A Hybrid Method of Gravitational Search Algorithm and an Adaptive Stochastic Local Search with Application to Function Optimization

Message:
Abstract:
In recent years, hybrid algorithms (HAs) have been successfully applied for solving decision and optimization problems. Nevertheless, selecting good algorithms for hybridization has been a crucial issue in HAs. In this paper, a new hybrid algorithm composed of gravitational search algorithm (GSA) and the proposed adaptive stochastic search (ASS) method is introduced. These effective search algorithmsprovide a good trade-off between exploration and exploitation. The performance of the proposed HA is evaluated in the field of numerical function optimization on 23 standard benchmark functions and also on a practical optimization problem, optimal approximation of linear systems. The results are compared with those of some well-known HAs and confirm the efficiency of the proposed method in solving various nonlinear test functions.
Language:
English
Published:
Journal of Soft Computing and Information Technology, Volume:1 Issue: 4, 2013
Page:
11
https://www.magiran.com/p1337436