Amarjeet Singh

Work place: Department of Mathematics, Indian Institute of Technology Roorkee, Roorkee – 247667, Uttarakhand, India

E-mail: amarjeetiitr@gmail.com

Website:

Research Interests: Algorithm Design, Combinatorial Optimization

Biography

Mr. Amarjeet Singh, is a Research Scholar, with the Department of Mathematics, Indian Institute of Technology Roorkee, India. Born on July 2, 1987, he pursued B.Sc from C. C. S. University Meerut in 2006 and M.Sc from Indian Institute of Technology Roorkee in 2010. He was awarded ‘Shyam & Pushp Garg Annual Excellence Award’ for outstanding academic, co-curricular and extra-curricular achievements in 2009. Presently, he is pursuing Ph.D. since August 7, 2012.

His areas of specialization are numerical optimization and their applications to engineering, science and industry. Currently his research interests are Nature Inspired Optimization Techniques, particularly, Gravitational Search Algorithm, Glowworm Optimization, and their applications to solve real life problems.

Author Articles
Real Coded Genetic Algorithm Operators Embedded in Gravitational Search Algorithm for Continuous Optimization

By Amarjeet Singh Kusum Deep

DOI: https://doi.org/10.5815/ijisa.2015.12.01, Pub. Date: 8 Nov. 2015

The objective of this paper is to propose three modified versions of the Gravitational Search Algorithm for continuous optimization problems. Although the Gravitational Search Algorithm is a recently introduced promising memory-less heuristic but its performance is not so satisfactory in multimodal problems particularly during the later iterations. With a view to improve the exploration and exploitation capabilities of GSA, it is hybridized with well-known real coded genetic algorithm operators. The first version is the hybridization of GSA with Laplace Crossover which was initially designed for real coded genetic algorithms. The second version is the hybridization of GSA with Power Mutation which also was initially designed for real coded genetic algorithms. The third version hybridizes the GSA with both the Laplace Crossover and the Power mutation. The performance of the original GSA and the three proposed variants is investigated over a set of 23 benchmark problems considered in the original paper of GSA. Next, all the four variants are implemented on 30 rotated and shifted benchmark problems of CEC 2014. The extensive numerical, graphical and statistical analysis of the results show that the third version incorporating the Laplace Crossover and Power mutation is a definite improvement over the other variants.

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