SWAF: Swarm Algorithm Framework for Numerical Optimization

05/25/2005
by   Xiao-Feng Xie, et al.
0

A swarm algorithm framework (SWAF), realized by agent-based modeling, is presented to solve numerical optimization problems. Each agent is a bare bones cognitive architecture, which learns knowledge by appropriately deploying a set of simple rules in fast and frugal heuristics. Two essential categories of rules, the generate-and-test and the problem-formulation rules, are implemented, and both of the macro rules by simple combination and subsymbolic deploying of multiple rules among them are also studied. Experimental results on benchmark problems are presented, and performance comparison between SWAF and other existing algorithms indicates that it is efficiently.

READ FULL TEXT
research
02/11/2017

Whale swarm algorithm for function optimization

Increasing nature-inspired metaheuristic algorithms are applied to solvi...
research
09/28/2017

PSA: A novel optimization algorithm based on survival rules of porcellio scaber

Bio-inspired algorithms have received a significant amount of attention ...
research
01/05/2014

Multimodal Optimization by Sparkling Squid Populations

The swarm intelligence of animals is a natural paradigm to apply to opti...
research
06/06/2012

MACS: An Agent-Based Memetic Multiobjective Optimization Algorithm Applied to Space Trajectory Design

This paper presents an algorithm for multiobjective optimization that bl...
research
04/03/2017

Realizing an optimization approach inspired from Piagets theory on cognitive development

The objective of this paper is to introduce an artificial intelligence b...
research
04/09/2018

Whale swarm algorithm with iterative counter for multimodal function optimization

Most real-world optimization problems often come with multiple global op...
research
06/01/2022

Post-Disaster Repair Crew Assignment Optimization Using Minimum Latency

Across infrastructure domains, physical damage caused by storms and othe...

Please sign up or login with your details

Forgot password? Click here to reset