A site selection method of DNS using the particle swarm optimization algorithm
MetadataShow full item record
© 2016 John Wiley & Sons Ltd The Domain Name System (DNS) is an essential component of the functionality of the Internet. With the growing number of domain names and Internet users, the growing rate and number of visit quantity and analytic capacity of DNS are also proportional to the Internet users' size. This study (based on the analysis of access popularity and the distribution of massive DNS log data) aims to optimize the configuration of the DNS sites, which has become an important problem. The ArcGIS software is used to show the temporal and spatial distributions of visit source of DNS logs. This study also analyzes the influence of different sites and the dependence on DNS service in different regions of the world. This information is important to further decision-making on new DNS site selection. This article proposes new DNS site selection solutions, using particle swarm and multi-objective particle swarm optimization algorithms for one new site and multiple sites, respectively. The results from particle swarm optimization, genetic, and simulated annealing algorithms were compared and experimental results confirmed the correctness and effectiveness of the proposed methods. The proposed methods could also be extended to solve other layout related issues, such as onsite facility layout and road network optimization.
Showing items related by title, author, creator and subject.
Particle swarm optimization-based superconducting magnetic energy storage for low-voltage ride-through capability enhancement in wind energy conversion systemHasanien, H.; Muyeen, S.M. (2015)This article presents a novel application of the particle swarm optimization technique to optimally design all the proportional-integral controllers required to control both the real and reactive powers of the superconducting ...
Quality and robustness improvement for real world industrial systems using a fuzzy particle swarm optimizationLing, S.; Chan, Kit Yan; Leung, F.; Jiang, F.; Nguyen, H. (2015)This paper presents a novel fuzzy particle swarm optimization with cross-mutated (FPSOCM) operation, where a fuzzy logic system developed based on the knowledge of swarm intelligence is proposed to determine the inertia ...
Enhancement of speech recognitions for control automation using an intelligent particle swarm optimizationChan, Kit Yan; Yiu, Cedric K.F.; Dillon, Tharam S.; Nordholm, Sven; Ling, S.H. (2012)For over two decades, speech control mechanisms have been widely applied in manufacturing systems such as factory automation, warehouse automation and industrial robotic control for over two decades. To implement speech ...