Extended firefly algorithm for multimodal optimization

Publikation: KonferenzbeitragPaperForschungBegutachtung

Abstract

Many real world optimization problems have to be treated as multi-objective optimization problems. The Firefly Algorithm (FFA), a stochastic optimization method mimics the behavior of fireflies, which use a kind of flashing light to communicate with other members of their species. FFA is implicitly able to detect good local solutions on its way to the best solution. This disposition is successfully boosted by identifying clusters of fireflies which gather around promising local solutions. Subsequently, the update rules used for finding the new positions of the fireflies are applied among members of the particular clusters only. This extended FFA will be used to solve the well known Rastrigin test function and an electromagnetic field problems, the optimal design of a magneto-rheologic clutch, respectively.
Originalspracheenglisch
Seitenumfang4
DOIs
PublikationsstatusVeröffentlicht - 15 Aug 2016
VeranstaltungXVI-th International Symposium on Electrical Apparatus and Technologies, SIELA 2009 - Bourgas, Bulgarien
Dauer: 4 Jun 20096 Jun 2009

Konferenz

KonferenzXVI-th International Symposium on Electrical Apparatus and Technologies, SIELA 2009
LandBulgarien
OrtBourgas
Zeitraum4/06/096/06/09

Schlagwörter

  • Clustering algorithms, Linear programming, Sociology, Statistics, Algorithm design and analysis, Optimization methods

ASJC Scopus subject areas

  • !!Electrical and Electronic Engineering

Dies zitieren

Hackl, A., Magele, C., & Renhart, W. (2016). Extended firefly algorithm for multimodal optimization. Beitrag in XVI-th International Symposium on Electrical Apparatus and Technologies, SIELA 2009, Bourgas, Bulgarien. https://doi.org/10.1109/SIELA.2016.7543010

Extended firefly algorithm for multimodal optimization. / Hackl, Andreas; Magele, Christian; Renhart, Werner.

2016. Beitrag in XVI-th International Symposium on Electrical Apparatus and Technologies, SIELA 2009, Bourgas, Bulgarien.

Publikation: KonferenzbeitragPaperForschungBegutachtung

Hackl A, Magele C, Renhart W. Extended firefly algorithm for multimodal optimization. 2016. Beitrag in XVI-th International Symposium on Electrical Apparatus and Technologies, SIELA 2009, Bourgas, Bulgarien. https://doi.org/10.1109/SIELA.2016.7543010
Hackl, Andreas ; Magele, Christian ; Renhart, Werner. / Extended firefly algorithm for multimodal optimization. Beitrag in XVI-th International Symposium on Electrical Apparatus and Technologies, SIELA 2009, Bourgas, Bulgarien.4 S.
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