This paper contains two main parts, Part I and Part II, which discuss the local and global minimization problems, respectively. In Part I, a fresh conjugate gradient (CG) technique is suggested and then combined with a line-search technique to obtain a globally convergent algorithm. The finite difference approximations approach is used to compute the approximate values of the first derivative of the function f. The convergence analysis of the suggested method is established. The comparisons between the performance of the new CG method and the performance of four other CG methods demonstrate that the proposed CG method is promising and competitive for finding a local optimum point. In Part II, three formulas are designed by which a group of ...
The main work of this thesis is concerned with the comparison of conjugate gradient with hybrid conj...
Conjugate Gradient (CG) methods are widely used for solving unconstrained optimization problems. The...
The method of conjugate gradients provides a very effective way to optimize large, deterministic sys...
In this paper, we propose a new hybrid conjugate gradient method for unconstrained optimization prob...
The hybrid conjugate gradient (CG) method is among the efficient variants of CG method for solving o...
On some studies a conjugate parameter plays an important role for the conjugate gradient methods. In...
In this paper, we proposed a new hybrid conjugate gradient algorithm for solving unconstrained optim...
In this paper, a new search direction vectors are defined for BFGS-CG proposed by Ibrahim et al. by ...
The nonlinear conjugate gradient algorithms are a very effective way in solving large-scale unconstr...
The conjugate gradient method an efficient technique for solving the unconstrained optimization prob...
Global optimization problems involve essential difficulties as, for instance, avoiding convergence t...
Nonlinear conjugate gradient (CG) method holds an important role in solving large-scale unconstraine...
Abstract: The conjugate gradient method (CG) is usually used with a preconditioner which i...
The conjugate gradient (CG) scheme is regarded as among the efficient methods for large-scale optimi...
The genetic algorithm (GA) have good global search characteristics and local optimizing algorithm (L...
The main work of this thesis is concerned with the comparison of conjugate gradient with hybrid conj...
Conjugate Gradient (CG) methods are widely used for solving unconstrained optimization problems. The...
The method of conjugate gradients provides a very effective way to optimize large, deterministic sys...
In this paper, we propose a new hybrid conjugate gradient method for unconstrained optimization prob...
The hybrid conjugate gradient (CG) method is among the efficient variants of CG method for solving o...
On some studies a conjugate parameter plays an important role for the conjugate gradient methods. In...
In this paper, we proposed a new hybrid conjugate gradient algorithm for solving unconstrained optim...
In this paper, a new search direction vectors are defined for BFGS-CG proposed by Ibrahim et al. by ...
The nonlinear conjugate gradient algorithms are a very effective way in solving large-scale unconstr...
The conjugate gradient method an efficient technique for solving the unconstrained optimization prob...
Global optimization problems involve essential difficulties as, for instance, avoiding convergence t...
Nonlinear conjugate gradient (CG) method holds an important role in solving large-scale unconstraine...
Abstract: The conjugate gradient method (CG) is usually used with a preconditioner which i...
The conjugate gradient (CG) scheme is regarded as among the efficient methods for large-scale optimi...
The genetic algorithm (GA) have good global search characteristics and local optimizing algorithm (L...
The main work of this thesis is concerned with the comparison of conjugate gradient with hybrid conj...
Conjugate Gradient (CG) methods are widely used for solving unconstrained optimization problems. The...
The method of conjugate gradients provides a very effective way to optimize large, deterministic sys...