Rotational Mutation Genetic Algorithm on optimization Problems

07/22/2013
by   Masoumeh Vali, et al.
0

Optimization problem, nowadays, have more application in all major but they have problem in computation. Calculation of the optimum point in the spaces with the above dimensions is very time consuming. In this paper, there is presented a new approach for the optimization of continuous functions with rotational mutation that is called RM. The proposed algorithm starts from the point which has best fitness value by elitism mechanism. Then, method of rotational mutation is used to reach optimal point. In this paper, RM algorithm is implemented by GA(Briefly RMGA) and is compared with other well- known algorithms: DE, PGA, Grefensstette and Eshelman [15, 16] and numerical and simulation results show that RMGA achieve global optimal point with more decision by smaller generations.

READ FULL TEXT
research
07/21/2013

A New Optimization Approach Based on Rotational Mutation and Crossover Operator

Evaluating a global optimal point in many global optimization problems i...
research
07/22/2013

Sub-Dividing Genetic Method for Optimization Problems

Nowadays, optimization problem have more application in all major but th...
research
11/04/2012

Intelligent Algorithm for Optimum Solutions Based on the Principles of Bat Sonar

This paper presents a new intelligent algorithm that can solve the probl...
research
02/07/2022

VNE Strategy based on Chaotic Hybrid Flower Pollination Algorithm Considering Multi-criteria Decision Making

With the development of science and technology and the need for Multi-Cr...
research
07/22/2013

New Optimization Approach Using Clustering-Based Parallel Genetic Algorithm

In many global Optimization Problems, it is required to evaluate a globa...
research
06/12/2020

A supervised learning approach involving active subspaces for an efficient genetic algorithm in high-dimensional optimization problems

In this work, we present an extension of the genetic algorithm (GA) whic...
research
06/10/2020

Benchmarking a (μ+λ) Genetic Algorithm with Configurable Crossover Probability

We investigate a family of (μ+λ) Genetic Algorithms (GAs) which creates ...

Please sign up or login with your details

Forgot password? Click here to reset