Parameter Selection for Swarm Intelligence Algorithms: Case Study on Parallel Implementation of FSS

Menezes Breno, Wrede Fabian, Kuchen Herbert, Buarque Fernando

Research article in edited proceedings (conference) | Peer reviewed

Abstract

Swarm Intelligence (SI) algorithms, such as Fish School Search (FSS), are well known as useful tools that can be used to achieve a good solution in a reasonable amount of time for complex optimization problems. And when problems increase in size and complexity, some increase in population size or number of iterations might be needed in order to achieve a good solution. In extreme cases, the execution time can be huge and other approaches, such as parallel implementations, might help to reduce it. This paper investigates the relation and trade off involving these three aspects in SI algorithms, namely population size, number of iterations, and problem complexity. The results with a parallel implementations of FSS show that increasing the population size is beneficial for finding good solutions. However, we observed an asymptotic behavior of the results, i.e. increasing the population over a certain threshold only leads to slight improvements.

Details about the publication

StatusPublished
Release year2018 (08/02/2018)
Language in which the publication is writtenEnglish
Conference4th IEEE Latin American Conference on Computational Intelligence (LA-CCI '17), Arequipa, Peru, undefined
DOI10.1109/LA-CCI.2017.8285694
Link to the full texthttp://ieeexplore.ieee.org/document/8285694/
KeywordsParameter Selection; Swarm Intelligence; Fish School Search; Parallel Implementation; Computational Intelligence

Authors from the University of Münster

Buarque, Fernando
Chair of Information Systems and Supply Chain Management (Logistik)
Kuchen, Herbert
Practical Computer Science Group (PI)
Menezes, Breno
Practical Computer Science Group (PI)
Wrede, Fabian
Practical Computer Science Group (PI)