In this article, we aim to extend the firefly algorithm (FA) to solve bound constrained mixed-integer nonlinear programming (MINLP) problems. An exact penalty continuous formulation of the MINLP problem is used. The continuous penalty problem comes out by relaxing the integrality constraints and by adding a penalty term to the objective function that aims to penalize integrality constraint violation. Two penalty terms are proposed, one is based on the hyperbolic tangent function and the other on the inverse hyperbolic sine function. We prove that both penalties can be used to define the continuous penalty problem, in the sense that it is equivalent to the MINLP problem. The solutions of the penalty problem are obtained using a variant of ...
We introduce the concept of partially strictly monotone functions and apply it to construct a class ...
Abstract. Many optimization problems involve integer and continuous variables that can be modeled as...
Many optimization problems involve integer and continuous variables that can be modeled as mixed int...
In this article, we aim to extend the firefly algorithm (FA) to solve bound constrained mixedinteger...
An extension of the firefly algorithm (FA) for solving mixed-integer nonlinear programming (MINLP) p...
A penalty framework for globally solving mixed-integer nonlinear programming problems is presented. ...
A practical comparison of penalty functions for globally solving mixed-integer nonlinear programming...
In this paper, we present a comparative study involving several penalty functions that can be used i...
We propose an exact penalty approach for solving mixed integer nonlinear programming (MINLP) problem...
This paper presents a penalty approach for globally solving nonsmooth and nonconvex mixed-integer no...
A practical comparison of penalty functions for globally solving mixed-integer nonlinear programming...
In this work, we propose a global optimization approach for mixed-integer programming problems. To t...
In this paper, we propose an algorithm for constrained global optimization of mixed-integer nonlinea...
This paper proposes a self-adaptive penalty function and presents a penalty-based algorithm for solv...
Abstract. We consider the following classes of nonlinear programming problems: the minimization of s...
We introduce the concept of partially strictly monotone functions and apply it to construct a class ...
Abstract. Many optimization problems involve integer and continuous variables that can be modeled as...
Many optimization problems involve integer and continuous variables that can be modeled as mixed int...
In this article, we aim to extend the firefly algorithm (FA) to solve bound constrained mixedinteger...
An extension of the firefly algorithm (FA) for solving mixed-integer nonlinear programming (MINLP) p...
A penalty framework for globally solving mixed-integer nonlinear programming problems is presented. ...
A practical comparison of penalty functions for globally solving mixed-integer nonlinear programming...
In this paper, we present a comparative study involving several penalty functions that can be used i...
We propose an exact penalty approach for solving mixed integer nonlinear programming (MINLP) problem...
This paper presents a penalty approach for globally solving nonsmooth and nonconvex mixed-integer no...
A practical comparison of penalty functions for globally solving mixed-integer nonlinear programming...
In this work, we propose a global optimization approach for mixed-integer programming problems. To t...
In this paper, we propose an algorithm for constrained global optimization of mixed-integer nonlinea...
This paper proposes a self-adaptive penalty function and presents a penalty-based algorithm for solv...
Abstract. We consider the following classes of nonlinear programming problems: the minimization of s...
We introduce the concept of partially strictly monotone functions and apply it to construct a class ...
Abstract. Many optimization problems involve integer and continuous variables that can be modeled as...
Many optimization problems involve integer and continuous variables that can be modeled as mixed int...