A Gradient Projection based Hybrid Constrained Optimization Methodology using Genetic Algorithms∗
نویسندگان
چکیده
Genetic Algorithms (GAs) are a highly successful population based approach to solve global optimization problems. They have carved out a niche for themselves in solving optimization problems of varying difficulty levels involving single and multiple objectives. Most real-world optimization problems involve equality and / or inequality constraints and hence posed as constrained optimization problems. The most common approach to solve such problems using GAs is the method of penalty functions, which however suffers from the drawback of appropriate selection of penalty parameters for their optimal functioning. Given the nature of the problems at hand, we have used an adaptive mutation based Real-Coded GA (RGA), which uses a popular penalty parameter-less approach to handle constraints and search the feasible region effectively for the global best solution, and at the same time use an adaptive mutation strategy to maintain diversity in the population to enable creation of new solutions. We have coupled our RGA with ideas from the gradient projection method to specifically handle equality constraints. We have found our simple procedure working quite well in most of the test problems provided as part of the competition on Single-objective Constrained Real Parameter Optimization in CEC 2010 and hence simplicity remains the hallmark of our study here.
منابع مشابه
On the hybrid conjugate gradient method for solving fuzzy optimization problem
In this paper we consider a constrained optimization problem where the objectives are fuzzy functions (fuzzy-valued functions). Fuzzy constrained Optimization (FO) problem plays an important role in many fields, including mathematics, engineering, statistics and so on. In the other side, in the real situations, it is important to know how may obtain its numerical solution of a given interesting...
متن کاملGradient-based Ant Colony Optimization for Continuous Spaces
A novel version of Ant Colony Optimization (ACO) algorithms for solving continuous space problems is presented in this paper. The basic structure and concepts of the originally reported ACO are preserved and adaptation of the algorithm to the case of continuous space is implemented within the general framework. The stigmergic communication is simulated through considering certain direction vect...
متن کاملFunctional Approximation Using Neuro-genetic Hybrid Systems
Artificial neural networks provide a methodology for solving many types of nonlinear problems that are difficult to solve using traditional techniques. Neurogenetic hybrid systems bring together the artificial neural networks benefits and the inherent advantages of evolutionary algorithms. A functional approximation method using neuro-genetic hybrid systems is proposed in this paper. Three evol...
متن کاملConstrained Production Optimization with an Emphasis on Derivative-free Methods
Production optimization involves the determination of optimum well controls to maximize an objective function such as cumulative oil production or net present value. In practice, this problem additionally requires the satisfaction of physical and economic constraints. Thus the overall problem represents a challenging nonlinearly constrained optimization. This work entails a comparative study of...
متن کاملGradient-based Ant Colony Optimization for Continuous Spaces
A novel version of Ant Colony Optimization (ACO) algorithms for solving continuous space problems is presented in this paper. The basic structure and concepts of the originally reported ACO are preserved and adaptation of the algorithm to the case of continuous space is implemented within the general framework. The stigmergic communication is simulated through considering certain direction vect...
متن کامل