NENov 25, 2019

Dragonfly Algorithm and its Applications in Applied Science -- Survey

arXiv:2001.02292v1108 citations
AI Analysis

It offers a comprehensive review for researchers interested in heuristic optimization, but it is incremental as it synthesizes existing work without introducing new methods.

This survey provides an overview of the dragonfly algorithm, its variants, hybridizations, and applications in areas like machine learning and image processing, showing it has better convergence rates than algorithms like PSO and GA on benchmark functions.

One of the most recently developed heuristic optimization algorithms is dragonfly by Mirjalili. Dragonfly algorithm has shown its ability to optimizing different real world problems. It has three variants. In this work, an overview of the algorithm and its variants is presented. Moreover, the hybridization versions of the algorithm are discussed. Furthermore, the results of the applications that utilized dragonfly algorithm in applied science are offered in the following area: Machine Learning, Image Processing, Wireless, and Networking. It is then compared with some other metaheuristic algorithms. In addition, the algorithm is tested on the CEC-C06 2019 benchmark functions. The results prove that the algorithm has great exploration ability and its convergence rate is better than other algorithms in the literature, such as PSO and GA. In general, in this survey the strong and weak points of the algorithm are discussed. Furthermore, some future works that will help in improving the algorithm's weak points are recommended. This study is conducted with the hope of offering beneficial information about dragonfly algorithm to the researchers who want to study the algorithm.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes