Single Objective Genetic Algorithm

バージョン 1.0.0.0 (3.85 KB) 作成者: SKS Labs
Single Objective Genetic Algorithm with SBX Crossover & Polynomial Mutation
ダウンロード: 1.2K
更新 2018/1/19

ライセンスの表示

Genetic Algorithm is a single objective optimization technique for unconstrained optimization problems.
There are numerous implementations of GA and this one employs SBX Crossover and Polynomial Mutation.
This code is derived from the multi-objective implementation of NSGA-II by Arvind Sheshadari [1].

Note:
(i) Unlike other computational intelligence techniques, the number of functional evaluations cannot be deterministically determined based on the population size and the number of iterations.

(ii) The user defined parameters are (a) the population size, (b) the number of iterations, (c) the distribution index for the SBX operator, (d) the distribution index for polynomial mutation, (e) the tour size in the tournament selction and (f) the crossover probability. In this implementation, the pool size is set to half of the population size (rounded if the population size is an odd number). However this can be changed by the user.

(iii) This implementation ensures monotonic convergence.

References:
(1) https://in.mathworks.com/matlabcentral/fileexchange/10429-nsga-ii--a-multi-objective-optimization-algorithm

引用

SKS Labs (2024). Single Objective Genetic Algorithm (https://www.mathworks.com/matlabcentral/fileexchange/65767-single-objective-genetic-algorithm), MATLAB Central File Exchange. 取得済み .

MATLAB リリースの互換性
作成: R2017b
すべてのリリースと互換性あり
プラットフォームの互換性
Windows macOS Linux
カテゴリ
Help Center および MATLAB AnswersGenetic Algorithm についてさらに検索
謝辞

ヒントを得たファイル: NSGA - II: A multi-objective optimization algorithm

ヒントを与えたファイル: Cascade Power Generation Cycle Optimization

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!
バージョン 公開済み リリース ノート
1.0.0.0