Evolutionary algorithms for solving multi-modal and multi-objective optimization problems
In artificial intelligence, evolutionary algorithms (EAs) have shown to be effective and robust in solving difficult optimization problems. EAs are generic population-based metaheuristic optimization algorithms. The mechanisms used in EAs are inspired by biological evolution: reproduction, mutation,...
主要作者: | Qu, Boyang |
---|---|
其他作者: | Ponnuthurai N. Suganthan |
格式: | Thesis |
语言: | English |
出版: |
2012
|
主题: | |
在线阅读: | https://hdl.handle.net/10356/50679 |
相似书籍
-
An ensemble approach to multi-objective evolutionary algorithm
由: Pratama, Januar Ananta Dinar
出版: (2019) -
Evolutionary algorithms for solving power system optimization problems
由: Biswas, Partha Pratim
出版: (2019) -
Data fusion of multi-modal cardivascular signals for clinical diagnosis
由: Wu, Fang Qian.
出版: (2008) -
Low-cost multi-UAVs system built on everyday objects
由: Dinh, Quang Hung
出版: (2014) -
Multi-objective learning control for robotic manipulator
由: Khin Kyu Kyu Win.
出版: (2008)