In this paper, we consider a general class of nonlinear mixed discrete programming problems. By introducing continuous variables to replace the discrete variables, the problem is first transformed into an equivalent nonlinear continuous optimization problem subject to original constraints and additional linear and quadratic constraints. Then, an exact penalty function is employed to construct a sequence of unconstrained optimization problems, each of which can be solved effectively by unconstrained optimization techniques, such as conjugate gradient or quasi-Newton methods. It is shown that any local optimal solution of the unconstrained optimization problem is a local optimal solution of the transformed nonlinear constrained continuous opt...
Vita.In this dissertation, the problem of optimizing a nonlinear objective function subject to linea...
Methods which do not use any derivative information are becoming popular among researchers, since th...
AbstractThis paper presents a heuristic approach for minimizing nonlinear mixed discrete-continuous ...
The main motivation of this paper is to weaken the conditions that imply the correspondence between ...
We propose an exact penalty approach for solving mixed integer nonlinear programming (MINLP) problem...
We introduce the concept of partially strictly monotone functions and apply it to construct a class ...
In this paper it is shown that, given a nonlinear programming problem with inequality constraints, i...
AbstractThis paper presents a heuristic approach for minimizing nonlinear mixed discrete-continuous ...
In this thesis, We propose new computational algorithms and methods for solving four classes of ...
In this paper we define a new continuously differentiable exact penalty function for the solution of...
In this paper a new continuously differentiable exact penalty function is introduced for the solutio...
We introduce the concept of partially strictly monotone functions and apply it to construct a class ...
The non-linear programming problem seeks to maximize a function f(x) where the n component vector x ...
AbstractIn this paper, we propose a novel objective penalty function for inequality constrained opti...
In this paper we consider a particular class of nonlinear optimization problems involving both conti...
Vita.In this dissertation, the problem of optimizing a nonlinear objective function subject to linea...
Methods which do not use any derivative information are becoming popular among researchers, since th...
AbstractThis paper presents a heuristic approach for minimizing nonlinear mixed discrete-continuous ...
The main motivation of this paper is to weaken the conditions that imply the correspondence between ...
We propose an exact penalty approach for solving mixed integer nonlinear programming (MINLP) problem...
We introduce the concept of partially strictly monotone functions and apply it to construct a class ...
In this paper it is shown that, given a nonlinear programming problem with inequality constraints, i...
AbstractThis paper presents a heuristic approach for minimizing nonlinear mixed discrete-continuous ...
In this thesis, We propose new computational algorithms and methods for solving four classes of ...
In this paper we define a new continuously differentiable exact penalty function for the solution of...
In this paper a new continuously differentiable exact penalty function is introduced for the solutio...
We introduce the concept of partially strictly monotone functions and apply it to construct a class ...
The non-linear programming problem seeks to maximize a function f(x) where the n component vector x ...
AbstractIn this paper, we propose a novel objective penalty function for inequality constrained opti...
In this paper we consider a particular class of nonlinear optimization problems involving both conti...
Vita.In this dissertation, the problem of optimizing a nonlinear objective function subject to linea...
Methods which do not use any derivative information are becoming popular among researchers, since th...
AbstractThis paper presents a heuristic approach for minimizing nonlinear mixed discrete-continuous ...