Sciweavers

EPS
1997
Springer

Tracking Extrema in Dynamic Environments

13 years 8 months ago
Tracking Extrema in Dynamic Environments
Typical applications of evolutionary optimization involve the off-line approximation of extrema of static multi-modal functions. Methods which use a variety of techniques to self-adapt mutation parameters have been shown to be more successful than methods which do not use self-adaptation. For dynamic functions, the interest is not to obtain the extrema but to follow it as closely as possible. This paper compares the on-line extrema tracking performance of an evolutionary program without self-adaptation against an evolutionary program using a self-adaptive Gaussian update rule over a number of dynamics applied to a simple static function. The experiments demonstrate that for some dynamic functions, self-adaptation is effective while for others it is detrimental.
Peter J. Angeline
Added 07 Aug 2010
Updated 07 Aug 2010
Type Conference
Year 1997
Where EPS
Authors Peter J. Angeline
Comments (0)