A Genetic Algorithm for Self-Optimization in Safety-Critical Resource-Flow Systems
Florian Siefert, Florian Nafz, Hella Seebach, Wolfgang Reif
Organic Computing tries to tackle the rising complexity of systems by
developing mechanisms and techniques that allow a system to self-organize
and possess life-like behavior. The introduction of self-x properties also
brings uncertainty and makes the systems unpredictable. Therefore, these
systems are hardly used in safety-critical domains and their acceptance is
low. If those systems should also profit from the benefits of self-x
properties, behavioral guarantees must be provided. In this paper, a
genetic algorithm for the self-optimization of resource-flow systems is
presented. Further its integration into an architecture which allows to
provide behavioral guarantees is shown.
erschienen 11.04.2011
in: Paris, France
IEEE Symposium Series in Computational Intelligence 2011 (SSCI 2011)
