Academic Journals Database
Disseminating quality controlled scientific knowledge

Coevolution Evolutionary Algorithm: A Survey

ADD TO MY LIST
 
Author(s): Jeniefer Kavetha. M

Journal: International Journal of Advanced Research in Computer Science
ISSN 0976-5697

Volume: 04;
Issue: 04;
Start page: 324;
Date: 2013;
Original page

Keywords: Evolutionary | Computation | Evolutionary | Algorithm | Co-evolution | Computation | and | Co-evolutionary | Algorithm.

ABSTRACT
Evolutionary Computing techniques have become one of the most powerful tools for solving optimization problems and isbased on the mechanisms of natural selection and genetics. In Evolutionary Algorithm, Co-evolution is a natural choice for learning in problem domains where one agent’s behaviour is directly related to the behaviour of other agents. Co-evolution provides a framework to implement search heuristics that are more elaborate than those driving the exploration of the state space in canonical evolutionary systems. This paper presents the concept of Co-evolutionary learning and explains a search procedure which successfully addresses the underlying impediments in Co-evolutionary search. Co-evolution employs evolutionary algorithms to solve a high-dimensional search problem by decomposing it into lowdimensional subcomponents. The objective of this survey is to discuss about the various existing Co-evolutionary algorithm and their successful implementation in real world optimization problem. Hence the outcome of the study is to bring out the various research opportunities in implementing the concept of Co-evolution for many optimization problems in different application
Why do you need a reservation system?      Save time & money - Smart Internet Solutions