The Case Study of Swarm Intelligence Optimization Algorithm Performance.

Abstract

This paper was study in swarm intelligence optimization algorithm performance nature-inspired meta-heuristic algorithm, especially those based on swarm intelligence. Have attracted much attention in the algorithm Particle Swarm Optimization (PSO), Ant Colony Optimization (ACO), Bacterial Foraging Optimization (BFO). In propose to application to optimization self-experiences with social experiences. Agents moving around in the best solution for search. Examples include flocks of birds, colonies of ants, and E. coli & Chemo taxis. Such intelligence is decentralized, self-organizing and distribution throughout an environment. Functions show that the convergences speed and accuracy of the algorithm.

Authors and Affiliations

Jancy Rani. M, Elangovan. K, Sheela Rani. T

Keywords

Related Articles

A survey: Data Extraction on Web Using Semantic Annotation

The world wide consortium (W3C) standard body provide the semantic Web, has been deploy technology and tool for retrieve context result from semantic database. The goal of Web is to extend the web facilities of web anno...

Contingency Analysis of 30 Bus Power System Using PSAT

Load Flow Study (LFS) is the most important part of system-planning studies and also the starting point for transient and dynamic stability studies. The load flow problem models the nonlinear relationships among bus pow...

An Efficient Video Transmission by Reducing the Packet Loss Using HEVC

to protect real-time video transmission over unreliable networks, packet-level forward error correction (fec) codes are widely studied. When the number of redundancy packets are determined, with fec coding block size th...

Big Data – Literature Survey

In the past few years, tremendous changes are happening in Cloud Computing, Big Data, Communication technology and Internet of things. Shift to the latest technology is envisaging new upcoming challenges. Big Data is b...

An Effective User Revocation and Anti - Collusion System for Dynamic Groups in Cloud

The objective of the project is to develop a simple and effective collusion resistant dynamic group model for cloud. The workloads in cloud often contain sensitive information. The major problem in public clouds is to s...

Download PDF file
  • EP ID EP22493
  • DOI -
  • Views 209
  • Downloads 5

How To Cite

Jancy Rani. M, Elangovan. K, Sheela Rani. T (2016). The Case Study of Swarm Intelligence Optimization Algorithm Performance.. International Journal for Research in Applied Science and Engineering Technology (IJRASET), 4(8), -. https://europub.co.uk/articles/-A-22493