Volume 14 - Issue 4
A Comparative Performance Evaluation of Swarm Intelligence Techniques
Abstract
Nowadays Swarm Intelligent based optimizations techniques are becoming popular for solving modern engineering problems. This paper presents a programmable resultant numerical comparative analysis of optimization algorithms namely, Artificial Bee Colony Algorithm (ABCA), Ant Colony Optimization Algorithm (ACOA), Fire-fly Algorithm (FFA) and Particle Swarm Optimization Algorithm (PSOA). Fitness functions are the part of the algorithms to determine the fitness of values. Various generalised fitness functions such as beale, bukin, etc. are programmed for considered algorithms. These fitness functions are used to simulate the considered algorithms and the obtained results are tabulated and compared in this paper.
Paper Details
PaperID: 181014
Author's Name: B. Gireesha
Volume: Volume 14
Issues: Issue 4
Keywords: Swarm Intelligent Optimizations Techniques (OT), Artificial Intelligence (AI), Artificial BeeColony (ABC) Algorithm, Particle Swarm Optimization (PSO), Ant Colony Optimization (ACO), Firefly Algorithm (FFA), Fitness Functions
Year: 2018
Month: July
Pages: 14-20