<会議発表論文>
Acceleration for Fireworks Algorithm Based on Amplitude Reduction Strategy and Local Optima-based Selection Strategy

作成者
本文言語
出版者
発行日
収録物名
開始ページ
終了ページ
会議情報
出版タイプ
アクセス権
関連DOI
関連HDL
概要 We propose two strategies for improving the performance of the Fireworks Algorithm (FWA). The first strategy is to decrease the amplitude of each firework according to the generation, where each firew...ork has the same initial amplitude and decreases in size every generation rather than by dynamic allocation based on its fitness. The second strategy is a local optima-based selection of a firework in the next generation rather than the distance-based selection of the original FWA. We design a set of controlled experiments to evaluate these proposed strategies and run them with 20 benchmark functions in three different dimensions of 2-D, 10-D and 30-D. The experimental results demonstrate that both of the two proposed strategies can significantly improve the performance of the original FWA. The performance of the combination of the two proposed strategies can further improve that of each strategy in almost all cases.続きを見る

本文ファイル

pdf ICSI2017_6 pdf なし 256 KB 691  

詳細

レコードID
主題
助成情報
登録日 2018.02.07
更新日 2024.12.02