Sciweavers

AIR
2005

Evolving Dynamic Multi-Objective Optimization Problems with Objective Replacement

13 years 11 months ago
Evolving Dynamic Multi-Objective Optimization Problems with Objective Replacement
This paper studies the strategies for multi-objective optimization in a dynamic environment. In particular, we focus on problems with objective replacement, where some objectives may be replaced with new objectives during evolution. It is shown that the Pareto-optimal sets before and after the objective replacement share some common members. Based on this observation, we suggest the inheritance strategy. When objective replacement occurs, this strategy selects good chromosomes according to the new objective set from the solutions found before objective replacement, and then continues to optimize them via evolution for the new objective set. The experiment results showed that this strategy can help MOGAs achieve better performance than MOGAs without using the inheritance strategy, where the evolution is restarted when objective replacement occurs. More solutions with better quality are found during the same time span.
Sheng Uei Guan, Qian Chen, Wenting Mo
Added 15 Dec 2010
Updated 15 Dec 2010
Type Journal
Year 2005
Where AIR
Authors Sheng Uei Guan, Qian Chen, Wenting Mo
Comments (0)