisfying the Lipschitz ...
In this paper, the global optimization problem min F(y) y∈S, with S=[a,b], a, b ∈ R^N, and F(y) sati...
In this paper the global optimization problem where the objective function is multiextremal and sati...
In this paper, the global optimization problem with a multiextremal objective function satisfying t...
In this paper, the global optimization problem with a multiextremal objective function satisfying t...
In this paper the global optimization problem where the objective function is multiextremal and sati...
In this paper, the global optimization problem miny∈SF(y) with S being a hyperinterval in RN and F(y...
In this paper, the Lipschitz global optimization problem is considered both in the cases of non-diff...
In this paper, the Lipschitz global optimization problem is considered both in the cases of non-diff...
Many real-world problems involve multivariate global optimization which can be difficult to solve. I...
Many real-world problems involve multivariate global optimization which can be difficult to solve. I...
In this paper, the global optimization problem miny∈SF(y) with S being a hyperinterval in RN and F(y...
This paper deals with two kinds of the one-dimensional global optimization problem over a closed fin...
This paper deals with two kinds of the one-dimensional global optimization problem over a closed fin...
AbstractNumerical methods for global optimization of the multidimensional multiextremal functions in...
In this paper the global optimization problem of a multiextremal function satisfying the Lipschitz ...
In this paper, the global optimization problem min F(y) y∈S, with S=[a,b], a, b ∈ R^N, and F(y) sati...
In this paper the global optimization problem where the objective function is multiextremal and sati...
In this paper, the global optimization problem with a multiextremal objective function satisfying t...
In this paper, the global optimization problem with a multiextremal objective function satisfying t...
In this paper the global optimization problem where the objective function is multiextremal and sati...
In this paper, the global optimization problem miny∈SF(y) with S being a hyperinterval in RN and F(y...
In this paper, the Lipschitz global optimization problem is considered both in the cases of non-diff...
In this paper, the Lipschitz global optimization problem is considered both in the cases of non-diff...
Many real-world problems involve multivariate global optimization which can be difficult to solve. I...
Many real-world problems involve multivariate global optimization which can be difficult to solve. I...
In this paper, the global optimization problem miny∈SF(y) with S being a hyperinterval in RN and F(y...
This paper deals with two kinds of the one-dimensional global optimization problem over a closed fin...
This paper deals with two kinds of the one-dimensional global optimization problem over a closed fin...
AbstractNumerical methods for global optimization of the multidimensional multiextremal functions in...