Jayeshkumar Madhubhai Patel

Work place: MCA Programme, Ganpat University, Kherva, Gujarat, India

E-mail: jayeshpatel_mca@yahoo.com

Website:

Research Interests:

Biography

Dr. Jayesh Patel, having rich experience of 13 Years in Academics (MCA, M.Phil, Ph.D. Programme), Industry, Research, and International exposure, is holding Doctorate in ERP (Computer Science) from North Gujarat University. Rewarding his research work, he has been awarded “Career Award for Young Teachers” from AICTE, New Delhi. He is working as a recognized Ph.D. Guide at Gujarat Technological University, North Gujarat University, Ganpat University and also with many other reputed universities. He has good number of research under his name and presented more than 57 research papers in International and National Journals and Conferences. He has delivered number of expert talk in SANDHAN Programme and UGC Sponsored Orientation Programme. He is also the member of the board of studies and selection committees of different universities. He is also nominated by Department of Education, Govt. of Gujarat as a Coordinator at SANDHAN Program for Computer Science Subject.

Author Articles
Investigating Performance of Various Natural Computing Algorithms

By Bharat V. Chawda Jayeshkumar Madhubhai Patel

DOI: https://doi.org/10.5815/ijisa.2017.01.05, Pub. Date: 8 Jan. 2017

Nature is there since millenniums. Natural elements have withstood harsh complexities since years and have proved their efficiency in tackling them. This aspect has inspired many researchers to design algorithms based on phenomena in the natural world since the last couple of decades. Such algorithms are known as natural computing algorithms or nature inspired algorithms. These algorithms have established their ability to solve a large number of real-world complex problems by providing optimal solutions within the reasonable time duration. This paper presents an investigation by assessing the performance of some of the well-known natural computing algorithms with their variations. These algorithms include Genetic Algorithms, Ant Colony Optimization, River Formation Dynamics, Firefly Algorithm and Cuckoo Search. The Traveling Salesman Problem is used here as a test bed problem for performance evaluation of these algorithms. It is a kind of combinatorial optimization problem and known as one the most famous NP-Hard problems. It is simple and easy to understand, but at the same time, very difficult to find the optimal solution in a reasonable time – particularly with the increase in a number of cities. The source code for the above natural computing algorithms is developed in MATLAB R2015b and applied on several TSP instances given in TSPLIB library. Results obtained are analyzed based on various criteria such as tour length, required iterations, convergence time and quality of solutions. Conclusions derived from this analysis help to establish the superiority of Firefly Algorithms over the other algorithms in comparative terms.

[...] Read more.
Other Articles