SOLVING QUADRATIC ASSIGNMENT PROBLEMS USING A HYBRID NATURE-INSPIREDTECHNIQUE

No Thumbnail Available

Date

2012-02

Journal Title

Journal ISSN

Volume Title

Publisher

International Journal of Current Research (IJCR)

Abstract

Nature provides motivation to scientists in many ways. Scientists have started to realize that nature is a great source ofinspiration to develop intelligent systems and techniques. Nature- Inspired algorithms is a kind of algorithms that imitate theproblem-solving behavior from nature. Consultant Guided Search algorithm (CGS) and Genetic algorithm (GA) are some of theNature-Inspired Metaheuristic Algorithms inspired from Nature. In this paper, Consultant Guided Search algorithm (CGS) washybridized with Genetic algorithm (GA) and a new technique was proposed. The proposed Consultant Guided Search – Geneticalgorithm (CGS-GA) was implemented to solve the benchmark instances of Quadratic Assignment Problem (QAP). Theperformance of the proposed CGS-GA was compared with CGS algorithm. Results have shown that the proposed CGS-GA hasoutperformed CGS in arriving at improved optimal solutions for various test instances of Quadratic Assignment Problem

Description

Keywords

Nature- Inspired algorithms, Consultant Guided Search algorithm, Genetic algorithm, Consultant Guided Search -Genetic algorithm

Citation

Endorsement

Review

Supplemented By

Referenced By