Development of scheduling strategies with Genetic Fuzzy systems
β Scribed by Carsten Franke; Frank Hoffmann; Joachim Lepping; Uwe Schwiegelshohn
- Publisher
- Elsevier Science
- Year
- 2008
- Tongue
- English
- Weight
- 725 KB
- Volume
- 8
- Category
- Article
- ISSN
- 1568-4946
No coin nor oath required. For personal study only.
π SIMILAR VOLUMES
This article suggests an evolutionary approach to designing interaction strategies for multiagent systems, focusing on strategies modeled as fuzzy rule-based systems. The aim is to learn models evolving database and rule bases to improve agent performance when playing in a competitive environment. I
Generalized switched server system, a discretely controlled continuous-time system, in which N tanks are used to represent N parallel entities, respectively, can be employed to address a class of load-balancing problems. A tank-pair model is a system that consists of two tanks and a single input sin
Genetic algorithms and evolution strategies are combined in order to build a multi-stage hybrid evolutionary algorithm for learning constrained approximate Mamdani-type knowledge bases from examples. The genetic algorithm niche concept is used in two of the three stages composing the learning proces
In this paper we consider the problem of generator maintenance scheduling (GMS) in power systems. A genetic algorithm with a fuzzy evaluation function is proposed in order to overcome some of the limitations of conventional modelling and solution methods. A test GMS problem is formulated with a rel