Optimisation of the weighting functions of an Hinf controller using genetic algorithms and structured genetic algorithm
Área de Investigación: | Articulos | Año: | 2008 | ||||
---|---|---|---|---|---|---|---|
Tipo de publicación: | Artículo | ||||||
Autores: | Alfaro-Cid, Eva; McGookin, E.W.; Murray-Smith, D.J. | ||||||
Revista: | International Journal of System Science | Volumen: | 34 | ||||
Número: | 9 | Páginas: | 335-347 | ||||
Abstract: | In this paper the optimisation of the weighting functions for an Hinf controller using genetic algorithms and structured genetic algorithms is considered. The choice of the weighting functions is one of the key steps in the design of an H controller. The performance of the controller depends on these weighting functions since poorly chosen weighting functions will provide a poor controller. One approach that can solve this problem is the use of evolutionary techniques to tune the weighting parameters. The paper presents the improved performance of structured genetic algorithms over conventional genetic algorithms and how this technique can assist with the identification of appropriate weighting functions’ orders. |
||||||